xref: /petsc/src/ts/interface/ts.c (revision c6f61ee217dbd23bd0792f1ef4cfacda5212558b)
1 #include <petsc/private/tsimpl.h> /*I "petscts.h"  I*/
2 #include <petscdmda.h>
3 #include <petscdmshell.h>
4 #include <petscdmplex.h>  // For TSSetFromOptions()
5 #include <petscdmswarm.h> // For TSSetFromOptions()
6 #include <petscviewer.h>
7 #include <petscdraw.h>
8 #include <petscconvest.h>
9 
10 /* Logging support */
11 PetscClassId  TS_CLASSID, DMTS_CLASSID;
12 PetscLogEvent TS_Step, TS_PseudoComputeTimeStep, TS_FunctionEval, TS_JacobianEval;
13 
14 const char *const TSExactFinalTimeOptions[] = {"UNSPECIFIED", "STEPOVER", "INTERPOLATE", "MATCHSTEP", "TSExactFinalTimeOption", "TS_EXACTFINALTIME_", NULL};
15 
16 static PetscErrorCode TSAdaptSetDefaultType(TSAdapt adapt, TSAdaptType default_type)
17 {
18   PetscFunctionBegin;
19   PetscValidHeaderSpecific(adapt, TSADAPT_CLASSID, 1);
20   PetscAssertPointer(default_type, 2);
21   if (!((PetscObject)adapt)->type_name) PetscCall(TSAdaptSetType(adapt, default_type));
22   PetscFunctionReturn(PETSC_SUCCESS);
23 }
24 
25 /*@
26   TSSetFromOptions - Sets various `TS` parameters from the options database
27 
28   Collective
29 
30   Input Parameter:
31 . ts - the `TS` context obtained from `TSCreate()`
32 
33   Options Database Keys:
34 + -ts_type <type>                                                    - EULER, BEULER, SUNDIALS, PSEUDO, CN, RK, THETA, ALPHA, GLLE,  SSP, GLEE, BSYMP, IRK, see `TSType`
35 . -ts_save_trajectory                                                - checkpoint the solution at each time-step
36 . -ts_max_time <time>                                                - maximum time to compute to
37 . -ts_time_span <t0,...tf>                                           - sets the time span, solutions are computed and stored for each indicated time
38 . -ts_max_steps <steps>                                              - maximum number of time-steps to take
39 . -ts_init_time <time>                                               - initial time to start computation
40 . -ts_final_time <time>                                              - final time to compute to (deprecated: use `-ts_max_time`)
41 . -ts_dt <dt>                                                        - initial time step
42 . -ts_exact_final_time <stepover,interpolate,matchstep>              - whether to stop at the exact given final time and how to compute the solution at that time
43 . -ts_max_snes_failures <maxfailures>                                - Maximum number of nonlinear solve failures allowed
44 . -ts_max_reject <maxrejects>                                        - Maximum number of step rejections before step fails
45 . -ts_error_if_step_fails <true,false>                               - Error if no step succeeds
46 . -ts_rtol <rtol>                                                    - relative tolerance for local truncation error
47 . -ts_atol <atol>                                                    - Absolute tolerance for local truncation error
48 . -ts_rhs_jacobian_test_mult -mat_shell_test_mult_view               - test the Jacobian at each iteration against finite difference with RHS function
49 . -ts_rhs_jacobian_test_mult_transpose                               - test the Jacobian at each iteration against finite difference with RHS function
50 . -ts_adjoint_solve <yes,no>                                         - After solving the ODE/DAE solve the adjoint problem (requires `-ts_save_trajectory`)
51 . -ts_fd_color                                                       - Use finite differences with coloring to compute IJacobian
52 . -ts_monitor                                                        - print information at each timestep
53 . -ts_monitor_cancel                                                 - Cancel all monitors
54 . -ts_monitor_lg_solution                                            - Monitor solution graphically
55 . -ts_monitor_lg_error                                               - Monitor error graphically
56 . -ts_monitor_error                                                  - Monitors norm of error
57 . -ts_monitor_lg_timestep                                            - Monitor timestep size graphically
58 . -ts_monitor_lg_timestep_log                                        - Monitor log timestep size graphically
59 . -ts_monitor_lg_snes_iterations                                     - Monitor number nonlinear iterations for each timestep graphically
60 . -ts_monitor_lg_ksp_iterations                                      - Monitor number nonlinear iterations for each timestep graphically
61 . -ts_monitor_sp_eig                                                 - Monitor eigenvalues of linearized operator graphically
62 . -ts_monitor_draw_solution                                          - Monitor solution graphically
63 . -ts_monitor_draw_solution_phase  <xleft,yleft,xright,yright>       - Monitor solution graphically with phase diagram, requires problem with exactly 2 degrees of freedom
64 . -ts_monitor_draw_error                                             - Monitor error graphically, requires use to have provided TSSetSolutionFunction()
65 . -ts_monitor_solution [ascii binary draw][:filename][:viewerformat] - monitors the solution at each timestep
66 . -ts_monitor_solution_interval <interval>                           - output once every interval (default=1) time steps
67 . -ts_monitor_solution_vtk <filename.vts,filename.vtu>               - Save each time step to a binary file, use filename-%%03" PetscInt_FMT ".vts (filename-%%03" PetscInt_FMT ".vtu)
68 - -ts_monitor_envelope                                               - determine maximum and minimum value of each component of the solution over the solution time
69 
70   Level: beginner
71 
72   Notes:
73   See `SNESSetFromOptions()` and `KSPSetFromOptions()` for how to control the nonlinear and linear solves used by the time-stepper.
74 
75   Certain `SNES` options get reset for each new nonlinear solver, for example `-snes_lag_jacobian its` and `-snes_lag_preconditioner its`, in order
76   to retain them over the multiple nonlinear solves that `TS` uses you mush also provide `-snes_lag_jacobian_persists true` and
77   `-snes_lag_preconditioner_persists true`
78 
79   Developer Notes:
80   We should unify all the -ts_monitor options in the way that -xxx_view has been unified
81 
82 .seealso: [](ch_ts), `TS`, `TSGetType()`
83 @*/
84 PetscErrorCode TSSetFromOptions(TS ts)
85 {
86   PetscBool              opt, flg, tflg;
87   char                   monfilename[PETSC_MAX_PATH_LEN];
88   PetscReal              time_step, tspan[100];
89   PetscInt               nt = PETSC_STATIC_ARRAY_LENGTH(tspan);
90   TSExactFinalTimeOption eftopt;
91   char                   dir[16];
92   TSIFunction            ifun;
93   const char            *defaultType;
94   char                   typeName[256];
95 
96   PetscFunctionBegin;
97   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
98 
99   PetscCall(TSRegisterAll());
100   PetscCall(TSGetIFunction(ts, NULL, &ifun, NULL));
101 
102   PetscObjectOptionsBegin((PetscObject)ts);
103   if (((PetscObject)ts)->type_name) defaultType = ((PetscObject)ts)->type_name;
104   else defaultType = ifun ? TSBEULER : TSEULER;
105   PetscCall(PetscOptionsFList("-ts_type", "TS method", "TSSetType", TSList, defaultType, typeName, 256, &opt));
106   if (opt) PetscCall(TSSetType(ts, typeName));
107   else PetscCall(TSSetType(ts, defaultType));
108 
109   /* Handle generic TS options */
110   PetscCall(PetscOptionsDeprecated("-ts_final_time", "-ts_max_time", "3.10", NULL));
111   PetscCall(PetscOptionsReal("-ts_max_time", "Maximum time to run to", "TSSetMaxTime", ts->max_time, &ts->max_time, NULL));
112   PetscCall(PetscOptionsRealArray("-ts_time_span", "Time span", "TSSetTimeSpan", tspan, &nt, &flg));
113   if (flg) PetscCall(TSSetTimeSpan(ts, nt, tspan));
114   PetscCall(PetscOptionsInt("-ts_max_steps", "Maximum number of time steps", "TSSetMaxSteps", ts->max_steps, &ts->max_steps, NULL));
115   PetscCall(PetscOptionsReal("-ts_init_time", "Initial time", "TSSetTime", ts->ptime, &ts->ptime, NULL));
116   PetscCall(PetscOptionsReal("-ts_dt", "Initial time step", "TSSetTimeStep", ts->time_step, &time_step, &flg));
117   if (flg) PetscCall(TSSetTimeStep(ts, time_step));
118   PetscCall(PetscOptionsEnum("-ts_exact_final_time", "Option for handling of final time step", "TSSetExactFinalTime", TSExactFinalTimeOptions, (PetscEnum)ts->exact_final_time, (PetscEnum *)&eftopt, &flg));
119   if (flg) PetscCall(TSSetExactFinalTime(ts, eftopt));
120   PetscCall(PetscOptionsInt("-ts_max_snes_failures", "Maximum number of nonlinear solve failures", "TSSetMaxSNESFailures", ts->max_snes_failures, &ts->max_snes_failures, NULL));
121   PetscCall(PetscOptionsInt("-ts_max_reject", "Maximum number of step rejections before step fails", "TSSetMaxStepRejections", ts->max_reject, &ts->max_reject, NULL));
122   PetscCall(PetscOptionsBool("-ts_error_if_step_fails", "Error if no step succeeds", "TSSetErrorIfStepFails", ts->errorifstepfailed, &ts->errorifstepfailed, NULL));
123   PetscCall(PetscOptionsReal("-ts_rtol", "Relative tolerance for local truncation error", "TSSetTolerances", ts->rtol, &ts->rtol, NULL));
124   PetscCall(PetscOptionsReal("-ts_atol", "Absolute tolerance for local truncation error", "TSSetTolerances", ts->atol, &ts->atol, NULL));
125 
126   PetscCall(PetscOptionsBool("-ts_rhs_jacobian_test_mult", "Test the RHS Jacobian for consistency with RHS at each solve ", "None", ts->testjacobian, &ts->testjacobian, NULL));
127   PetscCall(PetscOptionsBool("-ts_rhs_jacobian_test_mult_transpose", "Test the RHS Jacobian transpose for consistency with RHS at each solve ", "None", ts->testjacobiantranspose, &ts->testjacobiantranspose, NULL));
128   PetscCall(PetscOptionsBool("-ts_use_splitrhsfunction", "Use the split RHS function for multirate solvers ", "TSSetUseSplitRHSFunction", ts->use_splitrhsfunction, &ts->use_splitrhsfunction, NULL));
129 #if defined(PETSC_HAVE_SAWS)
130   {
131     PetscBool set;
132     flg = PETSC_FALSE;
133     PetscCall(PetscOptionsBool("-ts_saws_block", "Block for SAWs memory snooper at end of TSSolve", "PetscObjectSAWsBlock", ((PetscObject)ts)->amspublishblock, &flg, &set));
134     if (set) PetscCall(PetscObjectSAWsSetBlock((PetscObject)ts, flg));
135   }
136 #endif
137 
138   /* Monitor options */
139   PetscCall(PetscOptionsInt("-ts_monitor_frequency", "Number of time steps between monitor output", "TSMonitorSetFrequency", ts->monitorFrequency, &ts->monitorFrequency, NULL));
140   PetscCall(TSMonitorSetFromOptions(ts, "-ts_monitor", "Monitor time and timestep size", "TSMonitorDefault", TSMonitorDefault, NULL));
141   PetscCall(TSMonitorSetFromOptions(ts, "-ts_monitor_extreme", "Monitor extreme values of the solution", "TSMonitorExtreme", TSMonitorExtreme, NULL));
142   PetscCall(TSMonitorSetFromOptions(ts, "-ts_monitor_solution", "View the solution at each timestep", "TSMonitorSolution", TSMonitorSolution, NULL));
143   PetscCall(TSMonitorSetFromOptions(ts, "-ts_dmswarm_monitor_moments", "Monitor moments of particle distribution", "TSDMSwarmMonitorMoments", TSDMSwarmMonitorMoments, NULL));
144 
145   PetscCall(PetscOptionsString("-ts_monitor_python", "Use Python function", "TSMonitorSet", NULL, monfilename, sizeof(monfilename), &flg));
146   if (flg) PetscCall(PetscPythonMonitorSet((PetscObject)ts, monfilename));
147 
148   PetscCall(PetscOptionsName("-ts_monitor_lg_solution", "Monitor solution graphically", "TSMonitorLGSolution", &opt));
149   if (opt) {
150     PetscInt  howoften = 1;
151     DM        dm;
152     PetscBool net;
153 
154     PetscCall(PetscOptionsInt("-ts_monitor_lg_solution", "Monitor solution graphically", "TSMonitorLGSolution", howoften, &howoften, NULL));
155     PetscCall(TSGetDM(ts, &dm));
156     PetscCall(PetscObjectTypeCompare((PetscObject)dm, DMNETWORK, &net));
157     if (net) {
158       TSMonitorLGCtxNetwork ctx;
159       PetscCall(TSMonitorLGCtxNetworkCreate(ts, NULL, NULL, PETSC_DECIDE, PETSC_DECIDE, 600, 400, howoften, &ctx));
160       PetscCall(TSMonitorSet(ts, TSMonitorLGCtxNetworkSolution, ctx, (PetscErrorCode(*)(void **))TSMonitorLGCtxNetworkDestroy));
161       PetscCall(PetscOptionsBool("-ts_monitor_lg_solution_semilogy", "Plot the solution with a semi-log axis", "", ctx->semilogy, &ctx->semilogy, NULL));
162     } else {
163       TSMonitorLGCtx ctx;
164       PetscCall(TSMonitorLGCtxCreate(PETSC_COMM_SELF, NULL, NULL, PETSC_DECIDE, PETSC_DECIDE, 400, 300, howoften, &ctx));
165       PetscCall(TSMonitorSet(ts, TSMonitorLGSolution, ctx, (PetscErrorCode(*)(void **))TSMonitorLGCtxDestroy));
166     }
167   }
168 
169   PetscCall(PetscOptionsName("-ts_monitor_lg_error", "Monitor error graphically", "TSMonitorLGError", &opt));
170   if (opt) {
171     TSMonitorLGCtx ctx;
172     PetscInt       howoften = 1;
173 
174     PetscCall(PetscOptionsInt("-ts_monitor_lg_error", "Monitor error graphically", "TSMonitorLGError", howoften, &howoften, NULL));
175     PetscCall(TSMonitorLGCtxCreate(PETSC_COMM_SELF, NULL, NULL, PETSC_DECIDE, PETSC_DECIDE, 400, 300, howoften, &ctx));
176     PetscCall(TSMonitorSet(ts, TSMonitorLGError, ctx, (PetscErrorCode(*)(void **))TSMonitorLGCtxDestroy));
177   }
178   PetscCall(TSMonitorSetFromOptions(ts, "-ts_monitor_error", "View the error at each timestep", "TSMonitorError", TSMonitorError, NULL));
179 
180   PetscCall(PetscOptionsName("-ts_monitor_lg_timestep", "Monitor timestep size graphically", "TSMonitorLGTimeStep", &opt));
181   if (opt) {
182     TSMonitorLGCtx ctx;
183     PetscInt       howoften = 1;
184 
185     PetscCall(PetscOptionsInt("-ts_monitor_lg_timestep", "Monitor timestep size graphically", "TSMonitorLGTimeStep", howoften, &howoften, NULL));
186     PetscCall(TSMonitorLGCtxCreate(PetscObjectComm((PetscObject)ts), NULL, NULL, PETSC_DECIDE, PETSC_DECIDE, 400, 300, howoften, &ctx));
187     PetscCall(TSMonitorSet(ts, TSMonitorLGTimeStep, ctx, (PetscErrorCode(*)(void **))TSMonitorLGCtxDestroy));
188   }
189   PetscCall(PetscOptionsName("-ts_monitor_lg_timestep_log", "Monitor log timestep size graphically", "TSMonitorLGTimeStep", &opt));
190   if (opt) {
191     TSMonitorLGCtx ctx;
192     PetscInt       howoften = 1;
193 
194     PetscCall(PetscOptionsInt("-ts_monitor_lg_timestep_log", "Monitor log timestep size graphically", "TSMonitorLGTimeStep", howoften, &howoften, NULL));
195     PetscCall(TSMonitorLGCtxCreate(PetscObjectComm((PetscObject)ts), NULL, NULL, PETSC_DECIDE, PETSC_DECIDE, 400, 300, howoften, &ctx));
196     PetscCall(TSMonitorSet(ts, TSMonitorLGTimeStep, ctx, (PetscErrorCode(*)(void **))TSMonitorLGCtxDestroy));
197     ctx->semilogy = PETSC_TRUE;
198   }
199 
200   PetscCall(PetscOptionsName("-ts_monitor_lg_snes_iterations", "Monitor number nonlinear iterations for each timestep graphically", "TSMonitorLGSNESIterations", &opt));
201   if (opt) {
202     TSMonitorLGCtx ctx;
203     PetscInt       howoften = 1;
204 
205     PetscCall(PetscOptionsInt("-ts_monitor_lg_snes_iterations", "Monitor number nonlinear iterations for each timestep graphically", "TSMonitorLGSNESIterations", howoften, &howoften, NULL));
206     PetscCall(TSMonitorLGCtxCreate(PetscObjectComm((PetscObject)ts), NULL, NULL, PETSC_DECIDE, PETSC_DECIDE, 400, 300, howoften, &ctx));
207     PetscCall(TSMonitorSet(ts, TSMonitorLGSNESIterations, ctx, (PetscErrorCode(*)(void **))TSMonitorLGCtxDestroy));
208   }
209   PetscCall(PetscOptionsName("-ts_monitor_lg_ksp_iterations", "Monitor number nonlinear iterations for each timestep graphically", "TSMonitorLGKSPIterations", &opt));
210   if (opt) {
211     TSMonitorLGCtx ctx;
212     PetscInt       howoften = 1;
213 
214     PetscCall(PetscOptionsInt("-ts_monitor_lg_ksp_iterations", "Monitor number nonlinear iterations for each timestep graphically", "TSMonitorLGKSPIterations", howoften, &howoften, NULL));
215     PetscCall(TSMonitorLGCtxCreate(PetscObjectComm((PetscObject)ts), NULL, NULL, PETSC_DECIDE, PETSC_DECIDE, 400, 300, howoften, &ctx));
216     PetscCall(TSMonitorSet(ts, TSMonitorLGKSPIterations, ctx, (PetscErrorCode(*)(void **))TSMonitorLGCtxDestroy));
217   }
218   PetscCall(PetscOptionsName("-ts_monitor_sp_eig", "Monitor eigenvalues of linearized operator graphically", "TSMonitorSPEig", &opt));
219   if (opt) {
220     TSMonitorSPEigCtx ctx;
221     PetscInt          howoften = 1;
222 
223     PetscCall(PetscOptionsInt("-ts_monitor_sp_eig", "Monitor eigenvalues of linearized operator graphically", "TSMonitorSPEig", howoften, &howoften, NULL));
224     PetscCall(TSMonitorSPEigCtxCreate(PETSC_COMM_SELF, NULL, NULL, PETSC_DECIDE, PETSC_DECIDE, 300, 300, howoften, &ctx));
225     PetscCall(TSMonitorSet(ts, TSMonitorSPEig, ctx, (PetscErrorCode(*)(void **))TSMonitorSPEigCtxDestroy));
226   }
227   PetscCall(PetscOptionsName("-ts_monitor_sp_swarm", "Display particle phase space from the DMSwarm", "TSMonitorSPSwarm", &opt));
228   if (opt) {
229     TSMonitorSPCtx ctx;
230     PetscInt       howoften = 1, retain = 0;
231     PetscBool      phase = PETSC_TRUE, create = PETSC_TRUE, multispecies = PETSC_FALSE;
232 
233     for (PetscInt i = 0; i < ts->numbermonitors; ++i)
234       if (ts->monitor[i] == TSMonitorSPSwarmSolution) {
235         create = PETSC_FALSE;
236         break;
237       }
238     if (create) {
239       PetscCall(PetscOptionsInt("-ts_monitor_sp_swarm", "Display particles phase space from the DMSwarm", "TSMonitorSPSwarm", howoften, &howoften, NULL));
240       PetscCall(PetscOptionsInt("-ts_monitor_sp_swarm_retain", "Retain n points plotted to show trajectory, -1 for all points", "TSMonitorSPSwarm", retain, &retain, NULL));
241       PetscCall(PetscOptionsBool("-ts_monitor_sp_swarm_phase", "Plot in phase space rather than coordinate space", "TSMonitorSPSwarm", phase, &phase, NULL));
242       PetscCall(PetscOptionsBool("-ts_monitor_sp_swarm_multi_species", "Color particles by particle species", "TSMonitorSPSwarm", multispecies, &multispecies, NULL));
243       PetscCall(TSMonitorSPCtxCreate(PetscObjectComm((PetscObject)ts), NULL, NULL, PETSC_DECIDE, PETSC_DECIDE, 300, 300, howoften, retain, phase, multispecies, &ctx));
244       PetscCall(TSMonitorSet(ts, TSMonitorSPSwarmSolution, ctx, (PetscErrorCode(*)(void **))TSMonitorSPCtxDestroy));
245     }
246   }
247   PetscCall(PetscOptionsName("-ts_monitor_hg_swarm", "Display particle histogram from the DMSwarm", "TSMonitorHGSwarm", &opt));
248   if (opt) {
249     TSMonitorHGCtx ctx;
250     PetscInt       howoften = 1, Ns = 1;
251     PetscBool      velocity = PETSC_FALSE, create = PETSC_TRUE;
252 
253     for (PetscInt i = 0; i < ts->numbermonitors; ++i)
254       if (ts->monitor[i] == TSMonitorHGSwarmSolution) {
255         create = PETSC_FALSE;
256         break;
257       }
258     if (create) {
259       DM       sw, dm;
260       PetscInt Nc, Nb;
261 
262       PetscCall(TSGetDM(ts, &sw));
263       PetscCall(DMSwarmGetCellDM(sw, &dm));
264       PetscCall(DMPlexGetHeightStratum(dm, 0, NULL, &Nc));
265       Nb = PetscMin(20, PetscMax(10, Nc));
266       PetscCall(PetscOptionsInt("-ts_monitor_hg_swarm", "Display particles histogram from the DMSwarm", "TSMonitorHGSwarm", howoften, &howoften, NULL));
267       PetscCall(PetscOptionsBool("-ts_monitor_hg_swarm_velocity", "Plot in velocity space rather than coordinate space", "TSMonitorHGSwarm", velocity, &velocity, NULL));
268       PetscCall(PetscOptionsInt("-ts_monitor_hg_swarm_species", "Number of species to histogram", "TSMonitorHGSwarm", Ns, &Ns, NULL));
269       PetscCall(PetscOptionsInt("-ts_monitor_hg_swarm_bins", "Number of histogram bins", "TSMonitorHGSwarm", Nb, &Nb, NULL));
270       PetscCall(TSMonitorHGCtxCreate(PetscObjectComm((PetscObject)ts), NULL, NULL, PETSC_DECIDE, PETSC_DECIDE, 300, 300, howoften, Ns, Nb, velocity, &ctx));
271       PetscCall(TSMonitorSet(ts, TSMonitorHGSwarmSolution, ctx, (PetscErrorCode(*)(void **))TSMonitorHGCtxDestroy));
272     }
273   }
274   opt = PETSC_FALSE;
275   PetscCall(PetscOptionsName("-ts_monitor_draw_solution", "Monitor solution graphically", "TSMonitorDrawSolution", &opt));
276   if (opt) {
277     TSMonitorDrawCtx ctx;
278     PetscInt         howoften = 1;
279 
280     PetscCall(PetscOptionsInt("-ts_monitor_draw_solution", "Monitor solution graphically", "TSMonitorDrawSolution", howoften, &howoften, NULL));
281     PetscCall(TSMonitorDrawCtxCreate(PetscObjectComm((PetscObject)ts), NULL, "Computed Solution", PETSC_DECIDE, PETSC_DECIDE, 300, 300, howoften, &ctx));
282     PetscCall(TSMonitorSet(ts, TSMonitorDrawSolution, ctx, (PetscErrorCode(*)(void **))TSMonitorDrawCtxDestroy));
283   }
284   opt = PETSC_FALSE;
285   PetscCall(PetscOptionsName("-ts_monitor_draw_solution_phase", "Monitor solution graphically", "TSMonitorDrawSolutionPhase", &opt));
286   if (opt) {
287     TSMonitorDrawCtx ctx;
288     PetscReal        bounds[4];
289     PetscInt         n = 4;
290     PetscDraw        draw;
291     PetscDrawAxis    axis;
292 
293     PetscCall(PetscOptionsRealArray("-ts_monitor_draw_solution_phase", "Monitor solution graphically", "TSMonitorDrawSolutionPhase", bounds, &n, NULL));
294     PetscCheck(n == 4, PetscObjectComm((PetscObject)ts), PETSC_ERR_ARG_WRONG, "Must provide bounding box of phase field");
295     PetscCall(TSMonitorDrawCtxCreate(PetscObjectComm((PetscObject)ts), NULL, NULL, PETSC_DECIDE, PETSC_DECIDE, 300, 300, 1, &ctx));
296     PetscCall(PetscViewerDrawGetDraw(ctx->viewer, 0, &draw));
297     PetscCall(PetscViewerDrawGetDrawAxis(ctx->viewer, 0, &axis));
298     PetscCall(PetscDrawAxisSetLimits(axis, bounds[0], bounds[2], bounds[1], bounds[3]));
299     PetscCall(PetscDrawAxisSetLabels(axis, "Phase Diagram", "Variable 1", "Variable 2"));
300     PetscCall(TSMonitorSet(ts, TSMonitorDrawSolutionPhase, ctx, (PetscErrorCode(*)(void **))TSMonitorDrawCtxDestroy));
301   }
302   opt = PETSC_FALSE;
303   PetscCall(PetscOptionsName("-ts_monitor_draw_error", "Monitor error graphically", "TSMonitorDrawError", &opt));
304   if (opt) {
305     TSMonitorDrawCtx ctx;
306     PetscInt         howoften = 1;
307 
308     PetscCall(PetscOptionsInt("-ts_monitor_draw_error", "Monitor error graphically", "TSMonitorDrawError", howoften, &howoften, NULL));
309     PetscCall(TSMonitorDrawCtxCreate(PetscObjectComm((PetscObject)ts), NULL, "Error", PETSC_DECIDE, PETSC_DECIDE, 300, 300, howoften, &ctx));
310     PetscCall(TSMonitorSet(ts, TSMonitorDrawError, ctx, (PetscErrorCode(*)(void **))TSMonitorDrawCtxDestroy));
311   }
312   opt = PETSC_FALSE;
313   PetscCall(PetscOptionsName("-ts_monitor_draw_solution_function", "Monitor solution provided by TSMonitorSetSolutionFunction() graphically", "TSMonitorDrawSolutionFunction", &opt));
314   if (opt) {
315     TSMonitorDrawCtx ctx;
316     PetscInt         howoften = 1;
317 
318     PetscCall(PetscOptionsInt("-ts_monitor_draw_solution_function", "Monitor solution provided by TSMonitorSetSolutionFunction() graphically", "TSMonitorDrawSolutionFunction", howoften, &howoften, NULL));
319     PetscCall(TSMonitorDrawCtxCreate(PetscObjectComm((PetscObject)ts), NULL, "Solution provided by user function", PETSC_DECIDE, PETSC_DECIDE, 300, 300, howoften, &ctx));
320     PetscCall(TSMonitorSet(ts, TSMonitorDrawSolutionFunction, ctx, (PetscErrorCode(*)(void **))TSMonitorDrawCtxDestroy));
321   }
322 
323   opt = PETSC_FALSE;
324   PetscCall(PetscOptionsString("-ts_monitor_solution_vtk", "Save each time step to a binary file, use filename-%%03" PetscInt_FMT ".vts", "TSMonitorSolutionVTK", NULL, monfilename, sizeof(monfilename), &flg));
325   if (flg) {
326     const char *ptr = NULL, *ptr2 = NULL;
327     char       *filetemplate;
328     PetscCheck(monfilename[0], PetscObjectComm((PetscObject)ts), PETSC_ERR_USER, "-ts_monitor_solution_vtk requires a file template, e.g. filename-%%03" PetscInt_FMT ".vts");
329     /* Do some cursory validation of the input. */
330     PetscCall(PetscStrstr(monfilename, "%", (char **)&ptr));
331     PetscCheck(ptr, PetscObjectComm((PetscObject)ts), PETSC_ERR_USER, "-ts_monitor_solution_vtk requires a file template, e.g. filename-%%03" PetscInt_FMT ".vts");
332     for (ptr++; ptr && *ptr; ptr++) {
333       PetscCall(PetscStrchr("DdiouxX", *ptr, (char **)&ptr2));
334       PetscCheck(ptr2 || (*ptr >= '0' && *ptr <= '9'), PetscObjectComm((PetscObject)ts), PETSC_ERR_USER, "Invalid file template argument to -ts_monitor_solution_vtk, should look like filename-%%03" PetscInt_FMT ".vts");
335       if (ptr2) break;
336     }
337     PetscCall(PetscStrallocpy(monfilename, &filetemplate));
338     PetscCall(TSMonitorSet(ts, TSMonitorSolutionVTK, filetemplate, (PetscErrorCode(*)(void **))TSMonitorSolutionVTKDestroy));
339   }
340 
341   PetscCall(PetscOptionsString("-ts_monitor_dmda_ray", "Display a ray of the solution", "None", "y=0", dir, sizeof(dir), &flg));
342   if (flg) {
343     TSMonitorDMDARayCtx *rayctx;
344     int                  ray = 0;
345     DMDirection          ddir;
346     DM                   da;
347     PetscMPIInt          rank;
348 
349     PetscCheck(dir[1] == '=', PetscObjectComm((PetscObject)ts), PETSC_ERR_ARG_WRONG, "Unknown ray %s", dir);
350     if (dir[0] == 'x') ddir = DM_X;
351     else if (dir[0] == 'y') ddir = DM_Y;
352     else SETERRQ(PetscObjectComm((PetscObject)ts), PETSC_ERR_ARG_WRONG, "Unknown ray %s", dir);
353     sscanf(dir + 2, "%d", &ray);
354 
355     PetscCall(PetscInfo(((PetscObject)ts), "Displaying DMDA ray %c = %d\n", dir[0], ray));
356     PetscCall(PetscNew(&rayctx));
357     PetscCall(TSGetDM(ts, &da));
358     PetscCall(DMDAGetRay(da, ddir, ray, &rayctx->ray, &rayctx->scatter));
359     PetscCallMPI(MPI_Comm_rank(PetscObjectComm((PetscObject)ts), &rank));
360     if (rank == 0) PetscCall(PetscViewerDrawOpen(PETSC_COMM_SELF, NULL, NULL, 0, 0, 600, 300, &rayctx->viewer));
361     rayctx->lgctx = NULL;
362     PetscCall(TSMonitorSet(ts, TSMonitorDMDARay, rayctx, TSMonitorDMDARayDestroy));
363   }
364   PetscCall(PetscOptionsString("-ts_monitor_lg_dmda_ray", "Display a ray of the solution", "None", "x=0", dir, sizeof(dir), &flg));
365   if (flg) {
366     TSMonitorDMDARayCtx *rayctx;
367     int                  ray = 0;
368     DMDirection          ddir;
369     DM                   da;
370     PetscInt             howoften = 1;
371 
372     PetscCheck(dir[1] == '=', PetscObjectComm((PetscObject)ts), PETSC_ERR_ARG_WRONG, "Malformed ray %s", dir);
373     if (dir[0] == 'x') ddir = DM_X;
374     else if (dir[0] == 'y') ddir = DM_Y;
375     else SETERRQ(PetscObjectComm((PetscObject)ts), PETSC_ERR_ARG_WRONG, "Unknown ray direction %s", dir);
376     sscanf(dir + 2, "%d", &ray);
377 
378     PetscCall(PetscInfo(((PetscObject)ts), "Displaying LG DMDA ray %c = %d\n", dir[0], ray));
379     PetscCall(PetscNew(&rayctx));
380     PetscCall(TSGetDM(ts, &da));
381     PetscCall(DMDAGetRay(da, ddir, ray, &rayctx->ray, &rayctx->scatter));
382     PetscCall(TSMonitorLGCtxCreate(PETSC_COMM_SELF, NULL, NULL, PETSC_DECIDE, PETSC_DECIDE, 600, 400, howoften, &rayctx->lgctx));
383     PetscCall(TSMonitorSet(ts, TSMonitorLGDMDARay, rayctx, TSMonitorDMDARayDestroy));
384   }
385 
386   PetscCall(PetscOptionsName("-ts_monitor_envelope", "Monitor maximum and minimum value of each component of the solution", "TSMonitorEnvelope", &opt));
387   if (opt) {
388     TSMonitorEnvelopeCtx ctx;
389 
390     PetscCall(TSMonitorEnvelopeCtxCreate(ts, &ctx));
391     PetscCall(TSMonitorSet(ts, TSMonitorEnvelope, ctx, (PetscErrorCode(*)(void **))TSMonitorEnvelopeCtxDestroy));
392   }
393   flg = PETSC_FALSE;
394   PetscCall(PetscOptionsBool("-ts_monitor_cancel", "Remove all monitors", "TSMonitorCancel", flg, &flg, &opt));
395   if (opt && flg) PetscCall(TSMonitorCancel(ts));
396 
397   flg = PETSC_FALSE;
398   PetscCall(PetscOptionsBool("-ts_fd_color", "Use finite differences with coloring to compute IJacobian", "TSComputeIJacobianDefaultColor", flg, &flg, NULL));
399   if (flg) {
400     DM dm;
401 
402     PetscCall(TSGetDM(ts, &dm));
403     PetscCall(DMTSUnsetIJacobianContext_Internal(dm));
404     PetscCall(TSSetIJacobian(ts, NULL, NULL, TSComputeIJacobianDefaultColor, NULL));
405     PetscCall(PetscInfo(ts, "Setting default finite difference coloring Jacobian matrix\n"));
406   }
407 
408   /* Handle specific TS options */
409   PetscTryTypeMethod(ts, setfromoptions, PetscOptionsObject);
410 
411   /* Handle TSAdapt options */
412   PetscCall(TSGetAdapt(ts, &ts->adapt));
413   PetscCall(TSAdaptSetDefaultType(ts->adapt, ts->default_adapt_type));
414   PetscCall(TSAdaptSetFromOptions(ts->adapt, PetscOptionsObject));
415 
416   /* TS trajectory must be set after TS, since it may use some TS options above */
417   tflg = ts->trajectory ? PETSC_TRUE : PETSC_FALSE;
418   PetscCall(PetscOptionsBool("-ts_save_trajectory", "Save the solution at each timestep", "TSSetSaveTrajectory", tflg, &tflg, NULL));
419   if (tflg) PetscCall(TSSetSaveTrajectory(ts));
420 
421   PetscCall(TSAdjointSetFromOptions(ts, PetscOptionsObject));
422 
423   /* process any options handlers added with PetscObjectAddOptionsHandler() */
424   PetscCall(PetscObjectProcessOptionsHandlers((PetscObject)ts, PetscOptionsObject));
425   PetscOptionsEnd();
426 
427   if (ts->trajectory) PetscCall(TSTrajectorySetFromOptions(ts->trajectory, ts));
428 
429   /* why do we have to do this here and not during TSSetUp? */
430   PetscCall(TSGetSNES(ts, &ts->snes));
431   if (ts->problem_type == TS_LINEAR) {
432     PetscCall(PetscObjectTypeCompareAny((PetscObject)ts->snes, &flg, SNESKSPONLY, SNESKSPTRANSPOSEONLY, ""));
433     if (!flg) PetscCall(SNESSetType(ts->snes, SNESKSPONLY));
434   }
435   PetscCall(SNESSetFromOptions(ts->snes));
436   PetscFunctionReturn(PETSC_SUCCESS);
437 }
438 
439 /*@
440   TSGetTrajectory - Gets the trajectory from a `TS` if it exists
441 
442   Collective
443 
444   Input Parameter:
445 . ts - the `TS` context obtained from `TSCreate()`
446 
447   Output Parameter:
448 . tr - the `TSTrajectory` object, if it exists
449 
450   Level: advanced
451 
452   Note:
453   This routine should be called after all `TS` options have been set
454 
455 .seealso: [](ch_ts), `TS`, `TSTrajectory`, `TSAdjointSolve()`, `TSTrajectoryCreate()`
456 @*/
457 PetscErrorCode TSGetTrajectory(TS ts, TSTrajectory *tr)
458 {
459   PetscFunctionBegin;
460   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
461   *tr = ts->trajectory;
462   PetscFunctionReturn(PETSC_SUCCESS);
463 }
464 
465 /*@
466   TSSetSaveTrajectory - Causes the `TS` to save its solutions as it iterates forward in time in a `TSTrajectory` object
467 
468   Collective
469 
470   Input Parameter:
471 . ts - the `TS` context obtained from `TSCreate()`
472 
473   Options Database Keys:
474 + -ts_save_trajectory      - saves the trajectory to a file
475 - -ts_trajectory_type type - set trajectory type
476 
477   Level: intermediate
478 
479   Notes:
480   This routine should be called after all `TS` options have been set
481 
482   The `TSTRAJECTORYVISUALIZATION` files can be loaded into Python with $PETSC_DIR/lib/petsc/bin/PetscBinaryIOTrajectory.py and
483   MATLAB with $PETSC_DIR/share/petsc/matlab/PetscReadBinaryTrajectory.m
484 
485 .seealso: [](ch_ts), `TS`, `TSTrajectory`, `TSGetTrajectory()`, `TSAdjointSolve()`
486 @*/
487 PetscErrorCode TSSetSaveTrajectory(TS ts)
488 {
489   PetscFunctionBegin;
490   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
491   if (!ts->trajectory) PetscCall(TSTrajectoryCreate(PetscObjectComm((PetscObject)ts), &ts->trajectory));
492   PetscFunctionReturn(PETSC_SUCCESS);
493 }
494 
495 /*@
496   TSResetTrajectory - Destroys and recreates the internal `TSTrajectory` object
497 
498   Collective
499 
500   Input Parameter:
501 . ts - the `TS` context obtained from `TSCreate()`
502 
503   Level: intermediate
504 
505 .seealso: [](ch_ts), `TSTrajectory`, `TSGetTrajectory()`, `TSAdjointSolve()`, `TSRemoveTrajectory()`
506 @*/
507 PetscErrorCode TSResetTrajectory(TS ts)
508 {
509   PetscFunctionBegin;
510   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
511   if (ts->trajectory) {
512     PetscCall(TSTrajectoryDestroy(&ts->trajectory));
513     PetscCall(TSTrajectoryCreate(PetscObjectComm((PetscObject)ts), &ts->trajectory));
514   }
515   PetscFunctionReturn(PETSC_SUCCESS);
516 }
517 
518 /*@
519   TSRemoveTrajectory - Destroys and removes the internal `TSTrajectory` object from a `TS`
520 
521   Collective
522 
523   Input Parameter:
524 . ts - the `TS` context obtained from `TSCreate()`
525 
526   Level: intermediate
527 
528 .seealso: [](ch_ts), `TSTrajectory`, `TSResetTrajectory()`, `TSAdjointSolve()`
529 @*/
530 PetscErrorCode TSRemoveTrajectory(TS ts)
531 {
532   PetscFunctionBegin;
533   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
534   if (ts->trajectory) PetscCall(TSTrajectoryDestroy(&ts->trajectory));
535   PetscFunctionReturn(PETSC_SUCCESS);
536 }
537 
538 /*@
539   TSComputeRHSJacobian - Computes the Jacobian matrix that has been
540   set with `TSSetRHSJacobian()`.
541 
542   Collective
543 
544   Input Parameters:
545 + ts - the `TS` context
546 . t  - current timestep
547 - U  - input vector
548 
549   Output Parameters:
550 + A - Jacobian matrix
551 - B - optional preconditioning matrix
552 
553   Level: developer
554 
555   Note:
556   Most users should not need to explicitly call this routine, as it
557   is used internally within the nonlinear solvers.
558 
559 .seealso: [](ch_ts), `TS`, `TSSetRHSJacobian()`, `KSPSetOperators()`
560 @*/
561 PetscErrorCode TSComputeRHSJacobian(TS ts, PetscReal t, Vec U, Mat A, Mat B)
562 {
563   PetscObjectState Ustate;
564   PetscObjectId    Uid;
565   DM               dm;
566   DMTS             tsdm;
567   TSRHSJacobian    rhsjacobianfunc;
568   void            *ctx;
569   TSRHSFunction    rhsfunction;
570 
571   PetscFunctionBegin;
572   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
573   PetscValidHeaderSpecific(U, VEC_CLASSID, 3);
574   PetscCheckSameComm(ts, 1, U, 3);
575   PetscCall(TSGetDM(ts, &dm));
576   PetscCall(DMGetDMTS(dm, &tsdm));
577   PetscCall(DMTSGetRHSFunction(dm, &rhsfunction, NULL));
578   PetscCall(DMTSGetRHSJacobian(dm, &rhsjacobianfunc, &ctx));
579   PetscCall(PetscObjectStateGet((PetscObject)U, &Ustate));
580   PetscCall(PetscObjectGetId((PetscObject)U, &Uid));
581 
582   if (ts->rhsjacobian.time == t && (ts->problem_type == TS_LINEAR || (ts->rhsjacobian.Xid == Uid && ts->rhsjacobian.Xstate == Ustate)) && (rhsfunction != TSComputeRHSFunctionLinear)) PetscFunctionReturn(PETSC_SUCCESS);
583 
584   PetscCheck(ts->rhsjacobian.shift == 0.0 || !ts->rhsjacobian.reuse, PetscObjectComm((PetscObject)ts), PETSC_ERR_USER, "Should not call TSComputeRHSJacobian() on a shifted matrix (shift=%lf) when RHSJacobian is reusable.", (double)ts->rhsjacobian.shift);
585   if (rhsjacobianfunc) {
586     PetscCall(PetscLogEventBegin(TS_JacobianEval, ts, U, A, B));
587     PetscCallBack("TS callback Jacobian", (*rhsjacobianfunc)(ts, t, U, A, B, ctx));
588     ts->rhsjacs++;
589     PetscCall(PetscLogEventEnd(TS_JacobianEval, ts, U, A, B));
590   } else {
591     PetscCall(MatZeroEntries(A));
592     if (B && A != B) PetscCall(MatZeroEntries(B));
593   }
594   ts->rhsjacobian.time  = t;
595   ts->rhsjacobian.shift = 0;
596   ts->rhsjacobian.scale = 1.;
597   PetscCall(PetscObjectGetId((PetscObject)U, &ts->rhsjacobian.Xid));
598   PetscCall(PetscObjectStateGet((PetscObject)U, &ts->rhsjacobian.Xstate));
599   PetscFunctionReturn(PETSC_SUCCESS);
600 }
601 
602 /*@
603   TSComputeRHSFunction - Evaluates the right-hand-side function for a `TS`
604 
605   Collective
606 
607   Input Parameters:
608 + ts - the `TS` context
609 . t  - current time
610 - U  - state vector
611 
612   Output Parameter:
613 . y - right hand side
614 
615   Level: developer
616 
617   Note:
618   Most users should not need to explicitly call this routine, as it
619   is used internally within the nonlinear solvers.
620 
621 .seealso: [](ch_ts), `TS`, `TSSetRHSFunction()`, `TSComputeIFunction()`
622 @*/
623 PetscErrorCode TSComputeRHSFunction(TS ts, PetscReal t, Vec U, Vec y)
624 {
625   TSRHSFunction rhsfunction;
626   TSIFunction   ifunction;
627   void         *ctx;
628   DM            dm;
629 
630   PetscFunctionBegin;
631   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
632   PetscValidHeaderSpecific(U, VEC_CLASSID, 3);
633   PetscValidHeaderSpecific(y, VEC_CLASSID, 4);
634   PetscCall(TSGetDM(ts, &dm));
635   PetscCall(DMTSGetRHSFunction(dm, &rhsfunction, &ctx));
636   PetscCall(DMTSGetIFunction(dm, &ifunction, NULL));
637 
638   PetscCheck(rhsfunction || ifunction, PetscObjectComm((PetscObject)ts), PETSC_ERR_USER, "Must call TSSetRHSFunction() and / or TSSetIFunction()");
639 
640   if (rhsfunction) {
641     PetscCall(PetscLogEventBegin(TS_FunctionEval, ts, U, y, 0));
642     PetscCall(VecLockReadPush(U));
643     PetscCallBack("TS callback right-hand-side", (*rhsfunction)(ts, t, U, y, ctx));
644     PetscCall(VecLockReadPop(U));
645     ts->rhsfuncs++;
646     PetscCall(PetscLogEventEnd(TS_FunctionEval, ts, U, y, 0));
647   } else PetscCall(VecZeroEntries(y));
648   PetscFunctionReturn(PETSC_SUCCESS);
649 }
650 
651 /*@
652   TSComputeSolutionFunction - Evaluates the solution function.
653 
654   Collective
655 
656   Input Parameters:
657 + ts - the `TS` context
658 - t  - current time
659 
660   Output Parameter:
661 . U - the solution
662 
663   Level: developer
664 
665 .seealso: [](ch_ts), `TS`, `TSSetSolutionFunction()`, `TSSetRHSFunction()`, `TSComputeIFunction()`
666 @*/
667 PetscErrorCode TSComputeSolutionFunction(TS ts, PetscReal t, Vec U)
668 {
669   TSSolutionFunction solutionfunction;
670   void              *ctx;
671   DM                 dm;
672 
673   PetscFunctionBegin;
674   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
675   PetscValidHeaderSpecific(U, VEC_CLASSID, 3);
676   PetscCall(TSGetDM(ts, &dm));
677   PetscCall(DMTSGetSolutionFunction(dm, &solutionfunction, &ctx));
678   if (solutionfunction) PetscCallBack("TS callback solution", (*solutionfunction)(ts, t, U, ctx));
679   PetscFunctionReturn(PETSC_SUCCESS);
680 }
681 /*@
682   TSComputeForcingFunction - Evaluates the forcing function.
683 
684   Collective
685 
686   Input Parameters:
687 + ts - the `TS` context
688 - t  - current time
689 
690   Output Parameter:
691 . U - the function value
692 
693   Level: developer
694 
695 .seealso: [](ch_ts), `TS`, `TSSetSolutionFunction()`, `TSSetRHSFunction()`, `TSComputeIFunction()`
696 @*/
697 PetscErrorCode TSComputeForcingFunction(TS ts, PetscReal t, Vec U)
698 {
699   void             *ctx;
700   DM                dm;
701   TSForcingFunction forcing;
702 
703   PetscFunctionBegin;
704   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
705   PetscValidHeaderSpecific(U, VEC_CLASSID, 3);
706   PetscCall(TSGetDM(ts, &dm));
707   PetscCall(DMTSGetForcingFunction(dm, &forcing, &ctx));
708 
709   if (forcing) PetscCallBack("TS callback forcing function", (*forcing)(ts, t, U, ctx));
710   PetscFunctionReturn(PETSC_SUCCESS);
711 }
712 
713 static PetscErrorCode TSGetRHSVec_Private(TS ts, Vec *Frhs)
714 {
715   Vec F;
716 
717   PetscFunctionBegin;
718   *Frhs = NULL;
719   PetscCall(TSGetIFunction(ts, &F, NULL, NULL));
720   if (!ts->Frhs) PetscCall(VecDuplicate(F, &ts->Frhs));
721   *Frhs = ts->Frhs;
722   PetscFunctionReturn(PETSC_SUCCESS);
723 }
724 
725 PetscErrorCode TSGetRHSMats_Private(TS ts, Mat *Arhs, Mat *Brhs)
726 {
727   Mat         A, B;
728   TSIJacobian ijacobian;
729 
730   PetscFunctionBegin;
731   if (Arhs) *Arhs = NULL;
732   if (Brhs) *Brhs = NULL;
733   PetscCall(TSGetIJacobian(ts, &A, &B, &ijacobian, NULL));
734   if (Arhs) {
735     if (!ts->Arhs) {
736       if (ijacobian) {
737         PetscCall(MatDuplicate(A, MAT_DO_NOT_COPY_VALUES, &ts->Arhs));
738         PetscCall(TSSetMatStructure(ts, SAME_NONZERO_PATTERN));
739       } else {
740         ts->Arhs = A;
741         PetscCall(PetscObjectReference((PetscObject)A));
742       }
743     } else {
744       PetscBool flg;
745       PetscCall(SNESGetUseMatrixFree(ts->snes, NULL, &flg));
746       /* Handle case where user provided only RHSJacobian and used -snes_mf_operator */
747       if (flg && !ijacobian && ts->Arhs == ts->Brhs) {
748         PetscCall(PetscObjectDereference((PetscObject)ts->Arhs));
749         ts->Arhs = A;
750         PetscCall(PetscObjectReference((PetscObject)A));
751       }
752     }
753     *Arhs = ts->Arhs;
754   }
755   if (Brhs) {
756     if (!ts->Brhs) {
757       if (A != B) {
758         if (ijacobian) {
759           PetscCall(MatDuplicate(B, MAT_DO_NOT_COPY_VALUES, &ts->Brhs));
760         } else {
761           ts->Brhs = B;
762           PetscCall(PetscObjectReference((PetscObject)B));
763         }
764       } else {
765         PetscCall(PetscObjectReference((PetscObject)ts->Arhs));
766         ts->Brhs = ts->Arhs;
767       }
768     }
769     *Brhs = ts->Brhs;
770   }
771   PetscFunctionReturn(PETSC_SUCCESS);
772 }
773 
774 /*@
775   TSComputeIFunction - Evaluates the DAE residual written in the implicit form F(t,U,Udot)=0
776 
777   Collective
778 
779   Input Parameters:
780 + ts   - the `TS` context
781 . t    - current time
782 . U    - state vector
783 . Udot - time derivative of state vector
784 - imex - flag indicates if the method is `TSIMEX` so that the RHSFunction should be kept separate
785 
786   Output Parameter:
787 . Y - right hand side
788 
789   Level: developer
790 
791   Note:
792   Most users should not need to explicitly call this routine, as it
793   is used internally within the nonlinear solvers.
794 
795   If the user did did not write their equations in implicit form, this
796   function recasts them in implicit form.
797 
798 .seealso: [](ch_ts), `TS`, `TSSetIFunction()`, `TSComputeRHSFunction()`
799 @*/
800 PetscErrorCode TSComputeIFunction(TS ts, PetscReal t, Vec U, Vec Udot, Vec Y, PetscBool imex)
801 {
802   TSIFunction   ifunction;
803   TSRHSFunction rhsfunction;
804   void         *ctx;
805   DM            dm;
806 
807   PetscFunctionBegin;
808   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
809   PetscValidHeaderSpecific(U, VEC_CLASSID, 3);
810   PetscValidHeaderSpecific(Udot, VEC_CLASSID, 4);
811   PetscValidHeaderSpecific(Y, VEC_CLASSID, 5);
812 
813   PetscCall(TSGetDM(ts, &dm));
814   PetscCall(DMTSGetIFunction(dm, &ifunction, &ctx));
815   PetscCall(DMTSGetRHSFunction(dm, &rhsfunction, NULL));
816 
817   PetscCheck(rhsfunction || ifunction, PetscObjectComm((PetscObject)ts), PETSC_ERR_USER, "Must call TSSetRHSFunction() and / or TSSetIFunction()");
818 
819   PetscCall(PetscLogEventBegin(TS_FunctionEval, ts, U, Udot, Y));
820   if (ifunction) {
821     PetscCallBack("TS callback implicit function", (*ifunction)(ts, t, U, Udot, Y, ctx));
822     ts->ifuncs++;
823   }
824   if (imex) {
825     if (!ifunction) PetscCall(VecCopy(Udot, Y));
826   } else if (rhsfunction) {
827     if (ifunction) {
828       Vec Frhs;
829       PetscCall(TSGetRHSVec_Private(ts, &Frhs));
830       PetscCall(TSComputeRHSFunction(ts, t, U, Frhs));
831       PetscCall(VecAXPY(Y, -1, Frhs));
832     } else {
833       PetscCall(TSComputeRHSFunction(ts, t, U, Y));
834       PetscCall(VecAYPX(Y, -1, Udot));
835     }
836   }
837   PetscCall(PetscLogEventEnd(TS_FunctionEval, ts, U, Udot, Y));
838   PetscFunctionReturn(PETSC_SUCCESS);
839 }
840 
841 /*
842    TSRecoverRHSJacobian - Recover the Jacobian matrix so that one can call `TSComputeRHSJacobian()` on it.
843 
844    Note:
845    This routine is needed when one switches from `TSComputeIJacobian()` to `TSComputeRHSJacobian()` because the Jacobian matrix may be shifted or scaled in `TSComputeIJacobian()`.
846 
847 */
848 static PetscErrorCode TSRecoverRHSJacobian(TS ts, Mat A, Mat B)
849 {
850   PetscFunctionBegin;
851   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
852   PetscCheck(A == ts->Arhs, PetscObjectComm((PetscObject)ts), PETSC_ERR_SUP, "Invalid Amat");
853   PetscCheck(B == ts->Brhs, PetscObjectComm((PetscObject)ts), PETSC_ERR_SUP, "Invalid Bmat");
854 
855   if (ts->rhsjacobian.shift) PetscCall(MatShift(A, -ts->rhsjacobian.shift));
856   if (ts->rhsjacobian.scale == -1.) PetscCall(MatScale(A, -1));
857   if (B && B == ts->Brhs && A != B) {
858     if (ts->rhsjacobian.shift) PetscCall(MatShift(B, -ts->rhsjacobian.shift));
859     if (ts->rhsjacobian.scale == -1.) PetscCall(MatScale(B, -1));
860   }
861   ts->rhsjacobian.shift = 0;
862   ts->rhsjacobian.scale = 1.;
863   PetscFunctionReturn(PETSC_SUCCESS);
864 }
865 
866 /*@
867   TSComputeIJacobian - Evaluates the Jacobian of the DAE
868 
869   Collective
870 
871   Input Parameters:
872 + ts    - the `TS` context
873 . t     - current timestep
874 . U     - state vector
875 . Udot  - time derivative of state vector
876 . shift - shift to apply, see note below
877 - imex  - flag indicates if the method is `TSIMEX` so that the RHSJacobian should be kept separate
878 
879   Output Parameters:
880 + A - Jacobian matrix
881 - B - matrix from which the preconditioner is constructed; often the same as `A`
882 
883   Level: developer
884 
885   Notes:
886   If F(t,U,Udot)=0 is the DAE, the required Jacobian is
887 .vb
888    dF/dU + shift*dF/dUdot
889 .ve
890   Most users should not need to explicitly call this routine, as it
891   is used internally within the nonlinear solvers.
892 
893 .seealso: [](ch_ts), `TS`, `TSSetIJacobian()`
894 @*/
895 PetscErrorCode TSComputeIJacobian(TS ts, PetscReal t, Vec U, Vec Udot, PetscReal shift, Mat A, Mat B, PetscBool imex)
896 {
897   TSIJacobian   ijacobian;
898   TSRHSJacobian rhsjacobian;
899   DM            dm;
900   void         *ctx;
901 
902   PetscFunctionBegin;
903   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
904   PetscValidHeaderSpecific(U, VEC_CLASSID, 3);
905   PetscValidHeaderSpecific(Udot, VEC_CLASSID, 4);
906   PetscValidHeaderSpecific(A, MAT_CLASSID, 6);
907   PetscValidHeaderSpecific(B, MAT_CLASSID, 7);
908 
909   PetscCall(TSGetDM(ts, &dm));
910   PetscCall(DMTSGetIJacobian(dm, &ijacobian, &ctx));
911   PetscCall(DMTSGetRHSJacobian(dm, &rhsjacobian, NULL));
912 
913   PetscCheck(rhsjacobian || ijacobian, PetscObjectComm((PetscObject)ts), PETSC_ERR_USER, "Must call TSSetRHSJacobian() and / or TSSetIJacobian()");
914 
915   PetscCall(PetscLogEventBegin(TS_JacobianEval, ts, U, A, B));
916   if (ijacobian) {
917     PetscCallBack("TS callback implicit Jacobian", (*ijacobian)(ts, t, U, Udot, shift, A, B, ctx));
918     ts->ijacs++;
919   }
920   if (imex) {
921     if (!ijacobian) { /* system was written as Udot = G(t,U) */
922       PetscBool assembled;
923       if (rhsjacobian) {
924         Mat Arhs = NULL;
925         PetscCall(TSGetRHSMats_Private(ts, &Arhs, NULL));
926         if (A == Arhs) {
927           PetscCheck(rhsjacobian != TSComputeRHSJacobianConstant, PetscObjectComm((PetscObject)ts), PETSC_ERR_SUP, "Unsupported operation! cannot use TSComputeRHSJacobianConstant"); /* there is no way to reconstruct shift*M-J since J cannot be reevaluated */
928           ts->rhsjacobian.time = PETSC_MIN_REAL;
929         }
930       }
931       PetscCall(MatZeroEntries(A));
932       PetscCall(MatAssembled(A, &assembled));
933       if (!assembled) {
934         PetscCall(MatAssemblyBegin(A, MAT_FINAL_ASSEMBLY));
935         PetscCall(MatAssemblyEnd(A, MAT_FINAL_ASSEMBLY));
936       }
937       PetscCall(MatShift(A, shift));
938       if (A != B) {
939         PetscCall(MatZeroEntries(B));
940         PetscCall(MatAssembled(B, &assembled));
941         if (!assembled) {
942           PetscCall(MatAssemblyBegin(B, MAT_FINAL_ASSEMBLY));
943           PetscCall(MatAssemblyEnd(B, MAT_FINAL_ASSEMBLY));
944         }
945         PetscCall(MatShift(B, shift));
946       }
947     }
948   } else {
949     Mat Arhs = NULL, Brhs = NULL;
950 
951     /* RHSJacobian needs to be converted to part of IJacobian if exists */
952     if (rhsjacobian) PetscCall(TSGetRHSMats_Private(ts, &Arhs, &Brhs));
953     if (Arhs == A) { /* No IJacobian matrix, so we only have the RHS matrix */
954       PetscObjectState Ustate;
955       PetscObjectId    Uid;
956       TSRHSFunction    rhsfunction;
957 
958       PetscCall(DMTSGetRHSFunction(dm, &rhsfunction, NULL));
959       PetscCall(PetscObjectStateGet((PetscObject)U, &Ustate));
960       PetscCall(PetscObjectGetId((PetscObject)U, &Uid));
961       if ((rhsjacobian == TSComputeRHSJacobianConstant || (ts->rhsjacobian.time == t && (ts->problem_type == TS_LINEAR || (ts->rhsjacobian.Xid == Uid && ts->rhsjacobian.Xstate == Ustate)) && rhsfunction != TSComputeRHSFunctionLinear)) &&
962           ts->rhsjacobian.scale == -1.) {                      /* No need to recompute RHSJacobian */
963         PetscCall(MatShift(A, shift - ts->rhsjacobian.shift)); /* revert the old shift and add the new shift with a single call to MatShift */
964         if (A != B) PetscCall(MatShift(B, shift - ts->rhsjacobian.shift));
965       } else {
966         PetscBool flg;
967 
968         if (ts->rhsjacobian.reuse) { /* Undo the damage */
969           /* MatScale has a short path for this case.
970              However, this code path is taken the first time TSComputeRHSJacobian is called
971              and the matrices have not been assembled yet */
972           PetscCall(TSRecoverRHSJacobian(ts, A, B));
973         }
974         PetscCall(TSComputeRHSJacobian(ts, t, U, A, B));
975         PetscCall(SNESGetUseMatrixFree(ts->snes, NULL, &flg));
976         /* since -snes_mf_operator uses the full SNES function it does not need to be shifted or scaled here */
977         if (!flg) {
978           PetscCall(MatScale(A, -1));
979           PetscCall(MatShift(A, shift));
980         }
981         if (A != B) {
982           PetscCall(MatScale(B, -1));
983           PetscCall(MatShift(B, shift));
984         }
985       }
986       ts->rhsjacobian.scale = -1;
987       ts->rhsjacobian.shift = shift;
988     } else if (Arhs) {  /* Both IJacobian and RHSJacobian */
989       if (!ijacobian) { /* No IJacobian provided, but we have a separate RHS matrix */
990         PetscCall(MatZeroEntries(A));
991         PetscCall(MatShift(A, shift));
992         if (A != B) {
993           PetscCall(MatZeroEntries(B));
994           PetscCall(MatShift(B, shift));
995         }
996       }
997       PetscCall(TSComputeRHSJacobian(ts, t, U, Arhs, Brhs));
998       PetscCall(MatAXPY(A, -1, Arhs, ts->axpy_pattern));
999       if (A != B) PetscCall(MatAXPY(B, -1, Brhs, ts->axpy_pattern));
1000     }
1001   }
1002   PetscCall(PetscLogEventEnd(TS_JacobianEval, ts, U, A, B));
1003   PetscFunctionReturn(PETSC_SUCCESS);
1004 }
1005 
1006 /*@C
1007   TSSetRHSFunction - Sets the routine for evaluating the function,
1008   where U_t = G(t,u).
1009 
1010   Logically Collective
1011 
1012   Input Parameters:
1013 + ts  - the `TS` context obtained from `TSCreate()`
1014 . r   - vector to put the computed right hand side (or `NULL` to have it created)
1015 . f   - routine for evaluating the right-hand-side function
1016 - ctx - [optional] user-defined context for private data for the function evaluation routine (may be `NULL`)
1017 
1018   Level: beginner
1019 
1020   Note:
1021   You must call this function or `TSSetIFunction()` to define your ODE. You cannot use this function when solving a DAE.
1022 
1023 .seealso: [](ch_ts), `TS`, `TSRHSFunction`, `TSSetRHSJacobian()`, `TSSetIJacobian()`, `TSSetIFunction()`
1024 @*/
1025 PetscErrorCode TSSetRHSFunction(TS ts, Vec r, TSRHSFunction f, void *ctx)
1026 {
1027   SNES snes;
1028   Vec  ralloc = NULL;
1029   DM   dm;
1030 
1031   PetscFunctionBegin;
1032   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
1033   if (r) PetscValidHeaderSpecific(r, VEC_CLASSID, 2);
1034 
1035   PetscCall(TSGetDM(ts, &dm));
1036   PetscCall(DMTSSetRHSFunction(dm, f, ctx));
1037   PetscCall(TSGetSNES(ts, &snes));
1038   if (!r && !ts->dm && ts->vec_sol) {
1039     PetscCall(VecDuplicate(ts->vec_sol, &ralloc));
1040     r = ralloc;
1041   }
1042   PetscCall(SNESSetFunction(snes, r, SNESTSFormFunction, ts));
1043   PetscCall(VecDestroy(&ralloc));
1044   PetscFunctionReturn(PETSC_SUCCESS);
1045 }
1046 
1047 /*@C
1048   TSSetSolutionFunction - Provide a function that computes the solution of the ODE or DAE
1049 
1050   Logically Collective
1051 
1052   Input Parameters:
1053 + ts  - the `TS` context obtained from `TSCreate()`
1054 . f   - routine for evaluating the solution
1055 - ctx - [optional] user-defined context for private data for the
1056           function evaluation routine (may be `NULL`)
1057 
1058   Options Database Keys:
1059 + -ts_monitor_lg_error   - create a graphical monitor of error history, requires user to have provided `TSSetSolutionFunction()`
1060 - -ts_monitor_draw_error - Monitor error graphically, requires user to have provided `TSSetSolutionFunction()`
1061 
1062   Level: intermediate
1063 
1064   Notes:
1065   This routine is used for testing accuracy of time integration schemes when you already know the solution.
1066   If analytic solutions are not known for your system, consider using the Method of Manufactured Solutions to
1067   create closed-form solutions with non-physical forcing terms.
1068 
1069   For low-dimensional problems solved in serial, such as small discrete systems, `TSMonitorLGError()` can be used to monitor the error history.
1070 
1071 .seealso: [](ch_ts), `TS`, `TSSolutionFunction`, `TSSetRHSJacobian()`, `TSSetIJacobian()`, `TSComputeSolutionFunction()`, `TSSetForcingFunction()`, `TSSetSolution()`, `TSGetSolution()`, `TSMonitorLGError()`, `TSMonitorDrawError()`
1072 @*/
1073 PetscErrorCode TSSetSolutionFunction(TS ts, TSSolutionFunction f, void *ctx)
1074 {
1075   DM dm;
1076 
1077   PetscFunctionBegin;
1078   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
1079   PetscCall(TSGetDM(ts, &dm));
1080   PetscCall(DMTSSetSolutionFunction(dm, f, ctx));
1081   PetscFunctionReturn(PETSC_SUCCESS);
1082 }
1083 
1084 /*@C
1085   TSSetForcingFunction - Provide a function that computes a forcing term for a ODE or PDE
1086 
1087   Logically Collective
1088 
1089   Input Parameters:
1090 + ts   - the `TS` context obtained from `TSCreate()`
1091 . func - routine for evaluating the forcing function
1092 - ctx  - [optional] user-defined context for private data for the function evaluation routine
1093          (may be `NULL`)
1094 
1095   Level: intermediate
1096 
1097   Notes:
1098   This routine is useful for testing accuracy of time integration schemes when using the Method of Manufactured Solutions to
1099   create closed-form solutions with a non-physical forcing term. It allows you to use the Method of Manufactored Solution without directly editing the
1100   definition of the problem you are solving and hence possibly introducing bugs.
1101 
1102   This replaces the ODE F(u,u_t,t) = 0 the `TS` is solving with F(u,u_t,t) - func(t) = 0
1103 
1104   This forcing function does not depend on the solution to the equations, it can only depend on spatial location, time, and possibly parameters, the
1105   parameters can be passed in the ctx variable.
1106 
1107   For low-dimensional problems solved in serial, such as small discrete systems, `TSMonitorLGError()` can be used to monitor the error history.
1108 
1109 .seealso: [](ch_ts), `TS`, `TSForcingFunction`, `TSSetRHSJacobian()`, `TSSetIJacobian()`,
1110 `TSComputeSolutionFunction()`, `TSSetSolutionFunction()`
1111 @*/
1112 PetscErrorCode TSSetForcingFunction(TS ts, TSForcingFunction func, void *ctx)
1113 {
1114   DM dm;
1115 
1116   PetscFunctionBegin;
1117   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
1118   PetscCall(TSGetDM(ts, &dm));
1119   PetscCall(DMTSSetForcingFunction(dm, func, ctx));
1120   PetscFunctionReturn(PETSC_SUCCESS);
1121 }
1122 
1123 /*@C
1124   TSSetRHSJacobian - Sets the function to compute the Jacobian of G,
1125   where U_t = G(U,t), as well as the location to store the matrix.
1126 
1127   Logically Collective
1128 
1129   Input Parameters:
1130 + ts   - the `TS` context obtained from `TSCreate()`
1131 . Amat - (approximate) location to store Jacobian matrix entries computed by `f`
1132 . Pmat - matrix from which preconditioner is to be constructed (usually the same as `Amat`)
1133 . f    - the Jacobian evaluation routine
1134 - ctx  - [optional] user-defined context for private data for the Jacobian evaluation routine (may be `NULL`)
1135 
1136   Level: beginner
1137 
1138   Notes:
1139   You must set all the diagonal entries of the matrices, if they are zero you must still set them with a zero value
1140 
1141   The `TS` solver may modify the nonzero structure and the entries of the matrices `Amat` and `Pmat` between the calls to `f()`
1142   You should not assume the values are the same in the next call to f() as you set them in the previous call.
1143 
1144 .seealso: [](ch_ts), `TS`, `TSRHSJacobian`, `SNESComputeJacobianDefaultColor()`,
1145 `TSSetRHSFunction()`, `TSRHSJacobianSetReuse()`, `TSSetIJacobian()`, `TSRHSFunction()`, `TSIFunction()`
1146 @*/
1147 PetscErrorCode TSSetRHSJacobian(TS ts, Mat Amat, Mat Pmat, TSRHSJacobian f, void *ctx)
1148 {
1149   SNES        snes;
1150   DM          dm;
1151   TSIJacobian ijacobian;
1152 
1153   PetscFunctionBegin;
1154   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
1155   if (Amat) PetscValidHeaderSpecific(Amat, MAT_CLASSID, 2);
1156   if (Pmat) PetscValidHeaderSpecific(Pmat, MAT_CLASSID, 3);
1157   if (Amat) PetscCheckSameComm(ts, 1, Amat, 2);
1158   if (Pmat) PetscCheckSameComm(ts, 1, Pmat, 3);
1159 
1160   PetscCall(TSGetDM(ts, &dm));
1161   PetscCall(DMTSSetRHSJacobian(dm, f, ctx));
1162   PetscCall(DMTSGetIJacobian(dm, &ijacobian, NULL));
1163   PetscCall(TSGetSNES(ts, &snes));
1164   if (!ijacobian) PetscCall(SNESSetJacobian(snes, Amat, Pmat, SNESTSFormJacobian, ts));
1165   if (Amat) {
1166     PetscCall(PetscObjectReference((PetscObject)Amat));
1167     PetscCall(MatDestroy(&ts->Arhs));
1168     ts->Arhs = Amat;
1169   }
1170   if (Pmat) {
1171     PetscCall(PetscObjectReference((PetscObject)Pmat));
1172     PetscCall(MatDestroy(&ts->Brhs));
1173     ts->Brhs = Pmat;
1174   }
1175   PetscFunctionReturn(PETSC_SUCCESS);
1176 }
1177 
1178 /*@C
1179   TSSetIFunction - Set the function to compute F(t,U,U_t) where F() = 0 is the DAE to be solved.
1180 
1181   Logically Collective
1182 
1183   Input Parameters:
1184 + ts  - the `TS` context obtained from `TSCreate()`
1185 . r   - vector to hold the residual (or `NULL` to have it created internally)
1186 . f   - the function evaluation routine
1187 - ctx - user-defined context for private data for the function evaluation routine (may be `NULL`)
1188 
1189   Level: beginner
1190 
1191   Note:
1192   The user MUST call either this routine or `TSSetRHSFunction()` to define the ODE.  When solving DAEs you must use this function.
1193 
1194 .seealso: [](ch_ts), `TS`, `TSIFunction`, `TSSetRHSJacobian()`, `TSSetRHSFunction()`,
1195 `TSSetIJacobian()`
1196 @*/
1197 PetscErrorCode TSSetIFunction(TS ts, Vec r, TSIFunction f, void *ctx)
1198 {
1199   SNES snes;
1200   Vec  ralloc = NULL;
1201   DM   dm;
1202 
1203   PetscFunctionBegin;
1204   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
1205   if (r) PetscValidHeaderSpecific(r, VEC_CLASSID, 2);
1206 
1207   PetscCall(TSGetDM(ts, &dm));
1208   PetscCall(DMTSSetIFunction(dm, f, ctx));
1209 
1210   PetscCall(TSGetSNES(ts, &snes));
1211   if (!r && !ts->dm && ts->vec_sol) {
1212     PetscCall(VecDuplicate(ts->vec_sol, &ralloc));
1213     r = ralloc;
1214   }
1215   PetscCall(SNESSetFunction(snes, r, SNESTSFormFunction, ts));
1216   PetscCall(VecDestroy(&ralloc));
1217   PetscFunctionReturn(PETSC_SUCCESS);
1218 }
1219 
1220 /*@C
1221   TSGetIFunction - Returns the vector where the implicit residual is stored and the function/context to compute it.
1222 
1223   Not Collective
1224 
1225   Input Parameter:
1226 . ts - the `TS` context
1227 
1228   Output Parameters:
1229 + r    - vector to hold residual (or `NULL`)
1230 . func - the function to compute residual (or `NULL`)
1231 - ctx  - the function context (or `NULL`)
1232 
1233   Level: advanced
1234 
1235 .seealso: [](ch_ts), `TS`, `TSSetIFunction()`, `SNESGetFunction()`
1236 @*/
1237 PetscErrorCode TSGetIFunction(TS ts, Vec *r, TSIFunction *func, void **ctx)
1238 {
1239   SNES snes;
1240   DM   dm;
1241 
1242   PetscFunctionBegin;
1243   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
1244   PetscCall(TSGetSNES(ts, &snes));
1245   PetscCall(SNESGetFunction(snes, r, NULL, NULL));
1246   PetscCall(TSGetDM(ts, &dm));
1247   PetscCall(DMTSGetIFunction(dm, func, ctx));
1248   PetscFunctionReturn(PETSC_SUCCESS);
1249 }
1250 
1251 /*@C
1252   TSGetRHSFunction - Returns the vector where the right hand side is stored and the function/context to compute it.
1253 
1254   Not Collective
1255 
1256   Input Parameter:
1257 . ts - the `TS` context
1258 
1259   Output Parameters:
1260 + r    - vector to hold computed right hand side (or `NULL`)
1261 . func - the function to compute right hand side (or `NULL`)
1262 - ctx  - the function context (or `NULL`)
1263 
1264   Level: advanced
1265 
1266 .seealso: [](ch_ts), `TS`, `TSSetRHSFunction()`, `SNESGetFunction()`
1267 @*/
1268 PetscErrorCode TSGetRHSFunction(TS ts, Vec *r, TSRHSFunction *func, void **ctx)
1269 {
1270   SNES snes;
1271   DM   dm;
1272 
1273   PetscFunctionBegin;
1274   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
1275   PetscCall(TSGetSNES(ts, &snes));
1276   PetscCall(SNESGetFunction(snes, r, NULL, NULL));
1277   PetscCall(TSGetDM(ts, &dm));
1278   PetscCall(DMTSGetRHSFunction(dm, func, ctx));
1279   PetscFunctionReturn(PETSC_SUCCESS);
1280 }
1281 
1282 /*@C
1283   TSSetIJacobian - Set the function to compute the matrix dF/dU + a*dF/dU_t where F(t,U,U_t) is the function
1284   provided with `TSSetIFunction()`.
1285 
1286   Logically Collective
1287 
1288   Input Parameters:
1289 + ts   - the `TS` context obtained from `TSCreate()`
1290 . Amat - (approximate) matrix to store Jacobian entries computed by `f`
1291 . Pmat - matrix used to compute preconditioner (usually the same as `Amat`)
1292 . f    - the Jacobian evaluation routine
1293 - ctx  - user-defined context for private data for the Jacobian evaluation routine (may be `NULL`)
1294 
1295   Level: beginner
1296 
1297   Notes:
1298   The matrices `Amat` and `Pmat` are exactly the matrices that are used by `SNES` for the nonlinear solve.
1299 
1300   If you know the operator Amat has a null space you can use `MatSetNullSpace()` and `MatSetTransposeNullSpace()` to supply the null
1301   space to `Amat` and the `KSP` solvers will automatically use that null space as needed during the solution process.
1302 
1303   The matrix dF/dU + a*dF/dU_t you provide turns out to be
1304   the Jacobian of F(t,U,W+a*U) where F(t,U,U_t) = 0 is the DAE to be solved.
1305   The time integrator internally approximates U_t by W+a*U where the positive "shift"
1306   a and vector W depend on the integration method, step size, and past states. For example with
1307   the backward Euler method a = 1/dt and W = -a*U(previous timestep) so
1308   W + a*U = a*(U - U(previous timestep)) = (U - U(previous timestep))/dt
1309 
1310   You must set all the diagonal entries of the matrices, if they are zero you must still set them with a zero value
1311 
1312   The TS solver may modify the nonzero structure and the entries of the matrices `Amat` and `Pmat` between the calls to `f`
1313   You should not assume the values are the same in the next call to `f` as you set them in the previous call.
1314 
1315 .seealso: [](ch_ts), `TS`, `TSIJacobian`, `TSSetIFunction()`, `TSSetRHSJacobian()`,
1316 `SNESComputeJacobianDefaultColor()`, `SNESComputeJacobianDefault()`, `TSSetRHSFunction()`
1317 @*/
1318 PetscErrorCode TSSetIJacobian(TS ts, Mat Amat, Mat Pmat, TSIJacobian f, void *ctx)
1319 {
1320   SNES snes;
1321   DM   dm;
1322 
1323   PetscFunctionBegin;
1324   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
1325   if (Amat) PetscValidHeaderSpecific(Amat, MAT_CLASSID, 2);
1326   if (Pmat) PetscValidHeaderSpecific(Pmat, MAT_CLASSID, 3);
1327   if (Amat) PetscCheckSameComm(ts, 1, Amat, 2);
1328   if (Pmat) PetscCheckSameComm(ts, 1, Pmat, 3);
1329 
1330   PetscCall(TSGetDM(ts, &dm));
1331   PetscCall(DMTSSetIJacobian(dm, f, ctx));
1332 
1333   PetscCall(TSGetSNES(ts, &snes));
1334   PetscCall(SNESSetJacobian(snes, Amat, Pmat, SNESTSFormJacobian, ts));
1335   PetscFunctionReturn(PETSC_SUCCESS);
1336 }
1337 
1338 /*@
1339   TSRHSJacobianSetReuse - restore the RHS Jacobian before calling the user-provided `TSRHSJacobian()` function again
1340 
1341   Logically Collective
1342 
1343   Input Parameters:
1344 + ts    - `TS` context obtained from `TSCreate()`
1345 - reuse - `PETSC_TRUE` if the RHS Jacobian
1346 
1347   Level: intermediate
1348 
1349   Notes:
1350   Without this flag, `TS` will change the sign and shift the RHS Jacobian for a
1351   finite-time-step implicit solve, in which case the user function will need to recompute the
1352   entire Jacobian.  The `reuse `flag must be set if the evaluation function assumes that the
1353   matrix entries have not been changed by the `TS`.
1354 
1355 .seealso: [](ch_ts), `TS`, `TSSetRHSJacobian()`, `TSComputeRHSJacobianConstant()`
1356 @*/
1357 PetscErrorCode TSRHSJacobianSetReuse(TS ts, PetscBool reuse)
1358 {
1359   PetscFunctionBegin;
1360   ts->rhsjacobian.reuse = reuse;
1361   PetscFunctionReturn(PETSC_SUCCESS);
1362 }
1363 
1364 /*@C
1365   TSSetI2Function - Set the function to compute F(t,U,U_t,U_tt) where F = 0 is the DAE to be solved.
1366 
1367   Logically Collective
1368 
1369   Input Parameters:
1370 + ts  - the `TS` context obtained from `TSCreate()`
1371 . F   - vector to hold the residual (or `NULL` to have it created internally)
1372 . fun - the function evaluation routine
1373 - ctx - user-defined context for private data for the function evaluation routine (may be `NULL`)
1374 
1375   Level: beginner
1376 
1377 .seealso: [](ch_ts), `TS`, `TSI2Function`, `TSSetI2Jacobian()`, `TSSetIFunction()`,
1378 `TSCreate()`, `TSSetRHSFunction()`
1379 @*/
1380 PetscErrorCode TSSetI2Function(TS ts, Vec F, TSI2Function fun, void *ctx)
1381 {
1382   DM dm;
1383 
1384   PetscFunctionBegin;
1385   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
1386   if (F) PetscValidHeaderSpecific(F, VEC_CLASSID, 2);
1387   PetscCall(TSSetIFunction(ts, F, NULL, NULL));
1388   PetscCall(TSGetDM(ts, &dm));
1389   PetscCall(DMTSSetI2Function(dm, fun, ctx));
1390   PetscFunctionReturn(PETSC_SUCCESS);
1391 }
1392 
1393 /*@C
1394   TSGetI2Function - Returns the vector where the implicit residual is stored and the function/context to compute it.
1395 
1396   Not Collective
1397 
1398   Input Parameter:
1399 . ts - the `TS` context
1400 
1401   Output Parameters:
1402 + r   - vector to hold residual (or `NULL`)
1403 . fun - the function to compute residual (or `NULL`)
1404 - ctx - the function context (or `NULL`)
1405 
1406   Level: advanced
1407 
1408 .seealso: [](ch_ts), `TS`, `TSSetIFunction()`, `SNESGetFunction()`, `TSCreate()`
1409 @*/
1410 PetscErrorCode TSGetI2Function(TS ts, Vec *r, TSI2Function *fun, void **ctx)
1411 {
1412   SNES snes;
1413   DM   dm;
1414 
1415   PetscFunctionBegin;
1416   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
1417   PetscCall(TSGetSNES(ts, &snes));
1418   PetscCall(SNESGetFunction(snes, r, NULL, NULL));
1419   PetscCall(TSGetDM(ts, &dm));
1420   PetscCall(DMTSGetI2Function(dm, fun, ctx));
1421   PetscFunctionReturn(PETSC_SUCCESS);
1422 }
1423 
1424 /*@C
1425   TSSetI2Jacobian - Set the function to compute the matrix dF/dU + v*dF/dU_t  + a*dF/dU_tt
1426   where F(t,U,U_t,U_tt) is the function you provided with `TSSetI2Function()`.
1427 
1428   Logically Collective
1429 
1430   Input Parameters:
1431 + ts  - the `TS` context obtained from `TSCreate()`
1432 . J   - matrix to hold the Jacobian values
1433 . P   - matrix for constructing the preconditioner (may be same as `J`)
1434 . jac - the Jacobian evaluation routine
1435 - ctx - user-defined context for private data for the Jacobian evaluation routine (may be `NULL`)
1436 
1437   Level: beginner
1438 
1439   Notes:
1440   The matrices `J` and `P` are exactly the matrices that are used by `SNES` for the nonlinear solve.
1441 
1442   The matrix dF/dU + v*dF/dU_t + a*dF/dU_tt you provide turns out to be
1443   the Jacobian of G(U) = F(t,U,W+v*U,W'+a*U) where F(t,U,U_t,U_tt) = 0 is the DAE to be solved.
1444   The time integrator internally approximates U_t by W+v*U and U_tt by W'+a*U  where the positive "shift"
1445   parameters 'v' and 'a' and vectors W, W' depend on the integration method, step size, and past states.
1446 
1447 .seealso: [](ch_ts), `TS`, `TSI2Jacobian`, `TSSetI2Function()`, `TSGetI2Jacobian()`
1448 @*/
1449 PetscErrorCode TSSetI2Jacobian(TS ts, Mat J, Mat P, TSI2Jacobian jac, void *ctx)
1450 {
1451   DM dm;
1452 
1453   PetscFunctionBegin;
1454   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
1455   if (J) PetscValidHeaderSpecific(J, MAT_CLASSID, 2);
1456   if (P) PetscValidHeaderSpecific(P, MAT_CLASSID, 3);
1457   PetscCall(TSSetIJacobian(ts, J, P, NULL, NULL));
1458   PetscCall(TSGetDM(ts, &dm));
1459   PetscCall(DMTSSetI2Jacobian(dm, jac, ctx));
1460   PetscFunctionReturn(PETSC_SUCCESS);
1461 }
1462 
1463 /*@C
1464   TSGetI2Jacobian - Returns the implicit Jacobian at the present timestep.
1465 
1466   Not Collective, but parallel objects are returned if `TS` is parallel
1467 
1468   Input Parameter:
1469 . ts - The `TS` context obtained from `TSCreate()`
1470 
1471   Output Parameters:
1472 + J   - The (approximate) Jacobian of F(t,U,U_t,U_tt)
1473 . P   - The matrix from which the preconditioner is constructed, often the same as `J`
1474 . jac - The function to compute the Jacobian matrices
1475 - ctx - User-defined context for Jacobian evaluation routine
1476 
1477   Level: advanced
1478 
1479   Note:
1480   You can pass in `NULL` for any return argument you do not need.
1481 
1482 .seealso: [](ch_ts), `TS`, `TSGetTimeStep()`, `TSGetMatrices()`, `TSGetTime()`, `TSGetStepNumber()`, `TSSetI2Jacobian()`, `TSGetI2Function()`, `TSCreate()`
1483 @*/
1484 PetscErrorCode TSGetI2Jacobian(TS ts, Mat *J, Mat *P, TSI2Jacobian *jac, void **ctx)
1485 {
1486   SNES snes;
1487   DM   dm;
1488 
1489   PetscFunctionBegin;
1490   PetscCall(TSGetSNES(ts, &snes));
1491   PetscCall(SNESSetUpMatrices(snes));
1492   PetscCall(SNESGetJacobian(snes, J, P, NULL, NULL));
1493   PetscCall(TSGetDM(ts, &dm));
1494   PetscCall(DMTSGetI2Jacobian(dm, jac, ctx));
1495   PetscFunctionReturn(PETSC_SUCCESS);
1496 }
1497 
1498 /*@
1499   TSComputeI2Function - Evaluates the DAE residual written in implicit form F(t,U,U_t,U_tt) = 0
1500 
1501   Collective
1502 
1503   Input Parameters:
1504 + ts - the `TS` context
1505 . t  - current time
1506 . U  - state vector
1507 . V  - time derivative of state vector (U_t)
1508 - A  - second time derivative of state vector (U_tt)
1509 
1510   Output Parameter:
1511 . F - the residual vector
1512 
1513   Level: developer
1514 
1515   Note:
1516   Most users should not need to explicitly call this routine, as it
1517   is used internally within the nonlinear solvers.
1518 
1519 .seealso: [](ch_ts), `TS`, `TSSetI2Function()`, `TSGetI2Function()`
1520 @*/
1521 PetscErrorCode TSComputeI2Function(TS ts, PetscReal t, Vec U, Vec V, Vec A, Vec F)
1522 {
1523   DM            dm;
1524   TSI2Function  I2Function;
1525   void         *ctx;
1526   TSRHSFunction rhsfunction;
1527 
1528   PetscFunctionBegin;
1529   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
1530   PetscValidHeaderSpecific(U, VEC_CLASSID, 3);
1531   PetscValidHeaderSpecific(V, VEC_CLASSID, 4);
1532   PetscValidHeaderSpecific(A, VEC_CLASSID, 5);
1533   PetscValidHeaderSpecific(F, VEC_CLASSID, 6);
1534 
1535   PetscCall(TSGetDM(ts, &dm));
1536   PetscCall(DMTSGetI2Function(dm, &I2Function, &ctx));
1537   PetscCall(DMTSGetRHSFunction(dm, &rhsfunction, NULL));
1538 
1539   if (!I2Function) {
1540     PetscCall(TSComputeIFunction(ts, t, U, A, F, PETSC_FALSE));
1541     PetscFunctionReturn(PETSC_SUCCESS);
1542   }
1543 
1544   PetscCall(PetscLogEventBegin(TS_FunctionEval, ts, U, V, F));
1545 
1546   PetscCallBack("TS callback implicit function", I2Function(ts, t, U, V, A, F, ctx));
1547 
1548   if (rhsfunction) {
1549     Vec Frhs;
1550     PetscCall(TSGetRHSVec_Private(ts, &Frhs));
1551     PetscCall(TSComputeRHSFunction(ts, t, U, Frhs));
1552     PetscCall(VecAXPY(F, -1, Frhs));
1553   }
1554 
1555   PetscCall(PetscLogEventEnd(TS_FunctionEval, ts, U, V, F));
1556   PetscFunctionReturn(PETSC_SUCCESS);
1557 }
1558 
1559 /*@
1560   TSComputeI2Jacobian - Evaluates the Jacobian of the DAE
1561 
1562   Collective
1563 
1564   Input Parameters:
1565 + ts     - the `TS` context
1566 . t      - current timestep
1567 . U      - state vector
1568 . V      - time derivative of state vector
1569 . A      - second time derivative of state vector
1570 . shiftV - shift to apply, see note below
1571 - shiftA - shift to apply, see note below
1572 
1573   Output Parameters:
1574 + J - Jacobian matrix
1575 - P - optional preconditioning matrix
1576 
1577   Level: developer
1578 
1579   Notes:
1580   If F(t,U,V,A)=0 is the DAE, the required Jacobian is
1581 
1582   dF/dU + shiftV*dF/dV + shiftA*dF/dA
1583 
1584   Most users should not need to explicitly call this routine, as it
1585   is used internally within the nonlinear solvers.
1586 
1587 .seealso: [](ch_ts), `TS`, `TSSetI2Jacobian()`
1588 @*/
1589 PetscErrorCode TSComputeI2Jacobian(TS ts, PetscReal t, Vec U, Vec V, Vec A, PetscReal shiftV, PetscReal shiftA, Mat J, Mat P)
1590 {
1591   DM            dm;
1592   TSI2Jacobian  I2Jacobian;
1593   void         *ctx;
1594   TSRHSJacobian rhsjacobian;
1595 
1596   PetscFunctionBegin;
1597   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
1598   PetscValidHeaderSpecific(U, VEC_CLASSID, 3);
1599   PetscValidHeaderSpecific(V, VEC_CLASSID, 4);
1600   PetscValidHeaderSpecific(A, VEC_CLASSID, 5);
1601   PetscValidHeaderSpecific(J, MAT_CLASSID, 8);
1602   PetscValidHeaderSpecific(P, MAT_CLASSID, 9);
1603 
1604   PetscCall(TSGetDM(ts, &dm));
1605   PetscCall(DMTSGetI2Jacobian(dm, &I2Jacobian, &ctx));
1606   PetscCall(DMTSGetRHSJacobian(dm, &rhsjacobian, NULL));
1607 
1608   if (!I2Jacobian) {
1609     PetscCall(TSComputeIJacobian(ts, t, U, A, shiftA, J, P, PETSC_FALSE));
1610     PetscFunctionReturn(PETSC_SUCCESS);
1611   }
1612 
1613   PetscCall(PetscLogEventBegin(TS_JacobianEval, ts, U, J, P));
1614   PetscCallBack("TS callback implicit Jacobian", I2Jacobian(ts, t, U, V, A, shiftV, shiftA, J, P, ctx));
1615   if (rhsjacobian) {
1616     Mat Jrhs, Prhs;
1617     PetscCall(TSGetRHSMats_Private(ts, &Jrhs, &Prhs));
1618     PetscCall(TSComputeRHSJacobian(ts, t, U, Jrhs, Prhs));
1619     PetscCall(MatAXPY(J, -1, Jrhs, ts->axpy_pattern));
1620     if (P != J) PetscCall(MatAXPY(P, -1, Prhs, ts->axpy_pattern));
1621   }
1622 
1623   PetscCall(PetscLogEventEnd(TS_JacobianEval, ts, U, J, P));
1624   PetscFunctionReturn(PETSC_SUCCESS);
1625 }
1626 
1627 /*@C
1628   TSSetTransientVariable - sets function to transform from state to transient variables
1629 
1630   Logically Collective
1631 
1632   Input Parameters:
1633 + ts   - time stepping context on which to change the transient variable
1634 . tvar - a function that transforms to transient variables
1635 - ctx  - a context for tvar
1636 
1637   Level: advanced
1638 
1639   Notes:
1640   This is typically used to transform from primitive to conservative variables so that a time integrator (e.g., `TSBDF`)
1641   can be conservative.  In this context, primitive variables P are used to model the state (e.g., because they lead to
1642   well-conditioned formulations even in limiting cases such as low-Mach or zero porosity).  The transient variable is
1643   C(P), specified by calling this function.  An IFunction thus receives arguments (P, Cdot) and the IJacobian must be
1644   evaluated via the chain rule, as in
1645 .vb
1646      dF/dP + shift * dF/dCdot dC/dP.
1647 .ve
1648 
1649 .seealso: [](ch_ts), `TS`, `TSBDF`, `TSTransientVariable`, `DMTSSetTransientVariable()`, `DMTSGetTransientVariable()`, `TSSetIFunction()`, `TSSetIJacobian()`
1650 @*/
1651 PetscErrorCode TSSetTransientVariable(TS ts, TSTransientVariable tvar, void *ctx)
1652 {
1653   DM dm;
1654 
1655   PetscFunctionBegin;
1656   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
1657   PetscCall(TSGetDM(ts, &dm));
1658   PetscCall(DMTSSetTransientVariable(dm, tvar, ctx));
1659   PetscFunctionReturn(PETSC_SUCCESS);
1660 }
1661 
1662 /*@
1663   TSComputeTransientVariable - transforms state (primitive) variables to transient (conservative) variables
1664 
1665   Logically Collective
1666 
1667   Input Parameters:
1668 + ts - TS on which to compute
1669 - U  - state vector to be transformed to transient variables
1670 
1671   Output Parameter:
1672 . C - transient (conservative) variable
1673 
1674   Level: developer
1675 
1676   Developer Notes:
1677   If `DMTSSetTransientVariable()` has not been called, then C is not modified in this routine and C = `NULL` is allowed.
1678   This makes it safe to call without a guard.  One can use `TSHasTransientVariable()` to check if transient variables are
1679   being used.
1680 
1681 .seealso: [](ch_ts), `TS`, `TSBDF`, `DMTSSetTransientVariable()`, `TSComputeIFunction()`, `TSComputeIJacobian()`
1682 @*/
1683 PetscErrorCode TSComputeTransientVariable(TS ts, Vec U, Vec C)
1684 {
1685   DM   dm;
1686   DMTS dmts;
1687 
1688   PetscFunctionBegin;
1689   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
1690   PetscValidHeaderSpecific(U, VEC_CLASSID, 2);
1691   PetscCall(TSGetDM(ts, &dm));
1692   PetscCall(DMGetDMTS(dm, &dmts));
1693   if (dmts->ops->transientvar) {
1694     PetscValidHeaderSpecific(C, VEC_CLASSID, 3);
1695     PetscCall((*dmts->ops->transientvar)(ts, U, C, dmts->transientvarctx));
1696   }
1697   PetscFunctionReturn(PETSC_SUCCESS);
1698 }
1699 
1700 /*@
1701   TSHasTransientVariable - determine whether transient variables have been set
1702 
1703   Logically Collective
1704 
1705   Input Parameter:
1706 . ts - `TS` on which to compute
1707 
1708   Output Parameter:
1709 . has - `PETSC_TRUE` if transient variables have been set
1710 
1711   Level: developer
1712 
1713 .seealso: [](ch_ts), `TS`, `TSBDF`, `DMTSSetTransientVariable()`, `TSComputeTransientVariable()`
1714 @*/
1715 PetscErrorCode TSHasTransientVariable(TS ts, PetscBool *has)
1716 {
1717   DM   dm;
1718   DMTS dmts;
1719 
1720   PetscFunctionBegin;
1721   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
1722   PetscCall(TSGetDM(ts, &dm));
1723   PetscCall(DMGetDMTS(dm, &dmts));
1724   *has = dmts->ops->transientvar ? PETSC_TRUE : PETSC_FALSE;
1725   PetscFunctionReturn(PETSC_SUCCESS);
1726 }
1727 
1728 /*@
1729   TS2SetSolution - Sets the initial solution and time derivative vectors
1730   for use by the `TS` routines handling second order equations.
1731 
1732   Logically Collective
1733 
1734   Input Parameters:
1735 + ts - the `TS` context obtained from `TSCreate()`
1736 . u  - the solution vector
1737 - v  - the time derivative vector
1738 
1739   Level: beginner
1740 
1741 .seealso: [](ch_ts), `TS`
1742 @*/
1743 PetscErrorCode TS2SetSolution(TS ts, Vec u, Vec v)
1744 {
1745   PetscFunctionBegin;
1746   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
1747   PetscValidHeaderSpecific(u, VEC_CLASSID, 2);
1748   PetscValidHeaderSpecific(v, VEC_CLASSID, 3);
1749   PetscCall(TSSetSolution(ts, u));
1750   PetscCall(PetscObjectReference((PetscObject)v));
1751   PetscCall(VecDestroy(&ts->vec_dot));
1752   ts->vec_dot = v;
1753   PetscFunctionReturn(PETSC_SUCCESS);
1754 }
1755 
1756 /*@
1757   TS2GetSolution - Returns the solution and time derivative at the present timestep
1758   for second order equations.
1759 
1760   Not Collective
1761 
1762   Input Parameter:
1763 . ts - the `TS` context obtained from `TSCreate()`
1764 
1765   Output Parameters:
1766 + u - the vector containing the solution
1767 - v - the vector containing the time derivative
1768 
1769   Level: intermediate
1770 
1771   Notes:
1772   It is valid to call this routine inside the function
1773   that you are evaluating in order to move to the new timestep. This vector not
1774   changed until the solution at the next timestep has been calculated.
1775 
1776 .seealso: [](ch_ts), `TS`, `TS2SetSolution()`, `TSGetTimeStep()`, `TSGetTime()`
1777 @*/
1778 PetscErrorCode TS2GetSolution(TS ts, Vec *u, Vec *v)
1779 {
1780   PetscFunctionBegin;
1781   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
1782   if (u) PetscAssertPointer(u, 2);
1783   if (v) PetscAssertPointer(v, 3);
1784   if (u) *u = ts->vec_sol;
1785   if (v) *v = ts->vec_dot;
1786   PetscFunctionReturn(PETSC_SUCCESS);
1787 }
1788 
1789 /*@C
1790   TSLoad - Loads a `TS` that has been stored in binary  with `TSView()`.
1791 
1792   Collective
1793 
1794   Input Parameters:
1795 + ts     - the newly loaded `TS`, this needs to have been created with `TSCreate()` or
1796            some related function before a call to `TSLoad()`.
1797 - viewer - binary file viewer, obtained from `PetscViewerBinaryOpen()`
1798 
1799   Level: intermediate
1800 
1801   Note:
1802   The type is determined by the data in the file, any type set into the `TS` before this call is ignored.
1803 
1804 .seealso: [](ch_ts), `TS`, `PetscViewer`, `PetscViewerBinaryOpen()`, `TSView()`, `MatLoad()`, `VecLoad()`
1805 @*/
1806 PetscErrorCode TSLoad(TS ts, PetscViewer viewer)
1807 {
1808   PetscBool isbinary;
1809   PetscInt  classid;
1810   char      type[256];
1811   DMTS      sdm;
1812   DM        dm;
1813 
1814   PetscFunctionBegin;
1815   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
1816   PetscValidHeaderSpecific(viewer, PETSC_VIEWER_CLASSID, 2);
1817   PetscCall(PetscObjectTypeCompare((PetscObject)viewer, PETSCVIEWERBINARY, &isbinary));
1818   PetscCheck(isbinary, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONG, "Invalid viewer; open viewer with PetscViewerBinaryOpen()");
1819 
1820   PetscCall(PetscViewerBinaryRead(viewer, &classid, 1, NULL, PETSC_INT));
1821   PetscCheck(classid == TS_FILE_CLASSID, PetscObjectComm((PetscObject)ts), PETSC_ERR_ARG_WRONG, "Not TS next in file");
1822   PetscCall(PetscViewerBinaryRead(viewer, type, 256, NULL, PETSC_CHAR));
1823   PetscCall(TSSetType(ts, type));
1824   PetscTryTypeMethod(ts, load, viewer);
1825   PetscCall(DMCreate(PetscObjectComm((PetscObject)ts), &dm));
1826   PetscCall(DMLoad(dm, viewer));
1827   PetscCall(TSSetDM(ts, dm));
1828   PetscCall(DMCreateGlobalVector(ts->dm, &ts->vec_sol));
1829   PetscCall(VecLoad(ts->vec_sol, viewer));
1830   PetscCall(DMGetDMTS(ts->dm, &sdm));
1831   PetscCall(DMTSLoad(sdm, viewer));
1832   PetscFunctionReturn(PETSC_SUCCESS);
1833 }
1834 
1835 #include <petscdraw.h>
1836 #if defined(PETSC_HAVE_SAWS)
1837   #include <petscviewersaws.h>
1838 #endif
1839 
1840 /*@C
1841   TSViewFromOptions - View a `TS` based on values in the options database
1842 
1843   Collective
1844 
1845   Input Parameters:
1846 + ts   - the `TS` context
1847 . obj  - Optional object that provides the prefix for the options database keys
1848 - name - command line option string to be passed by user
1849 
1850   Level: intermediate
1851 
1852 .seealso: [](ch_ts), `TS`, `TSView`, `PetscObjectViewFromOptions()`, `TSCreate()`
1853 @*/
1854 PetscErrorCode TSViewFromOptions(TS ts, PetscObject obj, const char name[])
1855 {
1856   PetscFunctionBegin;
1857   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
1858   PetscCall(PetscObjectViewFromOptions((PetscObject)ts, obj, name));
1859   PetscFunctionReturn(PETSC_SUCCESS);
1860 }
1861 
1862 /*@C
1863   TSView - Prints the `TS` data structure.
1864 
1865   Collective
1866 
1867   Input Parameters:
1868 + ts     - the `TS` context obtained from `TSCreate()`
1869 - viewer - visualization context
1870 
1871   Options Database Key:
1872 . -ts_view - calls `TSView()` at end of `TSStep()`
1873 
1874   Level: beginner
1875 
1876   Notes:
1877   The available visualization contexts include
1878 +     `PETSC_VIEWER_STDOUT_SELF` - standard output (default)
1879 -     `PETSC_VIEWER_STDOUT_WORLD` - synchronized standard
1880   output where only the first processor opens
1881   the file.  All other processors send their
1882   data to the first processor to print.
1883 
1884   The user can open an alternative visualization context with
1885   `PetscViewerASCIIOpen()` - output to a specified file.
1886 
1887   In the debugger you can do call `TSView`(ts,0) to display the `TS` solver. (The same holds for any PETSc object viewer).
1888 
1889 .seealso: [](ch_ts), `TS`, `PetscViewer`, `PetscViewerASCIIOpen()`
1890 @*/
1891 PetscErrorCode TSView(TS ts, PetscViewer viewer)
1892 {
1893   TSType    type;
1894   PetscBool iascii, isstring, isundials, isbinary, isdraw;
1895   DMTS      sdm;
1896 #if defined(PETSC_HAVE_SAWS)
1897   PetscBool issaws;
1898 #endif
1899 
1900   PetscFunctionBegin;
1901   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
1902   if (!viewer) PetscCall(PetscViewerASCIIGetStdout(PetscObjectComm((PetscObject)ts), &viewer));
1903   PetscValidHeaderSpecific(viewer, PETSC_VIEWER_CLASSID, 2);
1904   PetscCheckSameComm(ts, 1, viewer, 2);
1905 
1906   PetscCall(PetscObjectTypeCompare((PetscObject)viewer, PETSCVIEWERASCII, &iascii));
1907   PetscCall(PetscObjectTypeCompare((PetscObject)viewer, PETSCVIEWERSTRING, &isstring));
1908   PetscCall(PetscObjectTypeCompare((PetscObject)viewer, PETSCVIEWERBINARY, &isbinary));
1909   PetscCall(PetscObjectTypeCompare((PetscObject)viewer, PETSCVIEWERDRAW, &isdraw));
1910 #if defined(PETSC_HAVE_SAWS)
1911   PetscCall(PetscObjectTypeCompare((PetscObject)viewer, PETSCVIEWERSAWS, &issaws));
1912 #endif
1913   if (iascii) {
1914     PetscCall(PetscObjectPrintClassNamePrefixType((PetscObject)ts, viewer));
1915     if (ts->ops->view) {
1916       PetscCall(PetscViewerASCIIPushTab(viewer));
1917       PetscUseTypeMethod(ts, view, viewer);
1918       PetscCall(PetscViewerASCIIPopTab(viewer));
1919     }
1920     if (ts->max_steps < PETSC_MAX_INT) PetscCall(PetscViewerASCIIPrintf(viewer, "  maximum steps=%" PetscInt_FMT "\n", ts->max_steps));
1921     if (ts->max_time < PETSC_MAX_REAL) PetscCall(PetscViewerASCIIPrintf(viewer, "  maximum time=%g\n", (double)ts->max_time));
1922     if (ts->ifuncs) PetscCall(PetscViewerASCIIPrintf(viewer, "  total number of I function evaluations=%" PetscInt_FMT "\n", ts->ifuncs));
1923     if (ts->ijacs) PetscCall(PetscViewerASCIIPrintf(viewer, "  total number of I Jacobian evaluations=%" PetscInt_FMT "\n", ts->ijacs));
1924     if (ts->rhsfuncs) PetscCall(PetscViewerASCIIPrintf(viewer, "  total number of RHS function evaluations=%" PetscInt_FMT "\n", ts->rhsfuncs));
1925     if (ts->rhsjacs) PetscCall(PetscViewerASCIIPrintf(viewer, "  total number of RHS Jacobian evaluations=%" PetscInt_FMT "\n", ts->rhsjacs));
1926     if (ts->usessnes) {
1927       PetscBool lin;
1928       if (ts->problem_type == TS_NONLINEAR) PetscCall(PetscViewerASCIIPrintf(viewer, "  total number of nonlinear solver iterations=%" PetscInt_FMT "\n", ts->snes_its));
1929       PetscCall(PetscViewerASCIIPrintf(viewer, "  total number of linear solver iterations=%" PetscInt_FMT "\n", ts->ksp_its));
1930       PetscCall(PetscObjectTypeCompareAny((PetscObject)ts->snes, &lin, SNESKSPONLY, SNESKSPTRANSPOSEONLY, ""));
1931       PetscCall(PetscViewerASCIIPrintf(viewer, "  total number of %slinear solve failures=%" PetscInt_FMT "\n", lin ? "" : "non", ts->num_snes_failures));
1932     }
1933     PetscCall(PetscViewerASCIIPrintf(viewer, "  total number of rejected steps=%" PetscInt_FMT "\n", ts->reject));
1934     if (ts->vrtol) PetscCall(PetscViewerASCIIPrintf(viewer, "  using vector of relative error tolerances, "));
1935     else PetscCall(PetscViewerASCIIPrintf(viewer, "  using relative error tolerance of %g, ", (double)ts->rtol));
1936     if (ts->vatol) PetscCall(PetscViewerASCIIPrintf(viewer, "  using vector of absolute error tolerances\n"));
1937     else PetscCall(PetscViewerASCIIPrintf(viewer, "  using absolute error tolerance of %g\n", (double)ts->atol));
1938     PetscCall(PetscViewerASCIIPushTab(viewer));
1939     PetscCall(TSAdaptView(ts->adapt, viewer));
1940     PetscCall(PetscViewerASCIIPopTab(viewer));
1941   } else if (isstring) {
1942     PetscCall(TSGetType(ts, &type));
1943     PetscCall(PetscViewerStringSPrintf(viewer, " TSType: %-7.7s", type));
1944     PetscTryTypeMethod(ts, view, viewer);
1945   } else if (isbinary) {
1946     PetscInt    classid = TS_FILE_CLASSID;
1947     MPI_Comm    comm;
1948     PetscMPIInt rank;
1949     char        type[256];
1950 
1951     PetscCall(PetscObjectGetComm((PetscObject)ts, &comm));
1952     PetscCallMPI(MPI_Comm_rank(comm, &rank));
1953     if (rank == 0) {
1954       PetscCall(PetscViewerBinaryWrite(viewer, &classid, 1, PETSC_INT));
1955       PetscCall(PetscStrncpy(type, ((PetscObject)ts)->type_name, 256));
1956       PetscCall(PetscViewerBinaryWrite(viewer, type, 256, PETSC_CHAR));
1957     }
1958     PetscTryTypeMethod(ts, view, viewer);
1959     if (ts->adapt) PetscCall(TSAdaptView(ts->adapt, viewer));
1960     PetscCall(DMView(ts->dm, viewer));
1961     PetscCall(VecView(ts->vec_sol, viewer));
1962     PetscCall(DMGetDMTS(ts->dm, &sdm));
1963     PetscCall(DMTSView(sdm, viewer));
1964   } else if (isdraw) {
1965     PetscDraw draw;
1966     char      str[36];
1967     PetscReal x, y, bottom, h;
1968 
1969     PetscCall(PetscViewerDrawGetDraw(viewer, 0, &draw));
1970     PetscCall(PetscDrawGetCurrentPoint(draw, &x, &y));
1971     PetscCall(PetscStrncpy(str, "TS: ", sizeof(str)));
1972     PetscCall(PetscStrlcat(str, ((PetscObject)ts)->type_name, sizeof(str)));
1973     PetscCall(PetscDrawStringBoxed(draw, x, y, PETSC_DRAW_BLACK, PETSC_DRAW_BLACK, str, NULL, &h));
1974     bottom = y - h;
1975     PetscCall(PetscDrawPushCurrentPoint(draw, x, bottom));
1976     PetscTryTypeMethod(ts, view, viewer);
1977     if (ts->adapt) PetscCall(TSAdaptView(ts->adapt, viewer));
1978     if (ts->snes) PetscCall(SNESView(ts->snes, viewer));
1979     PetscCall(PetscDrawPopCurrentPoint(draw));
1980 #if defined(PETSC_HAVE_SAWS)
1981   } else if (issaws) {
1982     PetscMPIInt rank;
1983     const char *name;
1984 
1985     PetscCall(PetscObjectGetName((PetscObject)ts, &name));
1986     PetscCallMPI(MPI_Comm_rank(PETSC_COMM_WORLD, &rank));
1987     if (!((PetscObject)ts)->amsmem && rank == 0) {
1988       char dir[1024];
1989 
1990       PetscCall(PetscObjectViewSAWs((PetscObject)ts, viewer));
1991       PetscCall(PetscSNPrintf(dir, 1024, "/PETSc/Objects/%s/time_step", name));
1992       PetscCallSAWs(SAWs_Register, (dir, &ts->steps, 1, SAWs_READ, SAWs_INT));
1993       PetscCall(PetscSNPrintf(dir, 1024, "/PETSc/Objects/%s/time", name));
1994       PetscCallSAWs(SAWs_Register, (dir, &ts->ptime, 1, SAWs_READ, SAWs_DOUBLE));
1995     }
1996     PetscTryTypeMethod(ts, view, viewer);
1997 #endif
1998   }
1999   if (ts->snes && ts->usessnes) {
2000     PetscCall(PetscViewerASCIIPushTab(viewer));
2001     PetscCall(SNESView(ts->snes, viewer));
2002     PetscCall(PetscViewerASCIIPopTab(viewer));
2003   }
2004   PetscCall(DMGetDMTS(ts->dm, &sdm));
2005   PetscCall(DMTSView(sdm, viewer));
2006 
2007   PetscCall(PetscViewerASCIIPushTab(viewer));
2008   PetscCall(PetscObjectTypeCompare((PetscObject)ts, TSSUNDIALS, &isundials));
2009   PetscCall(PetscViewerASCIIPopTab(viewer));
2010   PetscFunctionReturn(PETSC_SUCCESS);
2011 }
2012 
2013 /*@
2014   TSSetApplicationContext - Sets an optional user-defined context for
2015   the timesteppers.
2016 
2017   Logically Collective
2018 
2019   Input Parameters:
2020 + ts   - the `TS` context obtained from `TSCreate()`
2021 - usrP - user context
2022 
2023   Level: intermediate
2024 
2025   Fortran Notes:
2026   You must write a Fortran interface definition for this
2027   function that tells Fortran the Fortran derived data type that you are passing in as the `ctx` argument.
2028 
2029 .seealso: [](ch_ts), `TS`, `TSGetApplicationContext()`
2030 @*/
2031 PetscErrorCode TSSetApplicationContext(TS ts, void *usrP)
2032 {
2033   PetscFunctionBegin;
2034   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
2035   ts->user = usrP;
2036   PetscFunctionReturn(PETSC_SUCCESS);
2037 }
2038 
2039 /*@
2040   TSGetApplicationContext - Gets the user-defined context for the
2041   timestepper that was set with `TSSetApplicationContext()`
2042 
2043   Not Collective
2044 
2045   Input Parameter:
2046 . ts - the `TS` context obtained from `TSCreate()`
2047 
2048   Output Parameter:
2049 . usrP - user context
2050 
2051   Level: intermediate
2052 
2053   Fortran Notes:
2054   You must write a Fortran interface definition for this
2055   function that tells Fortran the Fortran derived data type that you are passing in as the `ctx` argument.
2056 
2057 .seealso: [](ch_ts), `TS`, `TSSetApplicationContext()`
2058 @*/
2059 PetscErrorCode TSGetApplicationContext(TS ts, void *usrP)
2060 {
2061   PetscFunctionBegin;
2062   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
2063   *(void **)usrP = ts->user;
2064   PetscFunctionReturn(PETSC_SUCCESS);
2065 }
2066 
2067 /*@
2068   TSGetStepNumber - Gets the number of time steps completed.
2069 
2070   Not Collective
2071 
2072   Input Parameter:
2073 . ts - the `TS` context obtained from `TSCreate()`
2074 
2075   Output Parameter:
2076 . steps - number of steps completed so far
2077 
2078   Level: intermediate
2079 
2080 .seealso: [](ch_ts), `TS`, `TSGetTime()`, `TSGetTimeStep()`, `TSSetPreStep()`, `TSSetPreStage()`, `TSSetPostStage()`, `TSSetPostStep()`
2081 @*/
2082 PetscErrorCode TSGetStepNumber(TS ts, PetscInt *steps)
2083 {
2084   PetscFunctionBegin;
2085   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
2086   PetscAssertPointer(steps, 2);
2087   *steps = ts->steps;
2088   PetscFunctionReturn(PETSC_SUCCESS);
2089 }
2090 
2091 /*@
2092   TSSetStepNumber - Sets the number of steps completed.
2093 
2094   Logically Collective
2095 
2096   Input Parameters:
2097 + ts    - the `TS` context
2098 - steps - number of steps completed so far
2099 
2100   Level: developer
2101 
2102   Note:
2103   For most uses of the `TS` solvers the user need not explicitly call
2104   `TSSetStepNumber()`, as the step counter is appropriately updated in
2105   `TSSolve()`/`TSStep()`/`TSRollBack()`. Power users may call this routine to
2106   reinitialize timestepping by setting the step counter to zero (and time
2107   to the initial time) to solve a similar problem with different initial
2108   conditions or parameters. Other possible use case is to continue
2109   timestepping from a previously interrupted run in such a way that `TS`
2110   monitors will be called with a initial nonzero step counter.
2111 
2112 .seealso: [](ch_ts), `TS`, `TSGetStepNumber()`, `TSSetTime()`, `TSSetTimeStep()`, `TSSetSolution()`
2113 @*/
2114 PetscErrorCode TSSetStepNumber(TS ts, PetscInt steps)
2115 {
2116   PetscFunctionBegin;
2117   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
2118   PetscValidLogicalCollectiveInt(ts, steps, 2);
2119   PetscCheck(steps >= 0, PetscObjectComm((PetscObject)ts), PETSC_ERR_ARG_OUTOFRANGE, "Step number must be non-negative");
2120   ts->steps = steps;
2121   PetscFunctionReturn(PETSC_SUCCESS);
2122 }
2123 
2124 /*@
2125   TSSetTimeStep - Allows one to reset the timestep at any time,
2126   useful for simple pseudo-timestepping codes.
2127 
2128   Logically Collective
2129 
2130   Input Parameters:
2131 + ts        - the `TS` context obtained from `TSCreate()`
2132 - time_step - the size of the timestep
2133 
2134   Level: intermediate
2135 
2136 .seealso: [](ch_ts), `TS`, `TSPSEUDO`, `TSGetTimeStep()`, `TSSetTime()`
2137 @*/
2138 PetscErrorCode TSSetTimeStep(TS ts, PetscReal time_step)
2139 {
2140   PetscFunctionBegin;
2141   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
2142   PetscValidLogicalCollectiveReal(ts, time_step, 2);
2143   ts->time_step = time_step;
2144   PetscFunctionReturn(PETSC_SUCCESS);
2145 }
2146 
2147 /*@
2148   TSSetExactFinalTime - Determines whether to adapt the final time step to
2149   match the exact final time, interpolate solution to the exact final time,
2150   or just return at the final time `TS` computed.
2151 
2152   Logically Collective
2153 
2154   Input Parameters:
2155 + ts     - the time-step context
2156 - eftopt - exact final time option
2157 .vb
2158   TS_EXACTFINALTIME_STEPOVER    - Don't do anything if final time is exceeded
2159   TS_EXACTFINALTIME_INTERPOLATE - Interpolate back to final time
2160   TS_EXACTFINALTIME_MATCHSTEP - Adapt final time step to match the final time
2161 .ve
2162 
2163   Options Database Key:
2164 . -ts_exact_final_time <stepover,interpolate,matchstep> - select the final step at runtime
2165 
2166   Level: beginner
2167 
2168   Note:
2169   If you use the option `TS_EXACTFINALTIME_STEPOVER` the solution may be at a very different time
2170   then the final time you selected.
2171 
2172 .seealso: [](ch_ts), `TS`, `TSExactFinalTimeOption`, `TSGetExactFinalTime()`
2173 @*/
2174 PetscErrorCode TSSetExactFinalTime(TS ts, TSExactFinalTimeOption eftopt)
2175 {
2176   PetscFunctionBegin;
2177   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
2178   PetscValidLogicalCollectiveEnum(ts, eftopt, 2);
2179   ts->exact_final_time = eftopt;
2180   PetscFunctionReturn(PETSC_SUCCESS);
2181 }
2182 
2183 /*@
2184   TSGetExactFinalTime - Gets the exact final time option set with `TSSetExactFinalTime()`
2185 
2186   Not Collective
2187 
2188   Input Parameter:
2189 . ts - the `TS` context
2190 
2191   Output Parameter:
2192 . eftopt - exact final time option
2193 
2194   Level: beginner
2195 
2196 .seealso: [](ch_ts), `TS`, `TSExactFinalTimeOption`, `TSSetExactFinalTime()`
2197 @*/
2198 PetscErrorCode TSGetExactFinalTime(TS ts, TSExactFinalTimeOption *eftopt)
2199 {
2200   PetscFunctionBegin;
2201   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
2202   PetscAssertPointer(eftopt, 2);
2203   *eftopt = ts->exact_final_time;
2204   PetscFunctionReturn(PETSC_SUCCESS);
2205 }
2206 
2207 /*@
2208   TSGetTimeStep - Gets the current timestep size.
2209 
2210   Not Collective
2211 
2212   Input Parameter:
2213 . ts - the `TS` context obtained from `TSCreate()`
2214 
2215   Output Parameter:
2216 . dt - the current timestep size
2217 
2218   Level: intermediate
2219 
2220 .seealso: [](ch_ts), `TS`, `TSSetTimeStep()`, `TSGetTime()`
2221 @*/
2222 PetscErrorCode TSGetTimeStep(TS ts, PetscReal *dt)
2223 {
2224   PetscFunctionBegin;
2225   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
2226   PetscAssertPointer(dt, 2);
2227   *dt = ts->time_step;
2228   PetscFunctionReturn(PETSC_SUCCESS);
2229 }
2230 
2231 /*@
2232   TSGetSolution - Returns the solution at the present timestep. It
2233   is valid to call this routine inside the function that you are evaluating
2234   in order to move to the new timestep. This vector not changed until
2235   the solution at the next timestep has been calculated.
2236 
2237   Not Collective, but v returned is parallel if ts is parallel
2238 
2239   Input Parameter:
2240 . ts - the `TS` context obtained from `TSCreate()`
2241 
2242   Output Parameter:
2243 . v - the vector containing the solution
2244 
2245   Level: intermediate
2246 
2247   Note:
2248   If you used `TSSetExactFinalTime`(ts,`TS_EXACTFINALTIME_MATCHSTEP`); this does not return the solution at the requested
2249   final time. It returns the solution at the next timestep.
2250 
2251 .seealso: [](ch_ts), `TS`, `TSGetTimeStep()`, `TSGetTime()`, `TSGetSolveTime()`, `TSGetSolutionComponents()`, `TSSetSolutionFunction()`
2252 @*/
2253 PetscErrorCode TSGetSolution(TS ts, Vec *v)
2254 {
2255   PetscFunctionBegin;
2256   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
2257   PetscAssertPointer(v, 2);
2258   *v = ts->vec_sol;
2259   PetscFunctionReturn(PETSC_SUCCESS);
2260 }
2261 
2262 /*@
2263   TSGetSolutionComponents - Returns any solution components at the present
2264   timestep, if available for the time integration method being used.
2265   Solution components are quantities that share the same size and
2266   structure as the solution vector.
2267 
2268   Not Collective, but v returned is parallel if ts is parallel
2269 
2270   Input Parameters:
2271 + ts - the `TS` context obtained from `TSCreate()` (input parameter).
2272 . n  - If v is `NULL`, then the number of solution components is
2273        returned through n, else the n-th solution component is
2274        returned in v.
2275 - v  - the vector containing the n-th solution component
2276        (may be `NULL` to use this function to find out
2277         the number of solutions components).
2278 
2279   Level: advanced
2280 
2281 .seealso: [](ch_ts), `TS`, `TSGetSolution()`
2282 @*/
2283 PetscErrorCode TSGetSolutionComponents(TS ts, PetscInt *n, Vec *v)
2284 {
2285   PetscFunctionBegin;
2286   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
2287   if (!ts->ops->getsolutioncomponents) *n = 0;
2288   else PetscUseTypeMethod(ts, getsolutioncomponents, n, v);
2289   PetscFunctionReturn(PETSC_SUCCESS);
2290 }
2291 
2292 /*@
2293   TSGetAuxSolution - Returns an auxiliary solution at the present
2294   timestep, if available for the time integration method being used.
2295 
2296   Not Collective, but v returned is parallel if ts is parallel
2297 
2298   Input Parameters:
2299 + ts - the `TS` context obtained from `TSCreate()` (input parameter).
2300 - v  - the vector containing the auxiliary solution
2301 
2302   Level: intermediate
2303 
2304 .seealso: [](ch_ts), `TS`, `TSGetSolution()`
2305 @*/
2306 PetscErrorCode TSGetAuxSolution(TS ts, Vec *v)
2307 {
2308   PetscFunctionBegin;
2309   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
2310   if (ts->ops->getauxsolution) PetscUseTypeMethod(ts, getauxsolution, v);
2311   else PetscCall(VecZeroEntries(*v));
2312   PetscFunctionReturn(PETSC_SUCCESS);
2313 }
2314 
2315 /*@
2316   TSGetTimeError - Returns the estimated error vector, if the chosen
2317   `TSType` has an error estimation functionality and `TSSetTimeError()` was called
2318 
2319   Not Collective, but v returned is parallel if ts is parallel
2320 
2321   Input Parameters:
2322 + ts - the `TS` context obtained from `TSCreate()` (input parameter).
2323 . n  - current estimate (n=0) or previous one (n=-1)
2324 - v  - the vector containing the error (same size as the solution).
2325 
2326   Level: intermediate
2327 
2328   Note:
2329   MUST call after `TSSetUp()`
2330 
2331 .seealso: [](ch_ts), `TSGetSolution()`, `TSSetTimeError()`
2332 @*/
2333 PetscErrorCode TSGetTimeError(TS ts, PetscInt n, Vec *v)
2334 {
2335   PetscFunctionBegin;
2336   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
2337   if (ts->ops->gettimeerror) PetscUseTypeMethod(ts, gettimeerror, n, v);
2338   else PetscCall(VecZeroEntries(*v));
2339   PetscFunctionReturn(PETSC_SUCCESS);
2340 }
2341 
2342 /*@
2343   TSSetTimeError - Sets the estimated error vector, if the chosen
2344   `TSType` has an error estimation functionality. This can be used
2345   to restart such a time integrator with a given error vector.
2346 
2347   Not Collective, but v returned is parallel if ts is parallel
2348 
2349   Input Parameters:
2350 + ts - the `TS` context obtained from `TSCreate()` (input parameter).
2351 - v  - the vector containing the error (same size as the solution).
2352 
2353   Level: intermediate
2354 
2355 .seealso: [](ch_ts), `TS`, `TSSetSolution()`, `TSGetTimeError()`
2356 @*/
2357 PetscErrorCode TSSetTimeError(TS ts, Vec v)
2358 {
2359   PetscFunctionBegin;
2360   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
2361   PetscCheck(ts->setupcalled, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONGSTATE, "Must call TSSetUp() first");
2362   PetscTryTypeMethod(ts, settimeerror, v);
2363   PetscFunctionReturn(PETSC_SUCCESS);
2364 }
2365 
2366 /* ----- Routines to initialize and destroy a timestepper ---- */
2367 /*@
2368   TSSetProblemType - Sets the type of problem to be solved.
2369 
2370   Not collective
2371 
2372   Input Parameters:
2373 + ts   - The `TS`
2374 - type - One of `TS_LINEAR`, `TS_NONLINEAR` where these types refer to problems of the forms
2375 .vb
2376          U_t - A U = 0      (linear)
2377          U_t - A(t) U = 0   (linear)
2378          F(t,U,U_t) = 0     (nonlinear)
2379 .ve
2380 
2381   Level: beginner
2382 
2383 .seealso: [](ch_ts), `TSSetUp()`, `TSProblemType`, `TS`
2384 @*/
2385 PetscErrorCode TSSetProblemType(TS ts, TSProblemType type)
2386 {
2387   PetscFunctionBegin;
2388   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
2389   ts->problem_type = type;
2390   if (type == TS_LINEAR) {
2391     SNES snes;
2392     PetscCall(TSGetSNES(ts, &snes));
2393     PetscCall(SNESSetType(snes, SNESKSPONLY));
2394   }
2395   PetscFunctionReturn(PETSC_SUCCESS);
2396 }
2397 
2398 /*@C
2399   TSGetProblemType - Gets the type of problem to be solved.
2400 
2401   Not collective
2402 
2403   Input Parameter:
2404 . ts - The `TS`
2405 
2406   Output Parameter:
2407 . type - One of `TS_LINEAR`, `TS_NONLINEAR` where these types refer to problems of the forms
2408 .vb
2409          M U_t = A U
2410          M(t) U_t = A(t) U
2411          F(t,U,U_t)
2412 .ve
2413 
2414   Level: beginner
2415 
2416 .seealso: [](ch_ts), `TSSetUp()`, `TSProblemType`, `TS`
2417 @*/
2418 PetscErrorCode TSGetProblemType(TS ts, TSProblemType *type)
2419 {
2420   PetscFunctionBegin;
2421   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
2422   PetscAssertPointer(type, 2);
2423   *type = ts->problem_type;
2424   PetscFunctionReturn(PETSC_SUCCESS);
2425 }
2426 
2427 /*
2428     Attempt to check/preset a default value for the exact final time option. This is needed at the beginning of TSSolve() and in TSSetUp()
2429 */
2430 static PetscErrorCode TSSetExactFinalTimeDefault(TS ts)
2431 {
2432   PetscBool isnone;
2433 
2434   PetscFunctionBegin;
2435   PetscCall(TSGetAdapt(ts, &ts->adapt));
2436   PetscCall(TSAdaptSetDefaultType(ts->adapt, ts->default_adapt_type));
2437 
2438   PetscCall(PetscObjectTypeCompare((PetscObject)ts->adapt, TSADAPTNONE, &isnone));
2439   if (!isnone && ts->exact_final_time == TS_EXACTFINALTIME_UNSPECIFIED) ts->exact_final_time = TS_EXACTFINALTIME_MATCHSTEP;
2440   else if (ts->exact_final_time == TS_EXACTFINALTIME_UNSPECIFIED) ts->exact_final_time = TS_EXACTFINALTIME_INTERPOLATE;
2441   PetscFunctionReturn(PETSC_SUCCESS);
2442 }
2443 
2444 /*@
2445   TSSetUp - Sets up the internal data structures for the later use of a timestepper.
2446 
2447   Collective
2448 
2449   Input Parameter:
2450 . ts - the `TS` context obtained from `TSCreate()`
2451 
2452   Level: advanced
2453 
2454   Note:
2455   For basic use of the `TS` solvers the user need not explicitly call
2456   `TSSetUp()`, since these actions will automatically occur during
2457   the call to `TSStep()` or `TSSolve()`.  However, if one wishes to control this
2458   phase separately, `TSSetUp()` should be called after `TSCreate()`
2459   and optional routines of the form TSSetXXX(), but before `TSStep()` and `TSSolve()`.
2460 
2461 .seealso: [](ch_ts), `TSCreate()`, `TS`, `TSStep()`, `TSDestroy()`, `TSSolve()`
2462 @*/
2463 PetscErrorCode TSSetUp(TS ts)
2464 {
2465   DM dm;
2466   PetscErrorCode (*func)(SNES, Vec, Vec, void *);
2467   PetscErrorCode (*jac)(SNES, Vec, Mat, Mat, void *);
2468   TSIFunction   ifun;
2469   TSIJacobian   ijac;
2470   TSI2Jacobian  i2jac;
2471   TSRHSJacobian rhsjac;
2472 
2473   PetscFunctionBegin;
2474   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
2475   if (ts->setupcalled) PetscFunctionReturn(PETSC_SUCCESS);
2476 
2477   if (!((PetscObject)ts)->type_name) {
2478     PetscCall(TSGetIFunction(ts, NULL, &ifun, NULL));
2479     PetscCall(TSSetType(ts, ifun ? TSBEULER : TSEULER));
2480   }
2481 
2482   if (!ts->vec_sol) {
2483     PetscCheck(ts->dm, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONGSTATE, "Must call TSSetSolution() first");
2484     PetscCall(DMCreateGlobalVector(ts->dm, &ts->vec_sol));
2485   }
2486 
2487   if (ts->tspan) {
2488     if (!ts->tspan->vecs_sol) PetscCall(VecDuplicateVecs(ts->vec_sol, ts->tspan->num_span_times, &ts->tspan->vecs_sol));
2489   }
2490   if (!ts->Jacp && ts->Jacprhs) { /* IJacobianP shares the same matrix with RHSJacobianP if only RHSJacobianP is provided */
2491     PetscCall(PetscObjectReference((PetscObject)ts->Jacprhs));
2492     ts->Jacp = ts->Jacprhs;
2493   }
2494 
2495   if (ts->quadraturets) {
2496     PetscCall(TSSetUp(ts->quadraturets));
2497     PetscCall(VecDestroy(&ts->vec_costintegrand));
2498     PetscCall(VecDuplicate(ts->quadraturets->vec_sol, &ts->vec_costintegrand));
2499   }
2500 
2501   PetscCall(TSGetRHSJacobian(ts, NULL, NULL, &rhsjac, NULL));
2502   if (rhsjac == TSComputeRHSJacobianConstant) {
2503     Mat  Amat, Pmat;
2504     SNES snes;
2505     PetscCall(TSGetSNES(ts, &snes));
2506     PetscCall(SNESGetJacobian(snes, &Amat, &Pmat, NULL, NULL));
2507     /* Matching matrices implies that an IJacobian is NOT set, because if it had been set, the IJacobian's matrix would
2508      * have displaced the RHS matrix */
2509     if (Amat && Amat == ts->Arhs) {
2510       /* we need to copy the values of the matrix because for the constant Jacobian case the user will never set the numerical values in this new location */
2511       PetscCall(MatDuplicate(ts->Arhs, MAT_COPY_VALUES, &Amat));
2512       PetscCall(SNESSetJacobian(snes, Amat, NULL, NULL, NULL));
2513       PetscCall(MatDestroy(&Amat));
2514     }
2515     if (Pmat && Pmat == ts->Brhs) {
2516       PetscCall(MatDuplicate(ts->Brhs, MAT_COPY_VALUES, &Pmat));
2517       PetscCall(SNESSetJacobian(snes, NULL, Pmat, NULL, NULL));
2518       PetscCall(MatDestroy(&Pmat));
2519     }
2520   }
2521 
2522   PetscCall(TSGetAdapt(ts, &ts->adapt));
2523   PetscCall(TSAdaptSetDefaultType(ts->adapt, ts->default_adapt_type));
2524 
2525   PetscTryTypeMethod(ts, setup);
2526 
2527   PetscCall(TSSetExactFinalTimeDefault(ts));
2528 
2529   /* In the case where we've set a DMTSFunction or what have you, we need the default SNESFunction
2530      to be set right but can't do it elsewhere due to the overreliance on ctx=ts.
2531    */
2532   PetscCall(TSGetDM(ts, &dm));
2533   PetscCall(DMSNESGetFunction(dm, &func, NULL));
2534   if (!func) PetscCall(DMSNESSetFunction(dm, SNESTSFormFunction, ts));
2535 
2536   /* If the SNES doesn't have a jacobian set and the TS has an ijacobian or rhsjacobian set, set the SNES to use it.
2537      Otherwise, the SNES will use coloring internally to form the Jacobian.
2538    */
2539   PetscCall(DMSNESGetJacobian(dm, &jac, NULL));
2540   PetscCall(DMTSGetIJacobian(dm, &ijac, NULL));
2541   PetscCall(DMTSGetI2Jacobian(dm, &i2jac, NULL));
2542   PetscCall(DMTSGetRHSJacobian(dm, &rhsjac, NULL));
2543   if (!jac && (ijac || i2jac || rhsjac)) PetscCall(DMSNESSetJacobian(dm, SNESTSFormJacobian, ts));
2544 
2545   /* if time integration scheme has a starting method, call it */
2546   PetscTryTypeMethod(ts, startingmethod);
2547 
2548   ts->setupcalled = PETSC_TRUE;
2549   PetscFunctionReturn(PETSC_SUCCESS);
2550 }
2551 
2552 /*@
2553   TSReset - Resets a `TS` context and removes any allocated `Vec`s and `Mat`s.
2554 
2555   Collective
2556 
2557   Input Parameter:
2558 . ts - the `TS` context obtained from `TSCreate()`
2559 
2560   Level: beginner
2561 
2562 .seealso: [](ch_ts), `TS`, `TSCreate()`, `TSSetup()`, `TSDestroy()`
2563 @*/
2564 PetscErrorCode TSReset(TS ts)
2565 {
2566   TS_RHSSplitLink ilink = ts->tsrhssplit, next;
2567 
2568   PetscFunctionBegin;
2569   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
2570 
2571   PetscTryTypeMethod(ts, reset);
2572   if (ts->snes) PetscCall(SNESReset(ts->snes));
2573   if (ts->adapt) PetscCall(TSAdaptReset(ts->adapt));
2574 
2575   PetscCall(MatDestroy(&ts->Arhs));
2576   PetscCall(MatDestroy(&ts->Brhs));
2577   PetscCall(VecDestroy(&ts->Frhs));
2578   PetscCall(VecDestroy(&ts->vec_sol));
2579   PetscCall(VecDestroy(&ts->vec_dot));
2580   PetscCall(VecDestroy(&ts->vatol));
2581   PetscCall(VecDestroy(&ts->vrtol));
2582   PetscCall(VecDestroyVecs(ts->nwork, &ts->work));
2583 
2584   PetscCall(MatDestroy(&ts->Jacprhs));
2585   PetscCall(MatDestroy(&ts->Jacp));
2586   if (ts->forward_solve) PetscCall(TSForwardReset(ts));
2587   if (ts->quadraturets) {
2588     PetscCall(TSReset(ts->quadraturets));
2589     PetscCall(VecDestroy(&ts->vec_costintegrand));
2590   }
2591   while (ilink) {
2592     next = ilink->next;
2593     PetscCall(TSDestroy(&ilink->ts));
2594     PetscCall(PetscFree(ilink->splitname));
2595     PetscCall(ISDestroy(&ilink->is));
2596     PetscCall(PetscFree(ilink));
2597     ilink = next;
2598   }
2599   ts->tsrhssplit     = NULL;
2600   ts->num_rhs_splits = 0;
2601   if (ts->tspan) {
2602     PetscCall(PetscFree(ts->tspan->span_times));
2603     PetscCall(VecDestroyVecs(ts->tspan->num_span_times, &ts->tspan->vecs_sol));
2604     PetscCall(PetscFree(ts->tspan));
2605   }
2606   ts->setupcalled = PETSC_FALSE;
2607   PetscFunctionReturn(PETSC_SUCCESS);
2608 }
2609 
2610 static PetscErrorCode TSResizeReset(TS);
2611 
2612 /*@C
2613   TSDestroy - Destroys the timestepper context that was created
2614   with `TSCreate()`.
2615 
2616   Collective
2617 
2618   Input Parameter:
2619 . ts - the `TS` context obtained from `TSCreate()`
2620 
2621   Level: beginner
2622 
2623 .seealso: [](ch_ts), `TS`, `TSCreate()`, `TSSetUp()`, `TSSolve()`
2624 @*/
2625 PetscErrorCode TSDestroy(TS *ts)
2626 {
2627   PetscFunctionBegin;
2628   if (!*ts) PetscFunctionReturn(PETSC_SUCCESS);
2629   PetscValidHeaderSpecific(*ts, TS_CLASSID, 1);
2630   if (--((PetscObject)(*ts))->refct > 0) {
2631     *ts = NULL;
2632     PetscFunctionReturn(PETSC_SUCCESS);
2633   }
2634 
2635   PetscCall(TSReset(*ts));
2636   PetscCall(TSAdjointReset(*ts));
2637   if ((*ts)->forward_solve) PetscCall(TSForwardReset(*ts));
2638   PetscCall(TSResizeReset(*ts));
2639 
2640   /* if memory was published with SAWs then destroy it */
2641   PetscCall(PetscObjectSAWsViewOff((PetscObject)*ts));
2642   PetscTryTypeMethod((*ts), destroy);
2643 
2644   PetscCall(TSTrajectoryDestroy(&(*ts)->trajectory));
2645 
2646   PetscCall(TSAdaptDestroy(&(*ts)->adapt));
2647   PetscCall(TSEventDestroy(&(*ts)->event));
2648 
2649   PetscCall(SNESDestroy(&(*ts)->snes));
2650   PetscCall(DMDestroy(&(*ts)->dm));
2651   PetscCall(TSMonitorCancel((*ts)));
2652   PetscCall(TSAdjointMonitorCancel((*ts)));
2653 
2654   PetscCall(TSDestroy(&(*ts)->quadraturets));
2655   PetscCall(PetscHeaderDestroy(ts));
2656   PetscFunctionReturn(PETSC_SUCCESS);
2657 }
2658 
2659 /*@
2660   TSGetSNES - Returns the `SNES` (nonlinear solver) associated with
2661   a `TS` (timestepper) context. Valid only for nonlinear problems.
2662 
2663   Not Collective, but snes is parallel if ts is parallel
2664 
2665   Input Parameter:
2666 . ts - the `TS` context obtained from `TSCreate()`
2667 
2668   Output Parameter:
2669 . snes - the nonlinear solver context
2670 
2671   Level: beginner
2672 
2673   Notes:
2674   The user can then directly manipulate the `SNES` context to set various
2675   options, etc.  Likewise, the user can then extract and manipulate the
2676   `KSP`, and `PC` contexts as well.
2677 
2678   `TSGetSNES()` does not work for integrators that do not use `SNES`; in
2679   this case `TSGetSNES()` returns `NULL` in `snes`.
2680 
2681 .seealso: [](ch_ts), `TS`, `SNES`, `TSCreate()`, `TSSetUp()`, `TSSolve()`
2682 @*/
2683 PetscErrorCode TSGetSNES(TS ts, SNES *snes)
2684 {
2685   PetscFunctionBegin;
2686   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
2687   PetscAssertPointer(snes, 2);
2688   if (!ts->snes) {
2689     PetscCall(SNESCreate(PetscObjectComm((PetscObject)ts), &ts->snes));
2690     PetscCall(PetscObjectSetOptions((PetscObject)ts->snes, ((PetscObject)ts)->options));
2691     PetscCall(SNESSetFunction(ts->snes, NULL, SNESTSFormFunction, ts));
2692     PetscCall(PetscObjectIncrementTabLevel((PetscObject)ts->snes, (PetscObject)ts, 1));
2693     if (ts->dm) PetscCall(SNESSetDM(ts->snes, ts->dm));
2694     if (ts->problem_type == TS_LINEAR) PetscCall(SNESSetType(ts->snes, SNESKSPONLY));
2695   }
2696   *snes = ts->snes;
2697   PetscFunctionReturn(PETSC_SUCCESS);
2698 }
2699 
2700 /*@
2701   TSSetSNES - Set the `SNES` (nonlinear solver) to be used by the timestepping context
2702 
2703   Collective
2704 
2705   Input Parameters:
2706 + ts   - the `TS` context obtained from `TSCreate()`
2707 - snes - the nonlinear solver context
2708 
2709   Level: developer
2710 
2711   Note:
2712   Most users should have the `TS` created by calling `TSGetSNES()`
2713 
2714 .seealso: [](ch_ts), `TS`, `SNES`, `TSCreate()`, `TSSetUp()`, `TSSolve()`, `TSGetSNES()`
2715 @*/
2716 PetscErrorCode TSSetSNES(TS ts, SNES snes)
2717 {
2718   PetscErrorCode (*func)(SNES, Vec, Mat, Mat, void *);
2719 
2720   PetscFunctionBegin;
2721   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
2722   PetscValidHeaderSpecific(snes, SNES_CLASSID, 2);
2723   PetscCall(PetscObjectReference((PetscObject)snes));
2724   PetscCall(SNESDestroy(&ts->snes));
2725 
2726   ts->snes = snes;
2727 
2728   PetscCall(SNESSetFunction(ts->snes, NULL, SNESTSFormFunction, ts));
2729   PetscCall(SNESGetJacobian(ts->snes, NULL, NULL, &func, NULL));
2730   if (func == SNESTSFormJacobian) PetscCall(SNESSetJacobian(ts->snes, NULL, NULL, SNESTSFormJacobian, ts));
2731   PetscFunctionReturn(PETSC_SUCCESS);
2732 }
2733 
2734 /*@
2735   TSGetKSP - Returns the `KSP` (linear solver) associated with
2736   a `TS` (timestepper) context.
2737 
2738   Not Collective, but `ksp` is parallel if `ts` is parallel
2739 
2740   Input Parameter:
2741 . ts - the `TS` context obtained from `TSCreate()`
2742 
2743   Output Parameter:
2744 . ksp - the nonlinear solver context
2745 
2746   Level: beginner
2747 
2748   Notes:
2749   The user can then directly manipulate the `KSP` context to set various
2750   options, etc.  Likewise, the user can then extract and manipulate the
2751   `PC` context as well.
2752 
2753   `TSGetKSP()` does not work for integrators that do not use `KSP`;
2754   in this case `TSGetKSP()` returns `NULL` in `ksp`.
2755 
2756 .seealso: [](ch_ts), `TS`, `SNES`, `KSP`, `TSCreate()`, `TSSetUp()`, `TSSolve()`, `TSGetSNES()`
2757 @*/
2758 PetscErrorCode TSGetKSP(TS ts, KSP *ksp)
2759 {
2760   SNES snes;
2761 
2762   PetscFunctionBegin;
2763   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
2764   PetscAssertPointer(ksp, 2);
2765   PetscCheck(((PetscObject)ts)->type_name, PETSC_COMM_SELF, PETSC_ERR_ARG_NULL, "KSP is not created yet. Call TSSetType() first");
2766   PetscCheck(ts->problem_type == TS_LINEAR, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONG, "Linear only; use TSGetSNES()");
2767   PetscCall(TSGetSNES(ts, &snes));
2768   PetscCall(SNESGetKSP(snes, ksp));
2769   PetscFunctionReturn(PETSC_SUCCESS);
2770 }
2771 
2772 /* ----------- Routines to set solver parameters ---------- */
2773 
2774 /*@
2775   TSSetMaxSteps - Sets the maximum number of steps to use.
2776 
2777   Logically Collective
2778 
2779   Input Parameters:
2780 + ts       - the `TS` context obtained from `TSCreate()`
2781 - maxsteps - maximum number of steps to use
2782 
2783   Options Database Key:
2784 . -ts_max_steps <maxsteps> - Sets maxsteps
2785 
2786   Level: intermediate
2787 
2788   Note:
2789   The default maximum number of steps is 5000
2790 
2791 .seealso: [](ch_ts), `TS`, `TSGetMaxSteps()`, `TSSetMaxTime()`, `TSSetExactFinalTime()`
2792 @*/
2793 PetscErrorCode TSSetMaxSteps(TS ts, PetscInt maxsteps)
2794 {
2795   PetscFunctionBegin;
2796   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
2797   PetscValidLogicalCollectiveInt(ts, maxsteps, 2);
2798   PetscCheck(maxsteps >= 0, PetscObjectComm((PetscObject)ts), PETSC_ERR_ARG_OUTOFRANGE, "Maximum number of steps must be non-negative");
2799   ts->max_steps = maxsteps;
2800   PetscFunctionReturn(PETSC_SUCCESS);
2801 }
2802 
2803 /*@
2804   TSGetMaxSteps - Gets the maximum number of steps to use.
2805 
2806   Not Collective
2807 
2808   Input Parameter:
2809 . ts - the `TS` context obtained from `TSCreate()`
2810 
2811   Output Parameter:
2812 . maxsteps - maximum number of steps to use
2813 
2814   Level: advanced
2815 
2816 .seealso: [](ch_ts), `TS`, `TSSetMaxSteps()`, `TSGetMaxTime()`, `TSSetMaxTime()`
2817 @*/
2818 PetscErrorCode TSGetMaxSteps(TS ts, PetscInt *maxsteps)
2819 {
2820   PetscFunctionBegin;
2821   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
2822   PetscAssertPointer(maxsteps, 2);
2823   *maxsteps = ts->max_steps;
2824   PetscFunctionReturn(PETSC_SUCCESS);
2825 }
2826 
2827 /*@
2828   TSSetMaxTime - Sets the maximum (or final) time for timestepping.
2829 
2830   Logically Collective
2831 
2832   Input Parameters:
2833 + ts      - the `TS` context obtained from `TSCreate()`
2834 - maxtime - final time to step to
2835 
2836   Options Database Key:
2837 . -ts_max_time <maxtime> - Sets maxtime
2838 
2839   Level: intermediate
2840 
2841   Notes:
2842   The default maximum time is 5.0
2843 
2844 .seealso: [](ch_ts), `TS`, `TSGetMaxTime()`, `TSSetMaxSteps()`, `TSSetExactFinalTime()`
2845 @*/
2846 PetscErrorCode TSSetMaxTime(TS ts, PetscReal maxtime)
2847 {
2848   PetscFunctionBegin;
2849   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
2850   PetscValidLogicalCollectiveReal(ts, maxtime, 2);
2851   ts->max_time = maxtime;
2852   PetscFunctionReturn(PETSC_SUCCESS);
2853 }
2854 
2855 /*@
2856   TSGetMaxTime - Gets the maximum (or final) time for timestepping.
2857 
2858   Not Collective
2859 
2860   Input Parameter:
2861 . ts - the `TS` context obtained from `TSCreate()`
2862 
2863   Output Parameter:
2864 . maxtime - final time to step to
2865 
2866   Level: advanced
2867 
2868 .seealso: [](ch_ts), `TS`, `TSSetMaxTime()`, `TSGetMaxSteps()`, `TSSetMaxSteps()`
2869 @*/
2870 PetscErrorCode TSGetMaxTime(TS ts, PetscReal *maxtime)
2871 {
2872   PetscFunctionBegin;
2873   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
2874   PetscAssertPointer(maxtime, 2);
2875   *maxtime = ts->max_time;
2876   PetscFunctionReturn(PETSC_SUCCESS);
2877 }
2878 
2879 // PetscClangLinter pragma disable: -fdoc-*
2880 /*@
2881   TSSetInitialTimeStep - Deprecated, use `TSSetTime()` and `TSSetTimeStep()`.
2882 
2883   Level: deprecated
2884 
2885 @*/
2886 PetscErrorCode TSSetInitialTimeStep(TS ts, PetscReal initial_time, PetscReal time_step)
2887 {
2888   PetscFunctionBegin;
2889   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
2890   PetscCall(TSSetTime(ts, initial_time));
2891   PetscCall(TSSetTimeStep(ts, time_step));
2892   PetscFunctionReturn(PETSC_SUCCESS);
2893 }
2894 
2895 // PetscClangLinter pragma disable: -fdoc-*
2896 /*@
2897   TSGetDuration - Deprecated, use `TSGetMaxSteps()` and `TSGetMaxTime()`.
2898 
2899   Level: deprecated
2900 
2901 @*/
2902 PetscErrorCode TSGetDuration(TS ts, PetscInt *maxsteps, PetscReal *maxtime)
2903 {
2904   PetscFunctionBegin;
2905   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
2906   if (maxsteps) {
2907     PetscAssertPointer(maxsteps, 2);
2908     *maxsteps = ts->max_steps;
2909   }
2910   if (maxtime) {
2911     PetscAssertPointer(maxtime, 3);
2912     *maxtime = ts->max_time;
2913   }
2914   PetscFunctionReturn(PETSC_SUCCESS);
2915 }
2916 
2917 // PetscClangLinter pragma disable: -fdoc-*
2918 /*@
2919   TSSetDuration - Deprecated, use `TSSetMaxSteps()` and `TSSetMaxTime()`.
2920 
2921   Level: deprecated
2922 
2923 @*/
2924 PetscErrorCode TSSetDuration(TS ts, PetscInt maxsteps, PetscReal maxtime)
2925 {
2926   PetscFunctionBegin;
2927   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
2928   PetscValidLogicalCollectiveInt(ts, maxsteps, 2);
2929   PetscValidLogicalCollectiveReal(ts, maxtime, 3);
2930   if (maxsteps >= 0) ts->max_steps = maxsteps;
2931   if (maxtime != (PetscReal)PETSC_DEFAULT) ts->max_time = maxtime;
2932   PetscFunctionReturn(PETSC_SUCCESS);
2933 }
2934 
2935 // PetscClangLinter pragma disable: -fdoc-*
2936 /*@
2937   TSGetTimeStepNumber - Deprecated, use `TSGetStepNumber()`.
2938 
2939   Level: deprecated
2940 
2941 @*/
2942 PetscErrorCode TSGetTimeStepNumber(TS ts, PetscInt *steps)
2943 {
2944   return TSGetStepNumber(ts, steps);
2945 }
2946 
2947 // PetscClangLinter pragma disable: -fdoc-*
2948 /*@
2949   TSGetTotalSteps - Deprecated, use `TSGetStepNumber()`.
2950 
2951   Level: deprecated
2952 
2953 @*/
2954 PetscErrorCode TSGetTotalSteps(TS ts, PetscInt *steps)
2955 {
2956   return TSGetStepNumber(ts, steps);
2957 }
2958 
2959 /*@
2960   TSSetSolution - Sets the initial solution vector
2961   for use by the `TS` routines.
2962 
2963   Logically Collective
2964 
2965   Input Parameters:
2966 + ts - the `TS` context obtained from `TSCreate()`
2967 - u  - the solution vector
2968 
2969   Level: beginner
2970 
2971 .seealso: [](ch_ts), `TS`, `TSSetSolutionFunction()`, `TSGetSolution()`, `TSCreate()`
2972 @*/
2973 PetscErrorCode TSSetSolution(TS ts, Vec u)
2974 {
2975   DM dm;
2976 
2977   PetscFunctionBegin;
2978   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
2979   PetscValidHeaderSpecific(u, VEC_CLASSID, 2);
2980   PetscCall(PetscObjectReference((PetscObject)u));
2981   PetscCall(VecDestroy(&ts->vec_sol));
2982   ts->vec_sol = u;
2983 
2984   PetscCall(TSGetDM(ts, &dm));
2985   PetscCall(DMShellSetGlobalVector(dm, u));
2986   PetscFunctionReturn(PETSC_SUCCESS);
2987 }
2988 
2989 /*@C
2990   TSSetPreStep - Sets the general-purpose function
2991   called once at the beginning of each time step.
2992 
2993   Logically Collective
2994 
2995   Input Parameters:
2996 + ts   - The `TS` context obtained from `TSCreate()`
2997 - func - The function
2998 
2999   Calling sequence of `func`:
3000 . ts - the `TS` context
3001 
3002   Level: intermediate
3003 
3004 .seealso: [](ch_ts), `TS`, `TSSetPreStage()`, `TSSetPostStage()`, `TSSetPostStep()`, `TSStep()`, `TSRestartStep()`
3005 @*/
3006 PetscErrorCode TSSetPreStep(TS ts, PetscErrorCode (*func)(TS ts))
3007 {
3008   PetscFunctionBegin;
3009   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
3010   ts->prestep = func;
3011   PetscFunctionReturn(PETSC_SUCCESS);
3012 }
3013 
3014 /*@
3015   TSPreStep - Runs the user-defined pre-step function provided with `TSSetPreStep()`
3016 
3017   Collective
3018 
3019   Input Parameter:
3020 . ts - The `TS` context obtained from `TSCreate()`
3021 
3022   Level: developer
3023 
3024   Note:
3025   `TSPreStep()` is typically used within time stepping implementations,
3026   so most users would not generally call this routine themselves.
3027 
3028 .seealso: [](ch_ts), `TS`, `TSSetPreStep()`, `TSPreStage()`, `TSPostStage()`, `TSPostStep()`
3029 @*/
3030 PetscErrorCode TSPreStep(TS ts)
3031 {
3032   PetscFunctionBegin;
3033   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
3034   if (ts->prestep) {
3035     Vec              U;
3036     PetscObjectId    idprev;
3037     PetscBool        sameObject;
3038     PetscObjectState sprev, spost;
3039 
3040     PetscCall(TSGetSolution(ts, &U));
3041     PetscCall(PetscObjectGetId((PetscObject)U, &idprev));
3042     PetscCall(PetscObjectStateGet((PetscObject)U, &sprev));
3043     PetscCallBack("TS callback preset", (*ts->prestep)(ts));
3044     PetscCall(TSGetSolution(ts, &U));
3045     PetscCall(PetscObjectCompareId((PetscObject)U, idprev, &sameObject));
3046     PetscCall(PetscObjectStateGet((PetscObject)U, &spost));
3047     if (!sameObject || sprev != spost) PetscCall(TSRestartStep(ts));
3048   }
3049   PetscFunctionReturn(PETSC_SUCCESS);
3050 }
3051 
3052 /*@C
3053   TSSetPreStage - Sets the general-purpose function
3054   called once at the beginning of each stage.
3055 
3056   Logically Collective
3057 
3058   Input Parameters:
3059 + ts   - The `TS` context obtained from `TSCreate()`
3060 - func - The function
3061 
3062   Calling sequence of `func`:
3063 + ts        - the `TS` context
3064 - stagetime - the stage time
3065 
3066   Level: intermediate
3067 
3068   Note:
3069   There may be several stages per time step. If the solve for a given stage fails, the step may be rejected and retried.
3070   The time step number being computed can be queried using `TSGetStepNumber()` and the total size of the step being
3071   attempted can be obtained using `TSGetTimeStep()`. The time at the start of the step is available via `TSGetTime()`.
3072 
3073 .seealso: [](ch_ts), `TS`, `TSSetPostStage()`, `TSSetPreStep()`, `TSSetPostStep()`, `TSGetApplicationContext()`
3074 @*/
3075 PetscErrorCode TSSetPreStage(TS ts, PetscErrorCode (*func)(TS ts, PetscReal stagetime))
3076 {
3077   PetscFunctionBegin;
3078   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
3079   ts->prestage = func;
3080   PetscFunctionReturn(PETSC_SUCCESS);
3081 }
3082 
3083 /*@C
3084   TSSetPostStage - Sets the general-purpose function, provided with `TSSetPostStep()`,
3085   called once at the end of each stage.
3086 
3087   Logically Collective
3088 
3089   Input Parameters:
3090 + ts   - The `TS` context obtained from `TSCreate()`
3091 - func - The function
3092 
3093   Calling sequence of `func`:
3094 + ts         - the `TS` context
3095 . stagetime  - the stage time
3096 . stageindex - the stage index
3097 - Y          - Array of vectors (of size = total number of stages) with the stage solutions
3098 
3099   Level: intermediate
3100 
3101   Note:
3102   There may be several stages per time step. If the solve for a given stage fails, the step may be rejected and retried.
3103   The time step number being computed can be queried using `TSGetStepNumber()` and the total size of the step being
3104   attempted can be obtained using `TSGetTimeStep()`. The time at the start of the step is available via `TSGetTime()`.
3105 
3106 .seealso: [](ch_ts), `TS`, `TSSetPreStage()`, `TSSetPreStep()`, `TSSetPostStep()`, `TSGetApplicationContext()`
3107 @*/
3108 PetscErrorCode TSSetPostStage(TS ts, PetscErrorCode (*func)(TS ts, PetscReal stagetime, PetscInt stageindex, Vec *Y))
3109 {
3110   PetscFunctionBegin;
3111   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
3112   ts->poststage = func;
3113   PetscFunctionReturn(PETSC_SUCCESS);
3114 }
3115 
3116 /*@C
3117   TSSetPostEvaluate - Sets the general-purpose function
3118   called once at the end of each step evaluation.
3119 
3120   Logically Collective
3121 
3122   Input Parameters:
3123 + ts   - The `TS` context obtained from `TSCreate()`
3124 - func - The function
3125 
3126   Calling sequence of `func`:
3127 . ts - the `TS` context
3128 
3129   Level: intermediate
3130 
3131   Note:
3132   Semantically, `TSSetPostEvaluate()` differs from `TSSetPostStep()` since the function it sets is called before event-handling
3133   thus guaranteeing the same solution (computed by the time-stepper) will be passed to it. On the other hand, `TSPostStep()`
3134   may be passed a different solution, possibly changed by the event handler. `TSPostEvaluate()` is called after the next step
3135   solution is evaluated allowing to modify it, if need be. The solution can be obtained with `TSGetSolution()`, the time step
3136   with `TSGetTimeStep()`, and the time at the start of the step is available via `TSGetTime()`
3137 
3138 .seealso: [](ch_ts), `TS`, `TSSetPreStage()`, `TSSetPreStep()`, `TSSetPostStep()`, `TSGetApplicationContext()`
3139 @*/
3140 PetscErrorCode TSSetPostEvaluate(TS ts, PetscErrorCode (*func)(TS ts))
3141 {
3142   PetscFunctionBegin;
3143   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
3144   ts->postevaluate = func;
3145   PetscFunctionReturn(PETSC_SUCCESS);
3146 }
3147 
3148 /*@
3149   TSPreStage - Runs the user-defined pre-stage function set using `TSSetPreStage()`
3150 
3151   Collective
3152 
3153   Input Parameters:
3154 + ts        - The `TS` context obtained from `TSCreate()`
3155 - stagetime - The absolute time of the current stage
3156 
3157   Level: developer
3158 
3159   Note:
3160   `TSPreStage()` is typically used within time stepping implementations,
3161   most users would not generally call this routine themselves.
3162 
3163 .seealso: [](ch_ts), `TS`, `TSPostStage()`, `TSSetPreStep()`, `TSPreStep()`, `TSPostStep()`
3164 @*/
3165 PetscErrorCode TSPreStage(TS ts, PetscReal stagetime)
3166 {
3167   PetscFunctionBegin;
3168   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
3169   if (ts->prestage) PetscCallBack("TS callback prestage", (*ts->prestage)(ts, stagetime));
3170   PetscFunctionReturn(PETSC_SUCCESS);
3171 }
3172 
3173 /*@
3174   TSPostStage - Runs the user-defined post-stage function set using `TSSetPostStage()`
3175 
3176   Collective
3177 
3178   Input Parameters:
3179 + ts         - The `TS` context obtained from `TSCreate()`
3180 . stagetime  - The absolute time of the current stage
3181 . stageindex - Stage number
3182 - Y          - Array of vectors (of size = total number of stages) with the stage solutions
3183 
3184   Level: developer
3185 
3186   Note:
3187   `TSPostStage()` is typically used within time stepping implementations,
3188   most users would not generally call this routine themselves.
3189 
3190 .seealso: [](ch_ts), `TS`, `TSPreStage()`, `TSSetPreStep()`, `TSPreStep()`, `TSPostStep()`
3191 @*/
3192 PetscErrorCode TSPostStage(TS ts, PetscReal stagetime, PetscInt stageindex, Vec *Y)
3193 {
3194   PetscFunctionBegin;
3195   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
3196   if (ts->poststage) PetscCallBack("TS callback poststage", (*ts->poststage)(ts, stagetime, stageindex, Y));
3197   PetscFunctionReturn(PETSC_SUCCESS);
3198 }
3199 
3200 /*@
3201   TSPostEvaluate - Runs the user-defined post-evaluate function set using `TSSetPostEvaluate()`
3202 
3203   Collective
3204 
3205   Input Parameter:
3206 . ts - The `TS` context obtained from `TSCreate()`
3207 
3208   Level: developer
3209 
3210   Note:
3211   `TSPostEvaluate()` is typically used within time stepping implementations,
3212   most users would not generally call this routine themselves.
3213 
3214 .seealso: [](ch_ts), `TS`, `TSSetPostEvaluate()`, `TSSetPreStep()`, `TSPreStep()`, `TSPostStep()`
3215 @*/
3216 PetscErrorCode TSPostEvaluate(TS ts)
3217 {
3218   PetscFunctionBegin;
3219   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
3220   if (ts->postevaluate) {
3221     Vec              U;
3222     PetscObjectState sprev, spost;
3223 
3224     PetscCall(TSGetSolution(ts, &U));
3225     PetscCall(PetscObjectStateGet((PetscObject)U, &sprev));
3226     PetscCallBack("TS callback postevaluate", (*ts->postevaluate)(ts));
3227     PetscCall(PetscObjectStateGet((PetscObject)U, &spost));
3228     if (sprev != spost) PetscCall(TSRestartStep(ts));
3229   }
3230   PetscFunctionReturn(PETSC_SUCCESS);
3231 }
3232 
3233 /*@C
3234   TSSetPostStep - Sets the general-purpose function
3235   called once at the end of each time step.
3236 
3237   Logically Collective
3238 
3239   Input Parameters:
3240 + ts   - The `TS` context obtained from `TSCreate()`
3241 - func - The function
3242 
3243   Calling sequence of `func`:
3244 . ts - the `TS` context
3245 
3246   Level: intermediate
3247 
3248   Note:
3249   The function set by `TSSetPostStep()` is called after each successful step. The solution vector
3250   obtained by `TSGetSolution()` may be different than that computed at the step end if the event handler
3251   locates an event and `TSPostEvent()` modifies it. Use `TSSetPostEvaluate()` if an unmodified solution is needed instead.
3252 
3253 .seealso: [](ch_ts), `TS`, `TSSetPreStep()`, `TSSetPreStage()`, `TSSetPostEvaluate()`, `TSGetTimeStep()`, `TSGetStepNumber()`, `TSGetTime()`, `TSRestartStep()`
3254 @*/
3255 PetscErrorCode TSSetPostStep(TS ts, PetscErrorCode (*func)(TS ts))
3256 {
3257   PetscFunctionBegin;
3258   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
3259   ts->poststep = func;
3260   PetscFunctionReturn(PETSC_SUCCESS);
3261 }
3262 
3263 /*@
3264   TSPostStep - Runs the user-defined post-step function that was set with `TSSetPostStep()`
3265 
3266   Collective
3267 
3268   Input Parameter:
3269 . ts - The `TS` context obtained from `TSCreate()`
3270 
3271   Note:
3272   `TSPostStep()` is typically used within time stepping implementations,
3273   so most users would not generally call this routine themselves.
3274 
3275   Level: developer
3276 
3277 .seealso: [](ch_ts), `TS`, `TSSetPreStep()`, `TSSetPreStage()`, `TSSetPostEvaluate()`, `TSGetTimeStep()`, `TSGetStepNumber()`, `TSGetTime()`, `TSSetPotsStep()`
3278 @*/
3279 PetscErrorCode TSPostStep(TS ts)
3280 {
3281   PetscFunctionBegin;
3282   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
3283   if (ts->poststep) {
3284     Vec              U;
3285     PetscObjectId    idprev;
3286     PetscBool        sameObject;
3287     PetscObjectState sprev, spost;
3288 
3289     PetscCall(TSGetSolution(ts, &U));
3290     PetscCall(PetscObjectGetId((PetscObject)U, &idprev));
3291     PetscCall(PetscObjectStateGet((PetscObject)U, &sprev));
3292     PetscCallBack("TS callback poststep", (*ts->poststep)(ts));
3293     PetscCall(TSGetSolution(ts, &U));
3294     PetscCall(PetscObjectCompareId((PetscObject)U, idprev, &sameObject));
3295     PetscCall(PetscObjectStateGet((PetscObject)U, &spost));
3296     if (!sameObject || sprev != spost) PetscCall(TSRestartStep(ts));
3297   }
3298   PetscFunctionReturn(PETSC_SUCCESS);
3299 }
3300 
3301 /*@
3302   TSInterpolate - Interpolate the solution computed during the previous step to an arbitrary location in the interval
3303 
3304   Collective
3305 
3306   Input Parameters:
3307 + ts - time stepping context
3308 - t  - time to interpolate to
3309 
3310   Output Parameter:
3311 . U - state at given time
3312 
3313   Level: intermediate
3314 
3315   Developer Notes:
3316   `TSInterpolate()` and the storing of previous steps/stages should be generalized to support delay differential equations and continuous adjoints.
3317 
3318 .seealso: [](ch_ts), `TS`, `TSSetExactFinalTime()`, `TSSolve()`
3319 @*/
3320 PetscErrorCode TSInterpolate(TS ts, PetscReal t, Vec U)
3321 {
3322   PetscFunctionBegin;
3323   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
3324   PetscValidHeaderSpecific(U, VEC_CLASSID, 3);
3325   PetscCheck(t >= ts->ptime_prev && t <= ts->ptime, PetscObjectComm((PetscObject)ts), PETSC_ERR_ARG_OUTOFRANGE, "Requested time %g not in last time steps [%g,%g]", (double)t, (double)ts->ptime_prev, (double)ts->ptime);
3326   PetscUseTypeMethod(ts, interpolate, t, U);
3327   PetscFunctionReturn(PETSC_SUCCESS);
3328 }
3329 
3330 /*@
3331   TSStep - Steps one time step
3332 
3333   Collective
3334 
3335   Input Parameter:
3336 . ts - the `TS` context obtained from `TSCreate()`
3337 
3338   Level: developer
3339 
3340   Notes:
3341   The public interface for the ODE/DAE solvers is `TSSolve()`, you should almost for sure be using that routine and not this routine.
3342 
3343   The hook set using `TSSetPreStep()` is called before each attempt to take the step. In general, the time step size may
3344   be changed due to adaptive error controller or solve failures. Note that steps may contain multiple stages.
3345 
3346   This may over-step the final time provided in `TSSetMaxTime()` depending on the time-step used. `TSSolve()` interpolates to exactly the
3347   time provided in `TSSetMaxTime()`. One can use `TSInterpolate()` to determine an interpolated solution within the final timestep.
3348 
3349 .seealso: [](ch_ts), `TS`, `TSCreate()`, `TSSetUp()`, `TSDestroy()`, `TSSolve()`, `TSSetPreStep()`, `TSSetPreStage()`, `TSSetPostStage()`, `TSInterpolate()`
3350 @*/
3351 PetscErrorCode TSStep(TS ts)
3352 {
3353   static PetscBool cite = PETSC_FALSE;
3354   PetscReal        ptime;
3355 
3356   PetscFunctionBegin;
3357   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
3358   PetscCall(PetscCitationsRegister("@article{tspaper,\n"
3359                                    "  title         = {{PETSc/TS}: A Modern Scalable {DAE/ODE} Solver Library},\n"
3360                                    "  author        = {Abhyankar, Shrirang and Brown, Jed and Constantinescu, Emil and Ghosh, Debojyoti and Smith, Barry F. and Zhang, Hong},\n"
3361                                    "  journal       = {arXiv e-preprints},\n"
3362                                    "  eprint        = {1806.01437},\n"
3363                                    "  archivePrefix = {arXiv},\n"
3364                                    "  year          = {2018}\n}\n",
3365                                    &cite));
3366   PetscCall(TSSetUp(ts));
3367   PetscCall(TSTrajectorySetUp(ts->trajectory, ts));
3368   if (ts->tspan)
3369     ts->tspan->worktol = 0; /* In each step of TSSolve() 'tspan->worktol' will be meaningfully defined (later) only once:
3370                                                    in TSAdaptChoose() or TSEvent_dt_cap(), and then reused till the end of the step */
3371 
3372   PetscCheck(ts->max_time < PETSC_MAX_REAL || ts->max_steps != PETSC_MAX_INT, PetscObjectComm((PetscObject)ts), PETSC_ERR_ARG_WRONGSTATE, "You must call TSSetMaxTime() or TSSetMaxSteps(), or use -ts_max_time <time> or -ts_max_steps <steps>");
3373   PetscCheck(ts->exact_final_time != TS_EXACTFINALTIME_UNSPECIFIED, PetscObjectComm((PetscObject)ts), PETSC_ERR_ARG_WRONGSTATE, "You must call TSSetExactFinalTime() or use -ts_exact_final_time <stepover,interpolate,matchstep> before calling TSStep()");
3374   PetscCheck(ts->exact_final_time != TS_EXACTFINALTIME_MATCHSTEP || ts->adapt, PetscObjectComm((PetscObject)ts), PETSC_ERR_SUP, "Since TS is not adaptive you cannot use TS_EXACTFINALTIME_MATCHSTEP, suggest TS_EXACTFINALTIME_INTERPOLATE");
3375 
3376   if (!ts->steps) ts->ptime_prev = ts->ptime;
3377   ptime                   = ts->ptime;
3378   ts->ptime_prev_rollback = ts->ptime_prev;
3379   ts->reason              = TS_CONVERGED_ITERATING;
3380 
3381   PetscCall(PetscLogEventBegin(TS_Step, ts, 0, 0, 0));
3382   PetscUseTypeMethod(ts, step);
3383   PetscCall(PetscLogEventEnd(TS_Step, ts, 0, 0, 0));
3384 
3385   if (ts->reason >= 0) {
3386     ts->ptime_prev = ptime;
3387     ts->steps++;
3388     ts->steprollback = PETSC_FALSE;
3389     ts->steprestart  = PETSC_FALSE;
3390   }
3391   if (!ts->reason) {
3392     if (ts->steps >= ts->max_steps) ts->reason = TS_CONVERGED_ITS;
3393     else if (ts->ptime >= ts->max_time) ts->reason = TS_CONVERGED_TIME;
3394   }
3395 
3396   if (ts->reason < 0 && ts->errorifstepfailed) {
3397     PetscCall(TSMonitorCancel(ts));
3398     PetscCheck(ts->reason != TS_DIVERGED_NONLINEAR_SOLVE, PetscObjectComm((PetscObject)ts), PETSC_ERR_NOT_CONVERGED, "TSStep has failed due to %s, increase -ts_max_snes_failures or make negative to attempt recovery", TSConvergedReasons[ts->reason]);
3399     SETERRQ(PetscObjectComm((PetscObject)ts), PETSC_ERR_NOT_CONVERGED, "TSStep has failed due to %s", TSConvergedReasons[ts->reason]);
3400   }
3401   PetscFunctionReturn(PETSC_SUCCESS);
3402 }
3403 
3404 /*@
3405   TSEvaluateWLTE - Evaluate the weighted local truncation error norm
3406   at the end of a time step with a given order of accuracy.
3407 
3408   Collective
3409 
3410   Input Parameters:
3411 + ts        - time stepping context
3412 - wnormtype - norm type, either `NORM_2` or `NORM_INFINITY`
3413 
3414   Input/Output Parameter:
3415 . order - optional, desired order for the error evaluation or `PETSC_DECIDE`;
3416            on output, the actual order of the error evaluation
3417 
3418   Output Parameter:
3419 . wlte - the weighted local truncation error norm
3420 
3421   Level: advanced
3422 
3423   Note:
3424   If the timestepper cannot evaluate the error in a particular step
3425   (eg. in the first step or restart steps after event handling),
3426   this routine returns wlte=-1.0 .
3427 
3428 .seealso: [](ch_ts), `TS`, `TSStep()`, `TSAdapt`, `TSErrorWeightedNorm()`
3429 @*/
3430 PetscErrorCode TSEvaluateWLTE(TS ts, NormType wnormtype, PetscInt *order, PetscReal *wlte)
3431 {
3432   PetscFunctionBegin;
3433   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
3434   PetscValidType(ts, 1);
3435   PetscValidLogicalCollectiveEnum(ts, wnormtype, 2);
3436   if (order) PetscAssertPointer(order, 3);
3437   if (order) PetscValidLogicalCollectiveInt(ts, *order, 3);
3438   PetscAssertPointer(wlte, 4);
3439   PetscCheck(wnormtype == NORM_2 || wnormtype == NORM_INFINITY, PetscObjectComm((PetscObject)ts), PETSC_ERR_SUP, "No support for norm type %s", NormTypes[wnormtype]);
3440   PetscUseTypeMethod(ts, evaluatewlte, wnormtype, order, wlte);
3441   PetscFunctionReturn(PETSC_SUCCESS);
3442 }
3443 
3444 /*@
3445   TSEvaluateStep - Evaluate the solution at the end of a time step with a given order of accuracy.
3446 
3447   Collective
3448 
3449   Input Parameters:
3450 + ts    - time stepping context
3451 . order - desired order of accuracy
3452 - done  - whether the step was evaluated at this order (pass `NULL` to generate an error if not available)
3453 
3454   Output Parameter:
3455 . U - state at the end of the current step
3456 
3457   Level: advanced
3458 
3459   Notes:
3460   This function cannot be called until all stages have been evaluated.
3461 
3462   It is normally called by adaptive controllers before a step has been accepted and may also be called by the user after `TSStep()` has returned.
3463 
3464 .seealso: [](ch_ts), `TS`, `TSStep()`, `TSAdapt`
3465 @*/
3466 PetscErrorCode TSEvaluateStep(TS ts, PetscInt order, Vec U, PetscBool *done)
3467 {
3468   PetscFunctionBegin;
3469   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
3470   PetscValidType(ts, 1);
3471   PetscValidHeaderSpecific(U, VEC_CLASSID, 3);
3472   PetscUseTypeMethod(ts, evaluatestep, order, U, done);
3473   PetscFunctionReturn(PETSC_SUCCESS);
3474 }
3475 
3476 /*@C
3477   TSGetComputeInitialCondition - Get the function used to automatically compute an initial condition for the timestepping.
3478 
3479   Not collective
3480 
3481   Input Parameter:
3482 . ts - time stepping context
3483 
3484   Output Parameter:
3485 . initCondition - The function which computes an initial condition
3486 
3487   Calling sequence of `initCondition`:
3488 + ts - The timestepping context
3489 - u  - The input vector in which the initial condition is stored
3490 
3491   Level: advanced
3492 
3493 .seealso: [](ch_ts), `TS`, `TSSetComputeInitialCondition()`, `TSComputeInitialCondition()`
3494 @*/
3495 PetscErrorCode TSGetComputeInitialCondition(TS ts, PetscErrorCode (**initCondition)(TS ts, Vec u))
3496 {
3497   PetscFunctionBegin;
3498   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
3499   PetscAssertPointer(initCondition, 2);
3500   *initCondition = ts->ops->initcondition;
3501   PetscFunctionReturn(PETSC_SUCCESS);
3502 }
3503 
3504 /*@C
3505   TSSetComputeInitialCondition - Set the function used to automatically compute an initial condition for the timestepping.
3506 
3507   Logically collective
3508 
3509   Input Parameters:
3510 + ts            - time stepping context
3511 - initCondition - The function which computes an initial condition
3512 
3513   Calling sequence of `initCondition`:
3514 + ts - The timestepping context
3515 - e  - The input vector in which the initial condition is to be stored
3516 
3517   Level: advanced
3518 
3519 .seealso: [](ch_ts), `TS`, `TSGetComputeInitialCondition()`, `TSComputeInitialCondition()`
3520 @*/
3521 PetscErrorCode TSSetComputeInitialCondition(TS ts, PetscErrorCode (*initCondition)(TS ts, Vec e))
3522 {
3523   PetscFunctionBegin;
3524   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
3525   PetscValidFunction(initCondition, 2);
3526   ts->ops->initcondition = initCondition;
3527   PetscFunctionReturn(PETSC_SUCCESS);
3528 }
3529 
3530 /*@
3531   TSComputeInitialCondition - Compute an initial condition for the timestepping using the function previously set with `TSSetComputeInitialCondition()`
3532 
3533   Collective
3534 
3535   Input Parameters:
3536 + ts - time stepping context
3537 - u  - The `Vec` to store the condition in which will be used in `TSSolve()`
3538 
3539   Level: advanced
3540 
3541 .seealso: [](ch_ts), `TS`, `TSGetComputeInitialCondition()`, `TSSetComputeInitialCondition()`, `TSSolve()`
3542 @*/
3543 PetscErrorCode TSComputeInitialCondition(TS ts, Vec u)
3544 {
3545   PetscFunctionBegin;
3546   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
3547   PetscValidHeaderSpecific(u, VEC_CLASSID, 2);
3548   PetscTryTypeMethod(ts, initcondition, u);
3549   PetscFunctionReturn(PETSC_SUCCESS);
3550 }
3551 
3552 /*@C
3553   TSGetComputeExactError - Get the function used to automatically compute the exact error for the timestepping.
3554 
3555   Not collective
3556 
3557   Input Parameter:
3558 . ts - time stepping context
3559 
3560   Output Parameter:
3561 . exactError - The function which computes the solution error
3562 
3563   Calling sequence of `exactError`:
3564 + ts - The timestepping context
3565 . u  - The approximate solution vector
3566 - e  - The vector in which the error is stored
3567 
3568   Level: advanced
3569 
3570 .seealso: [](ch_ts), `TS`, `TSComputeExactError()`
3571 @*/
3572 PetscErrorCode TSGetComputeExactError(TS ts, PetscErrorCode (**exactError)(TS ts, Vec u, Vec e))
3573 {
3574   PetscFunctionBegin;
3575   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
3576   PetscAssertPointer(exactError, 2);
3577   *exactError = ts->ops->exacterror;
3578   PetscFunctionReturn(PETSC_SUCCESS);
3579 }
3580 
3581 /*@C
3582   TSSetComputeExactError - Set the function used to automatically compute the exact error for the timestepping.
3583 
3584   Logically collective
3585 
3586   Input Parameters:
3587 + ts         - time stepping context
3588 - exactError - The function which computes the solution error
3589 
3590   Calling sequence of `exactError`:
3591 + ts - The timestepping context
3592 . u  - The approximate solution vector
3593 - e  - The  vector in which the error is stored
3594 
3595   Level: advanced
3596 
3597 .seealso: [](ch_ts), `TS`, `TSGetComputeExactError()`, `TSComputeExactError()`
3598 @*/
3599 PetscErrorCode TSSetComputeExactError(TS ts, PetscErrorCode (*exactError)(TS ts, Vec u, Vec e))
3600 {
3601   PetscFunctionBegin;
3602   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
3603   PetscValidFunction(exactError, 2);
3604   ts->ops->exacterror = exactError;
3605   PetscFunctionReturn(PETSC_SUCCESS);
3606 }
3607 
3608 /*@
3609   TSComputeExactError - Compute the solution error for the timestepping using the function previously set with `TSSetComputeExactError()`
3610 
3611   Collective
3612 
3613   Input Parameters:
3614 + ts - time stepping context
3615 . u  - The approximate solution
3616 - e  - The `Vec` used to store the error
3617 
3618   Level: advanced
3619 
3620 .seealso: [](ch_ts), `TS`, `TSGetComputeInitialCondition()`, `TSSetComputeInitialCondition()`, `TSSolve()`
3621 @*/
3622 PetscErrorCode TSComputeExactError(TS ts, Vec u, Vec e)
3623 {
3624   PetscFunctionBegin;
3625   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
3626   PetscValidHeaderSpecific(u, VEC_CLASSID, 2);
3627   PetscValidHeaderSpecific(e, VEC_CLASSID, 3);
3628   PetscTryTypeMethod(ts, exacterror, u, e);
3629   PetscFunctionReturn(PETSC_SUCCESS);
3630 }
3631 
3632 /*@C
3633   TSSetResize - Sets the resize callbacks.
3634 
3635   Logically Collective
3636 
3637   Input Parameters:
3638 + ts       - The `TS` context obtained from `TSCreate()`
3639 . setup    - The setup function
3640 . transfer - The transfer function
3641 - ctx      - [optional] The user-defined context
3642 
3643   Calling sequence of `setup`:
3644 + ts     - the `TS` context
3645 . step   - the current step
3646 . time   - the current time
3647 . state  - the current vector of state
3648 . resize - (output parameter) `PETSC_TRUE` if need resizing, `PETSC_FALSE` otherwise
3649 - ctx    - user defined context
3650 
3651   Calling sequence of `transfer`:
3652 + ts      - the `TS` context
3653 . nv      - the number of vectors to be transferred
3654 . vecsin  - array of vectors to be transferred
3655 . vecsout - array of transferred vectors
3656 - ctx     - user defined context
3657 
3658   Notes:
3659   The `setup` function is called inside `TSSolve()` after `TSPostStep()` at the end of each time step
3660   to determine if the problem size has changed.
3661   If it is the case, the solver will collect the needed vectors that need to be
3662   transferred from the old to the new sizes using `transfer`. These vectors will include the current
3663   solution vector, and other vectors needed by the specific solver used.
3664   For example, `TSBDF` uses previous solutions vectors to solve for the next time step.
3665   Other application specific objects associated with the solver, i.e. Jacobian matrices and `DM`,
3666   will be automatically reset if the sizes are changed and they must be specified again by the user
3667   inside the `transfer` function.
3668   The input and output arrays passed to `transfer` are allocated by PETSc.
3669   Vectors in `vecsout` must be created by the user.
3670   Ownership of vectors in `vecsout` is transferred to PETSc.
3671 
3672   Level: advanced
3673 
3674 .seealso: [](ch_ts), `TS`, `TSSetDM()`, `TSSetIJacobian()`, `TSSetRHSJacobian()`
3675 @*/
3676 PetscErrorCode TSSetResize(TS ts, PetscErrorCode (*setup)(TS ts, PetscInt step, PetscReal time, Vec state, PetscBool *resize, void *ctx), PetscErrorCode (*transfer)(TS ts, PetscInt nv, Vec vecsin[], Vec vecsout[], void *ctx), void *ctx)
3677 {
3678   PetscFunctionBegin;
3679   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
3680   ts->resizesetup    = setup;
3681   ts->resizetransfer = transfer;
3682   ts->resizectx      = ctx;
3683   PetscFunctionReturn(PETSC_SUCCESS);
3684 }
3685 
3686 /*
3687   TSResizeRegisterOrRetrieve - Register or import vectors transferred with `TSResize()`.
3688 
3689   Collective
3690 
3691   Input Parameters:
3692 + ts   - The `TS` context obtained from `TSCreate()`
3693 - flg - If `PETSC_TRUE` each TS implementation (e.g. `TSBDF`) will register vectors to be transferred, if `PETSC_FALSE` vectors will be imported from transferred vectors.
3694 
3695   Level: developer
3696 
3697   Note:
3698   `TSResizeRegisterOrRetrieve()` is declared PETSC_INTERN since it is
3699    used within time stepping implementations,
3700    so most users would not generally call this routine themselves.
3701 
3702 .seealso: [](ch_ts), `TS`, `TSSetResize()`
3703 @*/
3704 static PetscErrorCode TSResizeRegisterOrRetrieve(TS ts, PetscBool flg)
3705 {
3706   PetscFunctionBegin;
3707   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
3708   PetscTryTypeMethod(ts, resizeregister, flg);
3709   /* PetscTryTypeMethod(adapt, resizeregister, flg); */
3710   PetscFunctionReturn(PETSC_SUCCESS);
3711 }
3712 
3713 static PetscErrorCode TSResizeReset(TS ts)
3714 {
3715   PetscFunctionBegin;
3716   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
3717   PetscCall(PetscObjectListDestroy(&ts->resizetransferobjs));
3718   PetscFunctionReturn(PETSC_SUCCESS);
3719 }
3720 
3721 static PetscErrorCode TSResizeTransferVecs(TS ts, PetscInt cnt, Vec vecsin[], Vec vecsout[])
3722 {
3723   PetscFunctionBegin;
3724   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
3725   PetscValidLogicalCollectiveInt(ts, cnt, 2);
3726   for (PetscInt i = 0; i < cnt; i++) PetscCall(VecLockReadPush(vecsin[i]));
3727   if (ts->resizetransfer) {
3728     PetscCall(PetscInfo(ts, "Transferring %" PetscInt_FMT " vectors\n", cnt));
3729     PetscCallBack("TS callback resize transfer", (*ts->resizetransfer)(ts, cnt, vecsin, vecsout, ts->resizectx));
3730   }
3731   for (PetscInt i = 0; i < cnt; i++) PetscCall(VecLockReadPop(vecsin[i]));
3732   PetscFunctionReturn(PETSC_SUCCESS);
3733 }
3734 
3735 /*@C
3736   TSResizeRegisterVec - Register a vector to be transferred with `TSResize()`.
3737 
3738   Collective
3739 
3740   Input Parameters:
3741 + ts   - The `TS` context obtained from `TSCreate()`
3742 . name - A string identifying the vector
3743 - vec  - The vector
3744 
3745   Level: developer
3746 
3747   Note:
3748   `TSResizeRegisterVec()` is typically used within time stepping implementations,
3749   so most users would not generally call this routine themselves.
3750 
3751 .seealso: [](ch_ts), `TS`, `TSSetResize()`, `TSResize()`, `TSResizeRetrieveVec()`
3752 @*/
3753 PetscErrorCode TSResizeRegisterVec(TS ts, const char *name, Vec vec)
3754 {
3755   PetscFunctionBegin;
3756   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
3757   PetscAssertPointer(name, 2);
3758   if (vec) PetscValidHeaderSpecific(vec, VEC_CLASSID, 3);
3759   PetscCall(PetscObjectListAdd(&ts->resizetransferobjs, name, (PetscObject)vec));
3760   PetscFunctionReturn(PETSC_SUCCESS);
3761 }
3762 
3763 /*@C
3764   TSResizeRetrieveVec - Retrieve a vector registered with `TSResizeRegisterVec()`.
3765 
3766   Collective
3767 
3768   Input Parameters:
3769 + ts   - The `TS` context obtained from `TSCreate()`
3770 . name - A string identifying the vector
3771 - vec  - The vector
3772 
3773   Level: developer
3774 
3775   Note:
3776   `TSResizeRetrieveVec()` is typically used within time stepping implementations,
3777   so most users would not generally call this routine themselves.
3778 
3779 .seealso: [](ch_ts), `TS`, `TSSetResize()`, `TSResize()`, `TSResizeRegisterVec()`
3780 @*/
3781 PetscErrorCode TSResizeRetrieveVec(TS ts, const char *name, Vec *vec)
3782 {
3783   PetscFunctionBegin;
3784   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
3785   PetscAssertPointer(name, 2);
3786   PetscAssertPointer(vec, 3);
3787   PetscCall(PetscObjectListFind(ts->resizetransferobjs, name, (PetscObject *)vec));
3788   PetscFunctionReturn(PETSC_SUCCESS);
3789 }
3790 
3791 static PetscErrorCode TSResizeGetVecArray(TS ts, PetscInt *nv, const char **names[], Vec *vecs[])
3792 {
3793   PetscInt        cnt;
3794   PetscObjectList tmp;
3795   Vec            *vecsin  = NULL;
3796   const char    **namesin = NULL;
3797 
3798   PetscFunctionBegin;
3799   for (tmp = ts->resizetransferobjs, cnt = 0; tmp; tmp = tmp->next)
3800     if (tmp->obj && tmp->obj->classid == VEC_CLASSID) cnt++;
3801   if (names) PetscCall(PetscMalloc1(cnt, &vecsin));
3802   if (vecs) PetscCall(PetscMalloc1(cnt, &namesin));
3803   for (tmp = ts->resizetransferobjs, cnt = 0; tmp; tmp = tmp->next) {
3804     if (tmp->obj && tmp->obj->classid == VEC_CLASSID) {
3805       if (vecs) vecsin[cnt] = (Vec)tmp->obj;
3806       if (names) namesin[cnt] = tmp->name;
3807       cnt++;
3808     }
3809   }
3810   if (nv) *nv = cnt;
3811   if (names) *names = namesin;
3812   if (vecs) *vecs = vecsin;
3813   PetscFunctionReturn(PETSC_SUCCESS);
3814 }
3815 
3816 /*@
3817   TSResize - Runs the user-defined transfer functions provided with `TSSetResize()`
3818 
3819   Collective
3820 
3821   Input Parameter:
3822 . ts - The `TS` context obtained from `TSCreate()`
3823 
3824   Level: developer
3825 
3826   Note:
3827   `TSResize()` is typically used within time stepping implementations,
3828   so most users would not generally call this routine themselves.
3829 
3830 .seealso: [](ch_ts), `TS`, `TSSetResize()`
3831 @*/
3832 PetscErrorCode TSResize(TS ts)
3833 {
3834   PetscInt     nv      = 0;
3835   const char **names   = NULL;
3836   Vec         *vecsin  = NULL;
3837   const char  *solname = "ts:vec_sol";
3838 
3839   PetscFunctionBegin;
3840   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
3841   if (ts->resizesetup) {
3842     PetscBool flg = PETSC_FALSE;
3843 
3844     PetscCall(VecLockReadPush(ts->vec_sol));
3845     PetscCallBack("TS callback resize setup", (*ts->resizesetup)(ts, ts->steps, ts->ptime, ts->vec_sol, &flg, ts->resizectx));
3846     PetscCall(VecLockReadPop(ts->vec_sol));
3847     if (flg) {
3848       PetscCall(TSResizeRegisterVec(ts, solname, ts->vec_sol));
3849       PetscCall(TSResizeRegisterOrRetrieve(ts, PETSC_TRUE)); /* specific impls register their own objects */
3850     }
3851   }
3852 
3853   PetscCall(TSResizeGetVecArray(ts, &nv, &names, &vecsin));
3854   if (nv) {
3855     Vec *vecsout, vecsol;
3856 
3857     /* Reset internal objects */
3858     PetscCall(TSReset(ts));
3859 
3860     /* Transfer needed vectors (users can call SetJacobian, SetDM here) */
3861     PetscCall(PetscCalloc1(nv, &vecsout));
3862     PetscCall(TSResizeTransferVecs(ts, nv, vecsin, vecsout));
3863     for (PetscInt i = 0; i < nv; i++) {
3864       PetscCall(TSResizeRegisterVec(ts, names[i], vecsout[i]));
3865       PetscCall(VecDestroy(&vecsout[i]));
3866     }
3867     PetscCall(PetscFree(vecsout));
3868     PetscCall(TSResizeRegisterOrRetrieve(ts, PETSC_FALSE)); /* specific impls import the transferred objects */
3869 
3870     PetscCall(TSResizeRetrieveVec(ts, solname, &vecsol));
3871     if (vecsol) PetscCall(TSSetSolution(ts, vecsol));
3872     PetscAssert(ts->vec_sol, PetscObjectComm((PetscObject)ts), PETSC_ERR_ARG_NULL, "Missing TS solution");
3873   }
3874 
3875   PetscCall(PetscFree(names));
3876   PetscCall(PetscFree(vecsin));
3877   PetscCall(TSResizeReset(ts));
3878   PetscFunctionReturn(PETSC_SUCCESS);
3879 }
3880 
3881 /*@
3882   TSSolve - Steps the requested number of timesteps.
3883 
3884   Collective
3885 
3886   Input Parameters:
3887 + ts - the `TS` context obtained from `TSCreate()`
3888 - u  - the solution vector  (can be null if `TSSetSolution()` was used and `TSSetExactFinalTime`(ts,`TS_EXACTFINALTIME_MATCHSTEP`) was not used,
3889                              otherwise must contain the initial conditions and will contain the solution at the final requested time
3890 
3891   Level: beginner
3892 
3893   Notes:
3894   The final time returned by this function may be different from the time of the internally
3895   held state accessible by `TSGetSolution()` and `TSGetTime()` because the method may have
3896   stepped over the final time.
3897 
3898 .seealso: [](ch_ts), `TS`, `TSCreate()`, `TSSetSolution()`, `TSStep()`, `TSGetTime()`, `TSGetSolveTime()`
3899 @*/
3900 PetscErrorCode TSSolve(TS ts, Vec u)
3901 {
3902   Vec solution;
3903 
3904   PetscFunctionBegin;
3905   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
3906   if (u) PetscValidHeaderSpecific(u, VEC_CLASSID, 2);
3907 
3908   PetscCall(TSSetExactFinalTimeDefault(ts));
3909   if (ts->exact_final_time == TS_EXACTFINALTIME_INTERPOLATE && u) { /* Need ts->vec_sol to be distinct so it is not overwritten when we interpolate at the end */
3910     if (!ts->vec_sol || u == ts->vec_sol) {
3911       PetscCall(VecDuplicate(u, &solution));
3912       PetscCall(TSSetSolution(ts, solution));
3913       PetscCall(VecDestroy(&solution)); /* grant ownership */
3914     }
3915     PetscCall(VecCopy(u, ts->vec_sol));
3916     PetscCheck(!ts->forward_solve, PetscObjectComm((PetscObject)ts), PETSC_ERR_SUP, "Sensitivity analysis does not support the mode TS_EXACTFINALTIME_INTERPOLATE");
3917   } else if (u) PetscCall(TSSetSolution(ts, u));
3918   PetscCall(TSSetUp(ts));
3919   PetscCall(TSTrajectorySetUp(ts->trajectory, ts));
3920 
3921   PetscCheck(ts->max_time < PETSC_MAX_REAL || ts->max_steps != PETSC_MAX_INT, PetscObjectComm((PetscObject)ts), PETSC_ERR_ARG_WRONGSTATE, "You must call TSSetMaxTime() or TSSetMaxSteps(), or use -ts_max_time <time> or -ts_max_steps <steps>");
3922   PetscCheck(ts->exact_final_time != TS_EXACTFINALTIME_UNSPECIFIED, PetscObjectComm((PetscObject)ts), PETSC_ERR_ARG_WRONGSTATE, "You must call TSSetExactFinalTime() or use -ts_exact_final_time <stepover,interpolate,matchstep> before calling TSSolve()");
3923   PetscCheck(ts->exact_final_time != TS_EXACTFINALTIME_MATCHSTEP || ts->adapt, PetscObjectComm((PetscObject)ts), PETSC_ERR_SUP, "Since TS is not adaptive you cannot use TS_EXACTFINALTIME_MATCHSTEP, suggest TS_EXACTFINALTIME_INTERPOLATE");
3924   PetscCheck(!(ts->tspan && ts->exact_final_time != TS_EXACTFINALTIME_MATCHSTEP), PetscObjectComm((PetscObject)ts), PETSC_ERR_SUP, "You must use TS_EXACTFINALTIME_MATCHSTEP when using time span");
3925 
3926   if (ts->tspan && PetscIsCloseAtTol(ts->ptime, ts->tspan->span_times[0], ts->tspan->reltol * ts->time_step + ts->tspan->abstol, 0)) { /* starting point in time span */
3927     PetscCall(VecCopy(ts->vec_sol, ts->tspan->vecs_sol[0]));
3928     ts->tspan->spanctr = 1;
3929   }
3930 
3931   if (ts->forward_solve) PetscCall(TSForwardSetUp(ts));
3932 
3933   /* reset number of steps only when the step is not restarted. ARKIMEX
3934      restarts the step after an event. Resetting these counters in such case causes
3935      TSTrajectory to incorrectly save the output files
3936   */
3937   /* reset time step and iteration counters */
3938   if (!ts->steps) {
3939     ts->ksp_its           = 0;
3940     ts->snes_its          = 0;
3941     ts->num_snes_failures = 0;
3942     ts->reject            = 0;
3943     ts->steprestart       = PETSC_TRUE;
3944     ts->steprollback      = PETSC_FALSE;
3945     ts->rhsjacobian.time  = PETSC_MIN_REAL;
3946   }
3947 
3948   /* make sure initial time step does not overshoot final time or the next point in tspan */
3949   if (ts->exact_final_time == TS_EXACTFINALTIME_MATCHSTEP) {
3950     PetscReal maxdt;
3951     PetscReal dt = ts->time_step;
3952 
3953     if (ts->tspan) maxdt = ts->tspan->span_times[ts->tspan->spanctr] - ts->ptime;
3954     else maxdt = ts->max_time - ts->ptime;
3955     ts->time_step = dt >= maxdt ? maxdt : (PetscIsCloseAtTol(dt, maxdt, 10 * PETSC_MACHINE_EPSILON, 0) ? maxdt : dt);
3956   }
3957   ts->reason = TS_CONVERGED_ITERATING;
3958 
3959   {
3960     PetscViewer       viewer;
3961     PetscViewerFormat format;
3962     PetscBool         flg;
3963     static PetscBool  incall = PETSC_FALSE;
3964 
3965     if (!incall) {
3966       /* Estimate the convergence rate of the time discretization */
3967       PetscCall(PetscOptionsGetViewer(PetscObjectComm((PetscObject)ts), ((PetscObject)ts)->options, ((PetscObject)ts)->prefix, "-ts_convergence_estimate", &viewer, &format, &flg));
3968       if (flg) {
3969         PetscConvEst conv;
3970         DM           dm;
3971         PetscReal   *alpha; /* Convergence rate of the solution error for each field in the L_2 norm */
3972         PetscInt     Nf;
3973         PetscBool    checkTemporal = PETSC_TRUE;
3974 
3975         incall = PETSC_TRUE;
3976         PetscCall(PetscOptionsGetBool(((PetscObject)ts)->options, ((PetscObject)ts)->prefix, "-ts_convergence_temporal", &checkTemporal, &flg));
3977         PetscCall(TSGetDM(ts, &dm));
3978         PetscCall(DMGetNumFields(dm, &Nf));
3979         PetscCall(PetscCalloc1(PetscMax(Nf, 1), &alpha));
3980         PetscCall(PetscConvEstCreate(PetscObjectComm((PetscObject)ts), &conv));
3981         PetscCall(PetscConvEstUseTS(conv, checkTemporal));
3982         PetscCall(PetscConvEstSetSolver(conv, (PetscObject)ts));
3983         PetscCall(PetscConvEstSetFromOptions(conv));
3984         PetscCall(PetscConvEstSetUp(conv));
3985         PetscCall(PetscConvEstGetConvRate(conv, alpha));
3986         PetscCall(PetscViewerPushFormat(viewer, format));
3987         PetscCall(PetscConvEstRateView(conv, alpha, viewer));
3988         PetscCall(PetscViewerPopFormat(viewer));
3989         PetscCall(PetscOptionsRestoreViewer(&viewer));
3990         PetscCall(PetscConvEstDestroy(&conv));
3991         PetscCall(PetscFree(alpha));
3992         incall = PETSC_FALSE;
3993       }
3994     }
3995   }
3996 
3997   PetscCall(TSViewFromOptions(ts, NULL, "-ts_view_pre"));
3998 
3999   if (ts->ops->solve) { /* This private interface is transitional and should be removed when all implementations are updated. */
4000     PetscUseTypeMethod(ts, solve);
4001     if (u) PetscCall(VecCopy(ts->vec_sol, u));
4002     ts->solvetime = ts->ptime;
4003     solution      = ts->vec_sol;
4004   } else { /* Step the requested number of timesteps. */
4005     if (ts->steps >= ts->max_steps) ts->reason = TS_CONVERGED_ITS;
4006     else if (ts->ptime >= ts->max_time) ts->reason = TS_CONVERGED_TIME;
4007 
4008     if (!ts->steps) {
4009       PetscCall(TSTrajectorySet(ts->trajectory, ts, ts->steps, ts->ptime, ts->vec_sol));
4010       PetscCall(TSEventInitialize(ts->event, ts, ts->ptime, ts->vec_sol));
4011     }
4012 
4013     while (!ts->reason) {
4014       PetscCall(TSMonitor(ts, ts->steps, ts->ptime, ts->vec_sol));
4015       if (!ts->steprollback) PetscCall(TSPreStep(ts));
4016       PetscCall(TSStep(ts));
4017       if (ts->testjacobian) PetscCall(TSRHSJacobianTest(ts, NULL));
4018       if (ts->testjacobiantranspose) PetscCall(TSRHSJacobianTestTranspose(ts, NULL));
4019       if (ts->quadraturets && ts->costintegralfwd) { /* Must evaluate the cost integral before event is handled. The cost integral value can also be rolled back. */
4020         if (ts->reason >= 0) ts->steps--;            /* Revert the step number changed by TSStep() */
4021         PetscCall(TSForwardCostIntegral(ts));
4022         if (ts->reason >= 0) ts->steps++;
4023       }
4024       if (ts->forward_solve) {            /* compute forward sensitivities before event handling because postevent() may change RHS and jump conditions may have to be applied */
4025         if (ts->reason >= 0) ts->steps--; /* Revert the step number changed by TSStep() */
4026         PetscCall(TSForwardStep(ts));
4027         if (ts->reason >= 0) ts->steps++;
4028       }
4029       PetscCall(TSPostEvaluate(ts));
4030       PetscCall(TSEventHandler(ts)); /* The right-hand side may be changed due to event. Be careful with Any computation using the RHS information after this point. */
4031       if (ts->steprollback) PetscCall(TSPostEvaluate(ts));
4032       if (!ts->steprollback) {
4033         PetscCall(TSTrajectorySet(ts->trajectory, ts, ts->steps, ts->ptime, ts->vec_sol));
4034         PetscCall(TSPostStep(ts));
4035         PetscCall(TSResize(ts));
4036 
4037         if (ts->tspan && ts->tspan->spanctr < ts->tspan->num_span_times) {
4038           PetscCheck(ts->tspan->worktol > 0, PetscObjectComm((PetscObject)ts), PETSC_ERR_PLIB, "Unexpected state !(tspan->worktol > 0) in TSSolve()");
4039           if (PetscIsCloseAtTol(ts->ptime, ts->tspan->span_times[ts->tspan->spanctr], ts->tspan->worktol, 0)) PetscCall(VecCopy(ts->vec_sol, ts->tspan->vecs_sol[ts->tspan->spanctr++]));
4040         }
4041       }
4042     }
4043     PetscCall(TSMonitor(ts, ts->steps, ts->ptime, ts->vec_sol));
4044 
4045     if (ts->exact_final_time == TS_EXACTFINALTIME_INTERPOLATE && ts->ptime > ts->max_time) {
4046       if (!u) u = ts->vec_sol;
4047       PetscCall(TSInterpolate(ts, ts->max_time, u));
4048       ts->solvetime = ts->max_time;
4049       solution      = u;
4050       PetscCall(TSMonitor(ts, -1, ts->solvetime, solution));
4051     } else {
4052       if (u) PetscCall(VecCopy(ts->vec_sol, u));
4053       ts->solvetime = ts->ptime;
4054       solution      = ts->vec_sol;
4055     }
4056   }
4057 
4058   PetscCall(TSViewFromOptions(ts, NULL, "-ts_view"));
4059   PetscCall(VecViewFromOptions(solution, (PetscObject)ts, "-ts_view_solution"));
4060   PetscCall(PetscObjectSAWsBlock((PetscObject)ts));
4061   if (ts->adjoint_solve) PetscCall(TSAdjointSolve(ts));
4062   PetscFunctionReturn(PETSC_SUCCESS);
4063 }
4064 
4065 /*@
4066   TSGetTime - Gets the time of the most recently completed step.
4067 
4068   Not Collective
4069 
4070   Input Parameter:
4071 . ts - the `TS` context obtained from `TSCreate()`
4072 
4073   Output Parameter:
4074 . t - the current time. This time may not corresponds to the final time set with `TSSetMaxTime()`, use `TSGetSolveTime()`.
4075 
4076   Level: beginner
4077 
4078   Note:
4079   When called during time step evaluation (e.g. during residual evaluation or via hooks set using `TSSetPreStep()`,
4080   `TSSetPreStage()`, `TSSetPostStage()`, or `TSSetPostStep()`), the time is the time at the start of the step being evaluated.
4081 
4082 .seealso: [](ch_ts), `TS`, ``TSGetSolveTime()`, `TSSetTime()`, `TSGetTimeStep()`, `TSGetStepNumber()`
4083 @*/
4084 PetscErrorCode TSGetTime(TS ts, PetscReal *t)
4085 {
4086   PetscFunctionBegin;
4087   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
4088   PetscAssertPointer(t, 2);
4089   *t = ts->ptime;
4090   PetscFunctionReturn(PETSC_SUCCESS);
4091 }
4092 
4093 /*@
4094   TSGetPrevTime - Gets the starting time of the previously completed step.
4095 
4096   Not Collective
4097 
4098   Input Parameter:
4099 . ts - the `TS` context obtained from `TSCreate()`
4100 
4101   Output Parameter:
4102 . t - the previous time
4103 
4104   Level: beginner
4105 
4106 .seealso: [](ch_ts), `TS`, ``TSGetTime()`, `TSGetSolveTime()`, `TSGetTimeStep()`
4107 @*/
4108 PetscErrorCode TSGetPrevTime(TS ts, PetscReal *t)
4109 {
4110   PetscFunctionBegin;
4111   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
4112   PetscAssertPointer(t, 2);
4113   *t = ts->ptime_prev;
4114   PetscFunctionReturn(PETSC_SUCCESS);
4115 }
4116 
4117 /*@
4118   TSSetTime - Allows one to reset the time.
4119 
4120   Logically Collective
4121 
4122   Input Parameters:
4123 + ts - the `TS` context obtained from `TSCreate()`
4124 - t  - the time
4125 
4126   Level: intermediate
4127 
4128 .seealso: [](ch_ts), `TS`, `TSGetTime()`, `TSSetMaxSteps()`
4129 @*/
4130 PetscErrorCode TSSetTime(TS ts, PetscReal t)
4131 {
4132   PetscFunctionBegin;
4133   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
4134   PetscValidLogicalCollectiveReal(ts, t, 2);
4135   ts->ptime = t;
4136   PetscFunctionReturn(PETSC_SUCCESS);
4137 }
4138 
4139 /*@C
4140   TSSetOptionsPrefix - Sets the prefix used for searching for all
4141   TS options in the database.
4142 
4143   Logically Collective
4144 
4145   Input Parameters:
4146 + ts     - The `TS` context
4147 - prefix - The prefix to prepend to all option names
4148 
4149   Level: advanced
4150 
4151   Note:
4152   A hyphen (-) must NOT be given at the beginning of the prefix name.
4153   The first character of all runtime options is AUTOMATICALLY the
4154   hyphen.
4155 
4156 .seealso: [](ch_ts), `TS`, `TSSetFromOptions()`, `TSAppendOptionsPrefix()`
4157 @*/
4158 PetscErrorCode TSSetOptionsPrefix(TS ts, const char prefix[])
4159 {
4160   SNES snes;
4161 
4162   PetscFunctionBegin;
4163   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
4164   PetscCall(PetscObjectSetOptionsPrefix((PetscObject)ts, prefix));
4165   PetscCall(TSGetSNES(ts, &snes));
4166   PetscCall(SNESSetOptionsPrefix(snes, prefix));
4167   PetscFunctionReturn(PETSC_SUCCESS);
4168 }
4169 
4170 /*@C
4171   TSAppendOptionsPrefix - Appends to the prefix used for searching for all
4172   TS options in the database.
4173 
4174   Logically Collective
4175 
4176   Input Parameters:
4177 + ts     - The `TS` context
4178 - prefix - The prefix to prepend to all option names
4179 
4180   Level: advanced
4181 
4182   Note:
4183   A hyphen (-) must NOT be given at the beginning of the prefix name.
4184   The first character of all runtime options is AUTOMATICALLY the
4185   hyphen.
4186 
4187 .seealso: [](ch_ts), `TS`, `TSGetOptionsPrefix()`, `TSSetOptionsPrefix()`, `TSSetFromOptions()`
4188 @*/
4189 PetscErrorCode TSAppendOptionsPrefix(TS ts, const char prefix[])
4190 {
4191   SNES snes;
4192 
4193   PetscFunctionBegin;
4194   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
4195   PetscCall(PetscObjectAppendOptionsPrefix((PetscObject)ts, prefix));
4196   PetscCall(TSGetSNES(ts, &snes));
4197   PetscCall(SNESAppendOptionsPrefix(snes, prefix));
4198   PetscFunctionReturn(PETSC_SUCCESS);
4199 }
4200 
4201 /*@C
4202   TSGetOptionsPrefix - Sets the prefix used for searching for all
4203   `TS` options in the database.
4204 
4205   Not Collective
4206 
4207   Input Parameter:
4208 . ts - The `TS` context
4209 
4210   Output Parameter:
4211 . prefix - A pointer to the prefix string used
4212 
4213   Level: intermediate
4214 
4215   Fortran Notes:
4216   The user should pass in a string 'prefix' of
4217   sufficient length to hold the prefix.
4218 
4219 .seealso: [](ch_ts), `TS`, `TSAppendOptionsPrefix()`, `TSSetFromOptions()`
4220 @*/
4221 PetscErrorCode TSGetOptionsPrefix(TS ts, const char *prefix[])
4222 {
4223   PetscFunctionBegin;
4224   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
4225   PetscAssertPointer(prefix, 2);
4226   PetscCall(PetscObjectGetOptionsPrefix((PetscObject)ts, prefix));
4227   PetscFunctionReturn(PETSC_SUCCESS);
4228 }
4229 
4230 /*@C
4231   TSGetRHSJacobian - Returns the Jacobian J at the present timestep.
4232 
4233   Not Collective, but parallel objects are returned if ts is parallel
4234 
4235   Input Parameter:
4236 . ts - The `TS` context obtained from `TSCreate()`
4237 
4238   Output Parameters:
4239 + Amat - The (approximate) Jacobian J of G, where U_t = G(U,t)  (or `NULL`)
4240 . Pmat - The matrix from which the preconditioner is constructed, usually the same as `Amat`  (or `NULL`)
4241 . func - Function to compute the Jacobian of the RHS  (or `NULL`)
4242 - ctx  - User-defined context for Jacobian evaluation routine  (or `NULL`)
4243 
4244   Level: intermediate
4245 
4246   Note:
4247   You can pass in `NULL` for any return argument you do not need.
4248 
4249 .seealso: [](ch_ts), `TS`, `TSGetTimeStep()`, `TSGetMatrices()`, `TSGetTime()`, `TSGetStepNumber()`
4250 
4251 @*/
4252 PetscErrorCode TSGetRHSJacobian(TS ts, Mat *Amat, Mat *Pmat, TSRHSJacobian *func, void **ctx)
4253 {
4254   DM dm;
4255 
4256   PetscFunctionBegin;
4257   if (Amat || Pmat) {
4258     SNES snes;
4259     PetscCall(TSGetSNES(ts, &snes));
4260     PetscCall(SNESSetUpMatrices(snes));
4261     PetscCall(SNESGetJacobian(snes, Amat, Pmat, NULL, NULL));
4262   }
4263   PetscCall(TSGetDM(ts, &dm));
4264   PetscCall(DMTSGetRHSJacobian(dm, func, ctx));
4265   PetscFunctionReturn(PETSC_SUCCESS);
4266 }
4267 
4268 /*@C
4269   TSGetIJacobian - Returns the implicit Jacobian at the present timestep.
4270 
4271   Not Collective, but parallel objects are returned if ts is parallel
4272 
4273   Input Parameter:
4274 . ts - The `TS` context obtained from `TSCreate()`
4275 
4276   Output Parameters:
4277 + Amat - The (approximate) Jacobian of F(t,U,U_t)
4278 . Pmat - The matrix from which the preconditioner is constructed, often the same as `Amat`
4279 . f    - The function to compute the matrices
4280 - ctx  - User-defined context for Jacobian evaluation routine
4281 
4282   Level: advanced
4283 
4284   Note:
4285   You can pass in `NULL` for any return argument you do not need.
4286 
4287 .seealso: [](ch_ts), `TS`, `TSGetTimeStep()`, `TSGetRHSJacobian()`, `TSGetMatrices()`, `TSGetTime()`, `TSGetStepNumber()`
4288 @*/
4289 PetscErrorCode TSGetIJacobian(TS ts, Mat *Amat, Mat *Pmat, TSIJacobian *f, void **ctx)
4290 {
4291   DM dm;
4292 
4293   PetscFunctionBegin;
4294   if (Amat || Pmat) {
4295     SNES snes;
4296     PetscCall(TSGetSNES(ts, &snes));
4297     PetscCall(SNESSetUpMatrices(snes));
4298     PetscCall(SNESGetJacobian(snes, Amat, Pmat, NULL, NULL));
4299   }
4300   PetscCall(TSGetDM(ts, &dm));
4301   PetscCall(DMTSGetIJacobian(dm, f, ctx));
4302   PetscFunctionReturn(PETSC_SUCCESS);
4303 }
4304 
4305 #include <petsc/private/dmimpl.h>
4306 /*@
4307   TSSetDM - Sets the `DM` that may be used by some nonlinear solvers or preconditioners under the `TS`
4308 
4309   Logically Collective
4310 
4311   Input Parameters:
4312 + ts - the `TS` integrator object
4313 - dm - the dm, cannot be `NULL`
4314 
4315   Level: intermediate
4316 
4317   Notes:
4318   A `DM` can only be used for solving one problem at a time because information about the problem is stored on the `DM`,
4319   even when not using interfaces like `DMTSSetIFunction()`.  Use `DMClone()` to get a distinct `DM` when solving
4320   different problems using the same function space.
4321 
4322 .seealso: [](ch_ts), `TS`, `DM`, `TSGetDM()`, `SNESSetDM()`, `SNESGetDM()`
4323 @*/
4324 PetscErrorCode TSSetDM(TS ts, DM dm)
4325 {
4326   SNES snes;
4327   DMTS tsdm;
4328 
4329   PetscFunctionBegin;
4330   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
4331   PetscValidHeaderSpecific(dm, DM_CLASSID, 2);
4332   PetscCall(PetscObjectReference((PetscObject)dm));
4333   if (ts->dm) { /* Move the DMTS context over to the new DM unless the new DM already has one */
4334     if (ts->dm->dmts && !dm->dmts) {
4335       PetscCall(DMCopyDMTS(ts->dm, dm));
4336       PetscCall(DMGetDMTS(ts->dm, &tsdm));
4337       /* Grant write privileges to the replacement DM */
4338       if (tsdm->originaldm == ts->dm) tsdm->originaldm = dm;
4339     }
4340     PetscCall(DMDestroy(&ts->dm));
4341   }
4342   ts->dm = dm;
4343 
4344   PetscCall(TSGetSNES(ts, &snes));
4345   PetscCall(SNESSetDM(snes, dm));
4346   PetscFunctionReturn(PETSC_SUCCESS);
4347 }
4348 
4349 /*@
4350   TSGetDM - Gets the `DM` that may be used by some preconditioners
4351 
4352   Not Collective
4353 
4354   Input Parameter:
4355 . ts - the `TS`
4356 
4357   Output Parameter:
4358 . dm - the `DM`
4359 
4360   Level: intermediate
4361 
4362 .seealso: [](ch_ts), `TS`, `DM`, `TSSetDM()`, `SNESSetDM()`, `SNESGetDM()`
4363 @*/
4364 PetscErrorCode TSGetDM(TS ts, DM *dm)
4365 {
4366   PetscFunctionBegin;
4367   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
4368   if (!ts->dm) {
4369     PetscCall(DMShellCreate(PetscObjectComm((PetscObject)ts), &ts->dm));
4370     if (ts->snes) PetscCall(SNESSetDM(ts->snes, ts->dm));
4371   }
4372   *dm = ts->dm;
4373   PetscFunctionReturn(PETSC_SUCCESS);
4374 }
4375 
4376 /*@
4377   SNESTSFormFunction - Function to evaluate nonlinear residual
4378 
4379   Logically Collective
4380 
4381   Input Parameters:
4382 + snes - nonlinear solver
4383 . U    - the current state at which to evaluate the residual
4384 - ctx  - user context, must be a TS
4385 
4386   Output Parameter:
4387 . F - the nonlinear residual
4388 
4389   Level: advanced
4390 
4391   Note:
4392   This function is not normally called by users and is automatically registered with the `SNES` used by `TS`.
4393   It is most frequently passed to `MatFDColoringSetFunction()`.
4394 
4395 .seealso: [](ch_ts), `SNESSetFunction()`, `MatFDColoringSetFunction()`
4396 @*/
4397 PetscErrorCode SNESTSFormFunction(SNES snes, Vec U, Vec F, void *ctx)
4398 {
4399   TS ts = (TS)ctx;
4400 
4401   PetscFunctionBegin;
4402   PetscValidHeaderSpecific(snes, SNES_CLASSID, 1);
4403   PetscValidHeaderSpecific(U, VEC_CLASSID, 2);
4404   PetscValidHeaderSpecific(F, VEC_CLASSID, 3);
4405   PetscValidHeaderSpecific(ts, TS_CLASSID, 4);
4406   PetscCall((ts->ops->snesfunction)(snes, U, F, ts));
4407   PetscFunctionReturn(PETSC_SUCCESS);
4408 }
4409 
4410 /*@
4411   SNESTSFormJacobian - Function to evaluate the Jacobian
4412 
4413   Collective
4414 
4415   Input Parameters:
4416 + snes - nonlinear solver
4417 . U    - the current state at which to evaluate the residual
4418 - ctx  - user context, must be a `TS`
4419 
4420   Output Parameters:
4421 + A - the Jacobian
4422 - B - the preconditioning matrix (may be the same as A)
4423 
4424   Level: developer
4425 
4426   Note:
4427   This function is not normally called by users and is automatically registered with the `SNES` used by `TS`.
4428 
4429 .seealso: [](ch_ts), `SNESSetJacobian()`
4430 @*/
4431 PetscErrorCode SNESTSFormJacobian(SNES snes, Vec U, Mat A, Mat B, void *ctx)
4432 {
4433   TS ts = (TS)ctx;
4434 
4435   PetscFunctionBegin;
4436   PetscValidHeaderSpecific(snes, SNES_CLASSID, 1);
4437   PetscValidHeaderSpecific(U, VEC_CLASSID, 2);
4438   PetscValidHeaderSpecific(A, MAT_CLASSID, 3);
4439   PetscValidHeaderSpecific(B, MAT_CLASSID, 4);
4440   PetscValidHeaderSpecific(ts, TS_CLASSID, 5);
4441   PetscCall((ts->ops->snesjacobian)(snes, U, A, B, ts));
4442   PetscFunctionReturn(PETSC_SUCCESS);
4443 }
4444 
4445 /*@C
4446   TSComputeRHSFunctionLinear - Evaluate the right hand side via the user-provided Jacobian, for linear problems Udot = A U only
4447 
4448   Collective
4449 
4450   Input Parameters:
4451 + ts  - time stepping context
4452 . t   - time at which to evaluate
4453 . U   - state at which to evaluate
4454 - ctx - context
4455 
4456   Output Parameter:
4457 . F - right hand side
4458 
4459   Level: intermediate
4460 
4461   Note:
4462   This function is intended to be passed to `TSSetRHSFunction()` to evaluate the right hand side for linear problems.
4463   The matrix (and optionally the evaluation context) should be passed to `TSSetRHSJacobian()`.
4464 
4465 .seealso: [](ch_ts), `TS`, `TSSetRHSFunction()`, `TSSetRHSJacobian()`, `TSComputeRHSJacobianConstant()`
4466 @*/
4467 PetscErrorCode TSComputeRHSFunctionLinear(TS ts, PetscReal t, Vec U, Vec F, void *ctx)
4468 {
4469   Mat Arhs, Brhs;
4470 
4471   PetscFunctionBegin;
4472   PetscCall(TSGetRHSMats_Private(ts, &Arhs, &Brhs));
4473   /* undo the damage caused by shifting */
4474   PetscCall(TSRecoverRHSJacobian(ts, Arhs, Brhs));
4475   PetscCall(TSComputeRHSJacobian(ts, t, U, Arhs, Brhs));
4476   PetscCall(MatMult(Arhs, U, F));
4477   PetscFunctionReturn(PETSC_SUCCESS);
4478 }
4479 
4480 /*@C
4481   TSComputeRHSJacobianConstant - Reuses a Jacobian that is time-independent.
4482 
4483   Collective
4484 
4485   Input Parameters:
4486 + ts  - time stepping context
4487 . t   - time at which to evaluate
4488 . U   - state at which to evaluate
4489 - ctx - context
4490 
4491   Output Parameters:
4492 + A - pointer to operator
4493 - B - pointer to preconditioning matrix
4494 
4495   Level: intermediate
4496 
4497   Note:
4498   This function is intended to be passed to `TSSetRHSJacobian()` to evaluate the Jacobian for linear time-independent problems.
4499 
4500 .seealso: [](ch_ts), `TS`, `TSSetRHSFunction()`, `TSSetRHSJacobian()`, `TSComputeRHSFunctionLinear()`
4501 @*/
4502 PetscErrorCode TSComputeRHSJacobianConstant(TS ts, PetscReal t, Vec U, Mat A, Mat B, void *ctx)
4503 {
4504   PetscFunctionBegin;
4505   PetscFunctionReturn(PETSC_SUCCESS);
4506 }
4507 
4508 /*@C
4509   TSComputeIFunctionLinear - Evaluate the left hand side via the user-provided Jacobian, for linear problems only
4510 
4511   Collective
4512 
4513   Input Parameters:
4514 + ts   - time stepping context
4515 . t    - time at which to evaluate
4516 . U    - state at which to evaluate
4517 . Udot - time derivative of state vector
4518 - ctx  - context
4519 
4520   Output Parameter:
4521 . F - left hand side
4522 
4523   Level: intermediate
4524 
4525   Notes:
4526   The assumption here is that the left hand side is of the form A*Udot (and not A*Udot + B*U). For other cases, the
4527   user is required to write their own `TSComputeIFunction()`.
4528   This function is intended to be passed to `TSSetIFunction()` to evaluate the left hand side for linear problems.
4529   The matrix (and optionally the evaluation context) should be passed to `TSSetIJacobian()`.
4530 
4531   Note that using this function is NOT equivalent to using `TSComputeRHSFunctionLinear()` since that solves Udot = A U
4532 
4533 .seealso: [](ch_ts), `TS`, `TSSetIFunction()`, `TSSetIJacobian()`, `TSComputeIJacobianConstant()`, `TSComputeRHSFunctionLinear()`
4534 @*/
4535 PetscErrorCode TSComputeIFunctionLinear(TS ts, PetscReal t, Vec U, Vec Udot, Vec F, void *ctx)
4536 {
4537   Mat A, B;
4538 
4539   PetscFunctionBegin;
4540   PetscCall(TSGetIJacobian(ts, &A, &B, NULL, NULL));
4541   PetscCall(TSComputeIJacobian(ts, t, U, Udot, 1.0, A, B, PETSC_TRUE));
4542   PetscCall(MatMult(A, Udot, F));
4543   PetscFunctionReturn(PETSC_SUCCESS);
4544 }
4545 
4546 /*@C
4547   TSComputeIJacobianConstant - Reuses the matrix previously computed with the provided `TSIJacobian()` for a semi-implicit DAE or ODE
4548 
4549   Collective
4550 
4551   Input Parameters:
4552 + ts    - time stepping context
4553 . t     - time at which to evaluate
4554 . U     - state at which to evaluate
4555 . Udot  - time derivative of state vector
4556 . shift - shift to apply
4557 - ctx   - context
4558 
4559   Output Parameters:
4560 + A - pointer to operator
4561 - B - pointer to preconditioning matrix
4562 
4563   Level: advanced
4564 
4565   Notes:
4566   This function is intended to be passed to `TSSetIJacobian()` to evaluate the Jacobian for linear time-independent problems.
4567 
4568   It is only appropriate for problems of the form
4569 
4570 $     M Udot = F(U,t)
4571 
4572   where M is constant and F is non-stiff.  The user must pass M to `TSSetIJacobian()`.  The current implementation only
4573   works with IMEX time integration methods such as `TSROSW` and `TSARKIMEX`, since there is no support for de-constructing
4574   an implicit operator of the form
4575 
4576 $    shift*M + J
4577 
4578   where J is the Jacobian of -F(U).  Support may be added in a future version of PETSc, but for now, the user must store
4579   a copy of M or reassemble it when requested.
4580 
4581 .seealso: [](ch_ts), `TS`, `TSROSW`, `TSARKIMEX`, `TSSetIFunction()`, `TSSetIJacobian()`, `TSComputeIFunctionLinear()`
4582 @*/
4583 PetscErrorCode TSComputeIJacobianConstant(TS ts, PetscReal t, Vec U, Vec Udot, PetscReal shift, Mat A, Mat B, void *ctx)
4584 {
4585   PetscFunctionBegin;
4586   PetscCall(MatScale(A, shift / ts->ijacobian.shift));
4587   ts->ijacobian.shift = shift;
4588   PetscFunctionReturn(PETSC_SUCCESS);
4589 }
4590 
4591 /*@
4592   TSGetEquationType - Gets the type of the equation that `TS` is solving.
4593 
4594   Not Collective
4595 
4596   Input Parameter:
4597 . ts - the `TS` context
4598 
4599   Output Parameter:
4600 . equation_type - see `TSEquationType`
4601 
4602   Level: beginner
4603 
4604 .seealso: [](ch_ts), `TS`, `TSSetEquationType()`, `TSEquationType`
4605 @*/
4606 PetscErrorCode TSGetEquationType(TS ts, TSEquationType *equation_type)
4607 {
4608   PetscFunctionBegin;
4609   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
4610   PetscAssertPointer(equation_type, 2);
4611   *equation_type = ts->equation_type;
4612   PetscFunctionReturn(PETSC_SUCCESS);
4613 }
4614 
4615 /*@
4616   TSSetEquationType - Sets the type of the equation that `TS` is solving.
4617 
4618   Not Collective
4619 
4620   Input Parameters:
4621 + ts            - the `TS` context
4622 - equation_type - see `TSEquationType`
4623 
4624   Level: advanced
4625 
4626 .seealso: [](ch_ts), `TS`, `TSGetEquationType()`, `TSEquationType`
4627 @*/
4628 PetscErrorCode TSSetEquationType(TS ts, TSEquationType equation_type)
4629 {
4630   PetscFunctionBegin;
4631   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
4632   ts->equation_type = equation_type;
4633   PetscFunctionReturn(PETSC_SUCCESS);
4634 }
4635 
4636 /*@
4637   TSGetConvergedReason - Gets the reason the `TS` iteration was stopped.
4638 
4639   Not Collective
4640 
4641   Input Parameter:
4642 . ts - the `TS` context
4643 
4644   Output Parameter:
4645 . reason - negative value indicates diverged, positive value converged, see `TSConvergedReason` or the
4646             manual pages for the individual convergence tests for complete lists
4647 
4648   Level: beginner
4649 
4650   Note:
4651   Can only be called after the call to `TSSolve()` is complete.
4652 
4653 .seealso: [](ch_ts), `TS`, `TSSolve()`, `TSSetConvergenceTest()`, `TSConvergedReason`
4654 @*/
4655 PetscErrorCode TSGetConvergedReason(TS ts, TSConvergedReason *reason)
4656 {
4657   PetscFunctionBegin;
4658   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
4659   PetscAssertPointer(reason, 2);
4660   *reason = ts->reason;
4661   PetscFunctionReturn(PETSC_SUCCESS);
4662 }
4663 
4664 /*@
4665   TSSetConvergedReason - Sets the reason for handling the convergence of `TSSolve()`.
4666 
4667   Logically Collective; reason must contain common value
4668 
4669   Input Parameters:
4670 + ts     - the `TS` context
4671 - reason - negative value indicates diverged, positive value converged, see `TSConvergedReason` or the
4672             manual pages for the individual convergence tests for complete lists
4673 
4674   Level: advanced
4675 
4676   Note:
4677   Can only be called while `TSSolve()` is active.
4678 
4679 .seealso: [](ch_ts), `TS`, `TSSolve()`, `TSConvergedReason`
4680 @*/
4681 PetscErrorCode TSSetConvergedReason(TS ts, TSConvergedReason reason)
4682 {
4683   PetscFunctionBegin;
4684   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
4685   ts->reason = reason;
4686   PetscFunctionReturn(PETSC_SUCCESS);
4687 }
4688 
4689 /*@
4690   TSGetSolveTime - Gets the time after a call to `TSSolve()`
4691 
4692   Not Collective
4693 
4694   Input Parameter:
4695 . ts - the `TS` context
4696 
4697   Output Parameter:
4698 . ftime - the final time. This time corresponds to the final time set with `TSSetMaxTime()`
4699 
4700   Level: beginner
4701 
4702   Note:
4703   Can only be called after the call to `TSSolve()` is complete.
4704 
4705 .seealso: [](ch_ts), `TS`, `TSSolve()`, `TSSetConvergenceTest()`, `TSConvergedReason`
4706 @*/
4707 PetscErrorCode TSGetSolveTime(TS ts, PetscReal *ftime)
4708 {
4709   PetscFunctionBegin;
4710   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
4711   PetscAssertPointer(ftime, 2);
4712   *ftime = ts->solvetime;
4713   PetscFunctionReturn(PETSC_SUCCESS);
4714 }
4715 
4716 /*@
4717   TSGetSNESIterations - Gets the total number of nonlinear iterations
4718   used by the time integrator.
4719 
4720   Not Collective
4721 
4722   Input Parameter:
4723 . ts - `TS` context
4724 
4725   Output Parameter:
4726 . nits - number of nonlinear iterations
4727 
4728   Level: intermediate
4729 
4730   Note:
4731   This counter is reset to zero for each successive call to `TSSolve()`.
4732 
4733 .seealso: [](ch_ts), `TS`, `TSSolve()`, `TSGetKSPIterations()`
4734 @*/
4735 PetscErrorCode TSGetSNESIterations(TS ts, PetscInt *nits)
4736 {
4737   PetscFunctionBegin;
4738   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
4739   PetscAssertPointer(nits, 2);
4740   *nits = ts->snes_its;
4741   PetscFunctionReturn(PETSC_SUCCESS);
4742 }
4743 
4744 /*@
4745   TSGetKSPIterations - Gets the total number of linear iterations
4746   used by the time integrator.
4747 
4748   Not Collective
4749 
4750   Input Parameter:
4751 . ts - `TS` context
4752 
4753   Output Parameter:
4754 . lits - number of linear iterations
4755 
4756   Level: intermediate
4757 
4758   Note:
4759   This counter is reset to zero for each successive call to `TSSolve()`.
4760 
4761 .seealso: [](ch_ts), `TS`, `TSSolve()`, `TSGetSNESIterations()`, `SNESGetKSPIterations()`
4762 @*/
4763 PetscErrorCode TSGetKSPIterations(TS ts, PetscInt *lits)
4764 {
4765   PetscFunctionBegin;
4766   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
4767   PetscAssertPointer(lits, 2);
4768   *lits = ts->ksp_its;
4769   PetscFunctionReturn(PETSC_SUCCESS);
4770 }
4771 
4772 /*@
4773   TSGetStepRejections - Gets the total number of rejected steps.
4774 
4775   Not Collective
4776 
4777   Input Parameter:
4778 . ts - `TS` context
4779 
4780   Output Parameter:
4781 . rejects - number of steps rejected
4782 
4783   Level: intermediate
4784 
4785   Note:
4786   This counter is reset to zero for each successive call to `TSSolve()`.
4787 
4788 .seealso: [](ch_ts), `TS`, `TSSolve()`, `TSGetSNESIterations()`, `TSGetKSPIterations()`, `TSSetMaxStepRejections()`, `TSGetSNESFailures()`, `TSSetMaxSNESFailures()`, `TSSetErrorIfStepFails()`
4789 @*/
4790 PetscErrorCode TSGetStepRejections(TS ts, PetscInt *rejects)
4791 {
4792   PetscFunctionBegin;
4793   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
4794   PetscAssertPointer(rejects, 2);
4795   *rejects = ts->reject;
4796   PetscFunctionReturn(PETSC_SUCCESS);
4797 }
4798 
4799 /*@
4800   TSGetSNESFailures - Gets the total number of failed `SNES` solves in a `TS`
4801 
4802   Not Collective
4803 
4804   Input Parameter:
4805 . ts - `TS` context
4806 
4807   Output Parameter:
4808 . fails - number of failed nonlinear solves
4809 
4810   Level: intermediate
4811 
4812   Note:
4813   This counter is reset to zero for each successive call to `TSSolve()`.
4814 
4815 .seealso: [](ch_ts), `TS`, `TSSolve()`, `TSGetSNESIterations()`, `TSGetKSPIterations()`, `TSSetMaxStepRejections()`, `TSGetStepRejections()`, `TSSetMaxSNESFailures()`
4816 @*/
4817 PetscErrorCode TSGetSNESFailures(TS ts, PetscInt *fails)
4818 {
4819   PetscFunctionBegin;
4820   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
4821   PetscAssertPointer(fails, 2);
4822   *fails = ts->num_snes_failures;
4823   PetscFunctionReturn(PETSC_SUCCESS);
4824 }
4825 
4826 /*@
4827   TSSetMaxStepRejections - Sets the maximum number of step rejections before a time step fails
4828 
4829   Not Collective
4830 
4831   Input Parameters:
4832 + ts      - `TS` context
4833 - rejects - maximum number of rejected steps, pass -1 for unlimited
4834 
4835   Options Database Key:
4836 . -ts_max_reject - Maximum number of step rejections before a step fails
4837 
4838   Level: intermediate
4839 
4840 .seealso: [](ch_ts), `TS`, `SNES`, `TSGetSNESIterations()`, `TSGetKSPIterations()`, `TSSetMaxSNESFailures()`, `TSGetStepRejections()`, `TSGetSNESFailures()`, `TSSetErrorIfStepFails()`, `TSGetConvergedReason()`
4841 @*/
4842 PetscErrorCode TSSetMaxStepRejections(TS ts, PetscInt rejects)
4843 {
4844   PetscFunctionBegin;
4845   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
4846   ts->max_reject = rejects;
4847   PetscFunctionReturn(PETSC_SUCCESS);
4848 }
4849 
4850 /*@
4851   TSSetMaxSNESFailures - Sets the maximum number of failed `SNES` solves
4852 
4853   Not Collective
4854 
4855   Input Parameters:
4856 + ts    - `TS` context
4857 - fails - maximum number of failed nonlinear solves, pass -1 for unlimited
4858 
4859   Options Database Key:
4860 . -ts_max_snes_failures - Maximum number of nonlinear solve failures
4861 
4862   Level: intermediate
4863 
4864 .seealso: [](ch_ts), `TS`, `SNES`, `TSGetSNESIterations()`, `TSGetKSPIterations()`, `TSSetMaxStepRejections()`, `TSGetStepRejections()`, `TSGetSNESFailures()`, `SNESGetConvergedReason()`, `TSGetConvergedReason()`
4865 @*/
4866 PetscErrorCode TSSetMaxSNESFailures(TS ts, PetscInt fails)
4867 {
4868   PetscFunctionBegin;
4869   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
4870   ts->max_snes_failures = fails;
4871   PetscFunctionReturn(PETSC_SUCCESS);
4872 }
4873 
4874 /*@
4875   TSSetErrorIfStepFails - Immediately error if no step succeeds during `TSSolve()`
4876 
4877   Not Collective
4878 
4879   Input Parameters:
4880 + ts  - `TS` context
4881 - err - `PETSC_TRUE` to error if no step succeeds, `PETSC_FALSE` to return without failure
4882 
4883   Options Database Key:
4884 . -ts_error_if_step_fails - Error if no step succeeds
4885 
4886   Level: intermediate
4887 
4888 .seealso: [](ch_ts), `TS`, `TSGetSNESIterations()`, `TSGetKSPIterations()`, `TSSetMaxStepRejections()`, `TSGetStepRejections()`, `TSGetSNESFailures()`, `TSGetConvergedReason()`
4889 @*/
4890 PetscErrorCode TSSetErrorIfStepFails(TS ts, PetscBool err)
4891 {
4892   PetscFunctionBegin;
4893   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
4894   ts->errorifstepfailed = err;
4895   PetscFunctionReturn(PETSC_SUCCESS);
4896 }
4897 
4898 /*@
4899   TSGetAdapt - Get the adaptive controller context for the current method
4900 
4901   Collective if controller has not yet been created
4902 
4903   Input Parameter:
4904 . ts - time stepping context
4905 
4906   Output Parameter:
4907 . adapt - adaptive controller
4908 
4909   Level: intermediate
4910 
4911 .seealso: [](ch_ts), `TS`, `TSAdapt`, `TSAdaptSetType()`, `TSAdaptChoose()`
4912 @*/
4913 PetscErrorCode TSGetAdapt(TS ts, TSAdapt *adapt)
4914 {
4915   PetscFunctionBegin;
4916   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
4917   PetscAssertPointer(adapt, 2);
4918   if (!ts->adapt) {
4919     PetscCall(TSAdaptCreate(PetscObjectComm((PetscObject)ts), &ts->adapt));
4920     PetscCall(PetscObjectIncrementTabLevel((PetscObject)ts->adapt, (PetscObject)ts, 1));
4921   }
4922   *adapt = ts->adapt;
4923   PetscFunctionReturn(PETSC_SUCCESS);
4924 }
4925 
4926 /*@
4927   TSSetTolerances - Set tolerances for local truncation error when using an adaptive controller
4928 
4929   Logically Collective
4930 
4931   Input Parameters:
4932 + ts    - time integration context
4933 . atol  - scalar absolute tolerances, `PETSC_DECIDE` to leave current value
4934 . vatol - vector of absolute tolerances or `NULL`, used in preference to atol if present
4935 . rtol  - scalar relative tolerances, `PETSC_DECIDE` to leave current value
4936 - vrtol - vector of relative tolerances or `NULL`, used in preference to atol if present
4937 
4938   Options Database Keys:
4939 + -ts_rtol <rtol> - relative tolerance for local truncation error
4940 - -ts_atol <atol> - Absolute tolerance for local truncation error
4941 
4942   Level: beginner
4943 
4944   Notes:
4945   With PETSc's implicit schemes for DAE problems, the calculation of the local truncation error
4946   (LTE) includes both the differential and the algebraic variables. If one wants the LTE to be
4947   computed only for the differential or the algebraic part then this can be done using the vector of
4948   tolerances vatol. For example, by setting the tolerance vector with the desired tolerance for the
4949   differential part and infinity for the algebraic part, the LTE calculation will include only the
4950   differential variables.
4951 
4952 .seealso: [](ch_ts), `TS`, `TSAdapt`, `TSErrorWeightedNorm()`, `TSGetTolerances()`
4953 @*/
4954 PetscErrorCode TSSetTolerances(TS ts, PetscReal atol, Vec vatol, PetscReal rtol, Vec vrtol)
4955 {
4956   PetscFunctionBegin;
4957   if (atol != (PetscReal)PETSC_DECIDE && atol != (PetscReal)PETSC_DEFAULT) ts->atol = atol;
4958   if (vatol) {
4959     PetscCall(PetscObjectReference((PetscObject)vatol));
4960     PetscCall(VecDestroy(&ts->vatol));
4961     ts->vatol = vatol;
4962   }
4963   if (rtol != (PetscReal)PETSC_DECIDE && rtol != (PetscReal)PETSC_DEFAULT) ts->rtol = rtol;
4964   if (vrtol) {
4965     PetscCall(PetscObjectReference((PetscObject)vrtol));
4966     PetscCall(VecDestroy(&ts->vrtol));
4967     ts->vrtol = vrtol;
4968   }
4969   PetscFunctionReturn(PETSC_SUCCESS);
4970 }
4971 
4972 /*@
4973   TSGetTolerances - Get tolerances for local truncation error when using adaptive controller
4974 
4975   Logically Collective
4976 
4977   Input Parameter:
4978 . ts - time integration context
4979 
4980   Output Parameters:
4981 + atol  - scalar absolute tolerances, `NULL` to ignore
4982 . vatol - vector of absolute tolerances, `NULL` to ignore
4983 . rtol  - scalar relative tolerances, `NULL` to ignore
4984 - vrtol - vector of relative tolerances, `NULL` to ignore
4985 
4986   Level: beginner
4987 
4988 .seealso: [](ch_ts), `TS`, `TSAdapt`, `TSErrorWeightedNorm()`, `TSSetTolerances()`
4989 @*/
4990 PetscErrorCode TSGetTolerances(TS ts, PetscReal *atol, Vec *vatol, PetscReal *rtol, Vec *vrtol)
4991 {
4992   PetscFunctionBegin;
4993   if (atol) *atol = ts->atol;
4994   if (vatol) *vatol = ts->vatol;
4995   if (rtol) *rtol = ts->rtol;
4996   if (vrtol) *vrtol = ts->vrtol;
4997   PetscFunctionReturn(PETSC_SUCCESS);
4998 }
4999 
5000 /*@
5001   TSErrorWeightedNorm - compute a weighted norm of the difference between two state vectors based on supplied absolute and relative tolerances
5002 
5003   Collective
5004 
5005   Input Parameters:
5006 + ts        - time stepping context
5007 . U         - state vector, usually ts->vec_sol
5008 . Y         - state vector to be compared to U
5009 - wnormtype - norm type, either `NORM_2` or `NORM_INFINITY`
5010 
5011   Output Parameters:
5012 + norm  - weighted norm, a value of 1.0 achieves a balance between absolute and relative tolerances
5013 . norma - weighted norm, a value of 1.0 means that the error meets the absolute tolerance set by the user
5014 - normr - weighted norm, a value of 1.0 means that the error meets the relative tolerance set by the user
5015 
5016   Options Database Key:
5017 . -ts_adapt_wnormtype <wnormtype> - 2, INFINITY
5018 
5019   Level: developer
5020 
5021 .seealso: [](ch_ts), `TS`, `VecErrorWeightedNorms()`, `TSErrorWeightedENorm()`
5022 @*/
5023 PetscErrorCode TSErrorWeightedNorm(TS ts, Vec U, Vec Y, NormType wnormtype, PetscReal *norm, PetscReal *norma, PetscReal *normr)
5024 {
5025   PetscInt norma_loc, norm_loc, normr_loc;
5026 
5027   PetscFunctionBegin;
5028   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
5029   PetscCall(VecErrorWeightedNorms(U, Y, NULL, wnormtype, ts->atol, ts->vatol, ts->rtol, ts->vrtol, ts->adapt->ignore_max, norm, &norm_loc, norma, &norma_loc, normr, &normr_loc));
5030   if (wnormtype == NORM_2) {
5031     if (norm_loc) *norm = PetscSqrtReal(PetscSqr(*norm) / norm_loc);
5032     if (norma_loc) *norma = PetscSqrtReal(PetscSqr(*norma) / norma_loc);
5033     if (normr_loc) *normr = PetscSqrtReal(PetscSqr(*normr) / normr_loc);
5034   }
5035   PetscCheck(!PetscIsInfOrNanScalar(*norm), PetscObjectComm((PetscObject)ts), PETSC_ERR_FP, "Infinite or not-a-number generated in norm");
5036   PetscCheck(!PetscIsInfOrNanScalar(*norma), PetscObjectComm((PetscObject)ts), PETSC_ERR_FP, "Infinite or not-a-number generated in norma");
5037   PetscCheck(!PetscIsInfOrNanScalar(*normr), PetscObjectComm((PetscObject)ts), PETSC_ERR_FP, "Infinite or not-a-number generated in normr");
5038   PetscFunctionReturn(PETSC_SUCCESS);
5039 }
5040 
5041 /*@
5042   TSErrorWeightedENorm - compute a weighted error norm based on supplied absolute and relative tolerances
5043 
5044   Collective
5045 
5046   Input Parameters:
5047 + ts        - time stepping context
5048 . E         - error vector
5049 . U         - state vector, usually ts->vec_sol
5050 . Y         - state vector, previous time step
5051 - wnormtype - norm type, either `NORM_2` or `NORM_INFINITY`
5052 
5053   Output Parameters:
5054 + norm  - weighted norm, a value of 1.0 achieves a balance between absolute and relative tolerances
5055 . norma - weighted norm, a value of 1.0 means that the error meets the absolute tolerance set by the user
5056 - normr - weighted norm, a value of 1.0 means that the error meets the relative tolerance set by the user
5057 
5058   Options Database Key:
5059 . -ts_adapt_wnormtype <wnormtype> - 2, INFINITY
5060 
5061   Level: developer
5062 
5063 .seealso: [](ch_ts), `TS`, `VecErrorWeightedNorms()`, `TSErrorWeightedNorm()`
5064 @*/
5065 PetscErrorCode TSErrorWeightedENorm(TS ts, Vec E, Vec U, Vec Y, NormType wnormtype, PetscReal *norm, PetscReal *norma, PetscReal *normr)
5066 {
5067   PetscInt norma_loc, norm_loc, normr_loc;
5068 
5069   PetscFunctionBegin;
5070   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
5071   PetscCall(VecErrorWeightedNorms(U, Y, E, wnormtype, ts->atol, ts->vatol, ts->rtol, ts->vrtol, ts->adapt->ignore_max, norm, &norm_loc, norma, &norma_loc, normr, &normr_loc));
5072   if (wnormtype == NORM_2) {
5073     if (norm_loc) *norm = PetscSqrtReal(PetscSqr(*norm) / norm_loc);
5074     if (norma_loc) *norma = PetscSqrtReal(PetscSqr(*norma) / norma_loc);
5075     if (normr_loc) *normr = PetscSqrtReal(PetscSqr(*normr) / normr_loc);
5076   }
5077   PetscCheck(!PetscIsInfOrNanScalar(*norm), PetscObjectComm((PetscObject)ts), PETSC_ERR_FP, "Infinite or not-a-number generated in norm");
5078   PetscCheck(!PetscIsInfOrNanScalar(*norma), PetscObjectComm((PetscObject)ts), PETSC_ERR_FP, "Infinite or not-a-number generated in norma");
5079   PetscCheck(!PetscIsInfOrNanScalar(*normr), PetscObjectComm((PetscObject)ts), PETSC_ERR_FP, "Infinite or not-a-number generated in normr");
5080   PetscFunctionReturn(PETSC_SUCCESS);
5081 }
5082 
5083 /*@
5084   TSSetCFLTimeLocal - Set the local CFL constraint relative to forward Euler
5085 
5086   Logically Collective
5087 
5088   Input Parameters:
5089 + ts      - time stepping context
5090 - cfltime - maximum stable time step if using forward Euler (value can be different on each process)
5091 
5092   Note:
5093   After calling this function, the global CFL time can be obtained by calling TSGetCFLTime()
5094 
5095   Level: intermediate
5096 
5097 .seealso: [](ch_ts), `TSGetCFLTime()`, `TSADAPTCFL`
5098 @*/
5099 PetscErrorCode TSSetCFLTimeLocal(TS ts, PetscReal cfltime)
5100 {
5101   PetscFunctionBegin;
5102   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
5103   ts->cfltime_local = cfltime;
5104   ts->cfltime       = -1.;
5105   PetscFunctionReturn(PETSC_SUCCESS);
5106 }
5107 
5108 /*@
5109   TSGetCFLTime - Get the maximum stable time step according to CFL criteria applied to forward Euler
5110 
5111   Collective
5112 
5113   Input Parameter:
5114 . ts - time stepping context
5115 
5116   Output Parameter:
5117 . cfltime - maximum stable time step for forward Euler
5118 
5119   Level: advanced
5120 
5121 .seealso: [](ch_ts), `TSSetCFLTimeLocal()`
5122 @*/
5123 PetscErrorCode TSGetCFLTime(TS ts, PetscReal *cfltime)
5124 {
5125   PetscFunctionBegin;
5126   if (ts->cfltime < 0) PetscCall(MPIU_Allreduce(&ts->cfltime_local, &ts->cfltime, 1, MPIU_REAL, MPIU_MIN, PetscObjectComm((PetscObject)ts)));
5127   *cfltime = ts->cfltime;
5128   PetscFunctionReturn(PETSC_SUCCESS);
5129 }
5130 
5131 /*@
5132   TSVISetVariableBounds - Sets the lower and upper bounds for the solution vector. xl <= x <= xu
5133 
5134   Input Parameters:
5135 + ts - the `TS` context.
5136 . xl - lower bound.
5137 - xu - upper bound.
5138 
5139   Level: advanced
5140 
5141   Note:
5142   If this routine is not called then the lower and upper bounds are set to
5143   `PETSC_NINFINITY` and `PETSC_INFINITY` respectively during `SNESSetUp()`.
5144 
5145 .seealso: [](ch_ts), `TS`
5146 @*/
5147 PetscErrorCode TSVISetVariableBounds(TS ts, Vec xl, Vec xu)
5148 {
5149   SNES snes;
5150 
5151   PetscFunctionBegin;
5152   PetscCall(TSGetSNES(ts, &snes));
5153   PetscCall(SNESVISetVariableBounds(snes, xl, xu));
5154   PetscFunctionReturn(PETSC_SUCCESS);
5155 }
5156 
5157 /*@
5158   TSComputeLinearStability - computes the linear stability function at a point
5159 
5160   Collective
5161 
5162   Input Parameters:
5163 + ts - the `TS` context
5164 . xr - real part of input argument
5165 - xi - imaginary part of input argument
5166 
5167   Output Parameters:
5168 + yr - real part of function value
5169 - yi - imaginary part of function value
5170 
5171   Level: developer
5172 
5173 .seealso: [](ch_ts), `TS`, `TSSetRHSFunction()`, `TSComputeIFunction()`
5174 @*/
5175 PetscErrorCode TSComputeLinearStability(TS ts, PetscReal xr, PetscReal xi, PetscReal *yr, PetscReal *yi)
5176 {
5177   PetscFunctionBegin;
5178   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
5179   PetscUseTypeMethod(ts, linearstability, xr, xi, yr, yi);
5180   PetscFunctionReturn(PETSC_SUCCESS);
5181 }
5182 
5183 /*@
5184   TSRestartStep - Flags the solver to restart the next step
5185 
5186   Collective
5187 
5188   Input Parameter:
5189 . ts - the `TS` context obtained from `TSCreate()`
5190 
5191   Level: advanced
5192 
5193   Notes:
5194   Multistep methods like `TSBDF` or Runge-Kutta methods with FSAL property require restarting the solver in the event of
5195   discontinuities. These discontinuities may be introduced as a consequence of explicitly modifications to the solution
5196   vector (which PETSc attempts to detect and handle) or problem coefficients (which PETSc is not able to detect). For
5197   the sake of correctness and maximum safety, users are expected to call `TSRestart()` whenever they introduce
5198   discontinuities in callback routines (e.g. prestep and poststep routines, or implicit/rhs function routines with
5199   discontinuous source terms).
5200 
5201 .seealso: [](ch_ts), `TS`, `TSBDF`, `TSSolve()`, `TSSetPreStep()`, `TSSetPostStep()`
5202 @*/
5203 PetscErrorCode TSRestartStep(TS ts)
5204 {
5205   PetscFunctionBegin;
5206   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
5207   ts->steprestart = PETSC_TRUE;
5208   PetscFunctionReturn(PETSC_SUCCESS);
5209 }
5210 
5211 /*@
5212   TSRollBack - Rolls back one time step
5213 
5214   Collective
5215 
5216   Input Parameter:
5217 . ts - the `TS` context obtained from `TSCreate()`
5218 
5219   Level: advanced
5220 
5221 .seealso: [](ch_ts), `TS`, `TSCreate()`, `TSSetUp()`, `TSDestroy()`, `TSSolve()`, `TSSetPreStep()`, `TSSetPreStage()`, `TSInterpolate()`
5222 @*/
5223 PetscErrorCode TSRollBack(TS ts)
5224 {
5225   PetscFunctionBegin;
5226   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
5227   PetscCheck(!ts->steprollback, PetscObjectComm((PetscObject)ts), PETSC_ERR_ARG_WRONGSTATE, "TSRollBack already called");
5228   PetscUseTypeMethod(ts, rollback);
5229   ts->time_step  = ts->ptime - ts->ptime_prev;
5230   ts->ptime      = ts->ptime_prev;
5231   ts->ptime_prev = ts->ptime_prev_rollback;
5232   ts->steps--;
5233   ts->steprollback = PETSC_TRUE;
5234   PetscFunctionReturn(PETSC_SUCCESS);
5235 }
5236 
5237 /*@
5238   TSGetStages - Get the number of stages and stage values
5239 
5240   Input Parameter:
5241 . ts - the `TS` context obtained from `TSCreate()`
5242 
5243   Output Parameters:
5244 + ns - the number of stages
5245 - Y  - the current stage vectors
5246 
5247   Level: advanced
5248 
5249   Note:
5250   Both `ns` and `Y` can be `NULL`.
5251 
5252 .seealso: [](ch_ts), `TS`, `TSCreate()`
5253 @*/
5254 PetscErrorCode TSGetStages(TS ts, PetscInt *ns, Vec **Y)
5255 {
5256   PetscFunctionBegin;
5257   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
5258   if (ns) PetscAssertPointer(ns, 2);
5259   if (Y) PetscAssertPointer(Y, 3);
5260   if (!ts->ops->getstages) {
5261     if (ns) *ns = 0;
5262     if (Y) *Y = NULL;
5263   } else PetscUseTypeMethod(ts, getstages, ns, Y);
5264   PetscFunctionReturn(PETSC_SUCCESS);
5265 }
5266 
5267 /*@C
5268   TSComputeIJacobianDefaultColor - Computes the Jacobian using finite differences and coloring to exploit matrix sparsity.
5269 
5270   Collective
5271 
5272   Input Parameters:
5273 + ts    - the `TS` context
5274 . t     - current timestep
5275 . U     - state vector
5276 . Udot  - time derivative of state vector
5277 . shift - shift to apply, see note below
5278 - ctx   - an optional user context
5279 
5280   Output Parameters:
5281 + J - Jacobian matrix (not altered in this routine)
5282 - B - newly computed Jacobian matrix to use with preconditioner (generally the same as `J`)
5283 
5284   Level: intermediate
5285 
5286   Notes:
5287   If F(t,U,Udot)=0 is the DAE, the required Jacobian is
5288 
5289   dF/dU + shift*dF/dUdot
5290 
5291   Most users should not need to explicitly call this routine, as it
5292   is used internally within the nonlinear solvers.
5293 
5294   This will first try to get the coloring from the `DM`.  If the `DM` type has no coloring
5295   routine, then it will try to get the coloring from the matrix.  This requires that the
5296   matrix have nonzero entries precomputed.
5297 
5298 .seealso: [](ch_ts), `TS`, `TSSetIJacobian()`, `MatFDColoringCreate()`, `MatFDColoringSetFunction()`
5299 @*/
5300 PetscErrorCode TSComputeIJacobianDefaultColor(TS ts, PetscReal t, Vec U, Vec Udot, PetscReal shift, Mat J, Mat B, void *ctx)
5301 {
5302   SNES          snes;
5303   MatFDColoring color;
5304   PetscBool     hascolor, matcolor = PETSC_FALSE;
5305 
5306   PetscFunctionBegin;
5307   PetscCall(PetscOptionsGetBool(((PetscObject)ts)->options, ((PetscObject)ts)->prefix, "-ts_fd_color_use_mat", &matcolor, NULL));
5308   PetscCall(PetscObjectQuery((PetscObject)B, "TSMatFDColoring", (PetscObject *)&color));
5309   if (!color) {
5310     DM         dm;
5311     ISColoring iscoloring;
5312 
5313     PetscCall(TSGetDM(ts, &dm));
5314     PetscCall(DMHasColoring(dm, &hascolor));
5315     if (hascolor && !matcolor) {
5316       PetscCall(DMCreateColoring(dm, IS_COLORING_GLOBAL, &iscoloring));
5317       PetscCall(MatFDColoringCreate(B, iscoloring, &color));
5318       PetscCall(MatFDColoringSetFunction(color, (PetscErrorCode(*)(void))SNESTSFormFunction, (void *)ts));
5319       PetscCall(MatFDColoringSetFromOptions(color));
5320       PetscCall(MatFDColoringSetUp(B, iscoloring, color));
5321       PetscCall(ISColoringDestroy(&iscoloring));
5322     } else {
5323       MatColoring mc;
5324 
5325       PetscCall(MatColoringCreate(B, &mc));
5326       PetscCall(MatColoringSetDistance(mc, 2));
5327       PetscCall(MatColoringSetType(mc, MATCOLORINGSL));
5328       PetscCall(MatColoringSetFromOptions(mc));
5329       PetscCall(MatColoringApply(mc, &iscoloring));
5330       PetscCall(MatColoringDestroy(&mc));
5331       PetscCall(MatFDColoringCreate(B, iscoloring, &color));
5332       PetscCall(MatFDColoringSetFunction(color, (PetscErrorCode(*)(void))SNESTSFormFunction, (void *)ts));
5333       PetscCall(MatFDColoringSetFromOptions(color));
5334       PetscCall(MatFDColoringSetUp(B, iscoloring, color));
5335       PetscCall(ISColoringDestroy(&iscoloring));
5336     }
5337     PetscCall(PetscObjectCompose((PetscObject)B, "TSMatFDColoring", (PetscObject)color));
5338     PetscCall(PetscObjectDereference((PetscObject)color));
5339   }
5340   PetscCall(TSGetSNES(ts, &snes));
5341   PetscCall(MatFDColoringApply(B, color, U, snes));
5342   if (J != B) {
5343     PetscCall(MatAssemblyBegin(J, MAT_FINAL_ASSEMBLY));
5344     PetscCall(MatAssemblyEnd(J, MAT_FINAL_ASSEMBLY));
5345   }
5346   PetscFunctionReturn(PETSC_SUCCESS);
5347 }
5348 
5349 /*@C
5350   TSSetFunctionDomainError - Set a function that tests if the current state vector is valid
5351 
5352   Input Parameters:
5353 + ts   - the `TS` context
5354 - func - function called within `TSFunctionDomainError()`
5355 
5356   Calling sequence of `func`:
5357 + ts     - the `TS` context
5358 . time   - the current time (of the stage)
5359 . state  - the state to check if it is valid
5360 - reject - (output parameter) `PETSC_FALSE` if the state is acceptable, `PETSC_TRUE` if not acceptable
5361 
5362   Level: intermediate
5363 
5364   Notes:
5365   If an implicit ODE solver is being used then, in addition to providing this routine, the
5366   user's code should call `SNESSetFunctionDomainError()` when domain errors occur during
5367   function evaluations where the functions are provided by `TSSetIFunction()` or `TSSetRHSFunction()`.
5368   Use `TSGetSNES()` to obtain the `SNES` object
5369 
5370   Developer Notes:
5371   The naming of this function is inconsistent with the `SNESSetFunctionDomainError()`
5372   since one takes a function pointer and the other does not.
5373 
5374 .seealso: [](ch_ts), `TSAdaptCheckStage()`, `TSFunctionDomainError()`, `SNESSetFunctionDomainError()`, `TSGetSNES()`
5375 @*/
5376 PetscErrorCode TSSetFunctionDomainError(TS ts, PetscErrorCode (*func)(TS ts, PetscReal time, Vec state, PetscBool *reject))
5377 {
5378   PetscFunctionBegin;
5379   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
5380   ts->functiondomainerror = func;
5381   PetscFunctionReturn(PETSC_SUCCESS);
5382 }
5383 
5384 /*@
5385   TSFunctionDomainError - Checks if the current state is valid
5386 
5387   Input Parameters:
5388 + ts        - the `TS` context
5389 . stagetime - time of the simulation
5390 - Y         - state vector to check.
5391 
5392   Output Parameter:
5393 . accept - Set to `PETSC_FALSE` if the current state vector is valid.
5394 
5395   Level: developer
5396 
5397   Note:
5398   This function is called by the `TS` integration routines and calls the user provided function (set with `TSSetFunctionDomainError()`)
5399   to check if the current state is valid.
5400 
5401 .seealso: [](ch_ts), `TS`, `TSSetFunctionDomainError()`
5402 @*/
5403 PetscErrorCode TSFunctionDomainError(TS ts, PetscReal stagetime, Vec Y, PetscBool *accept)
5404 {
5405   PetscFunctionBegin;
5406   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
5407   *accept = PETSC_TRUE;
5408   if (ts->functiondomainerror) PetscCall((*ts->functiondomainerror)(ts, stagetime, Y, accept));
5409   PetscFunctionReturn(PETSC_SUCCESS);
5410 }
5411 
5412 /*@C
5413   TSClone - This function clones a time step `TS` object.
5414 
5415   Collective
5416 
5417   Input Parameter:
5418 . tsin - The input `TS`
5419 
5420   Output Parameter:
5421 . tsout - The output `TS` (cloned)
5422 
5423   Level: developer
5424 
5425   Notes:
5426   This function is used to create a clone of a `TS` object. It is used in `TSARKIMEX` for initializing the slope for first stage explicit methods.
5427   It will likely be replaced in the future with a mechanism of switching methods on the fly.
5428 
5429   When using `TSDestroy()` on a clone the user has to first reset the correct `TS` reference in the embedded `SNES` object: e.g., by running
5430 .vb
5431  SNES snes_dup = NULL;
5432  TSGetSNES(ts,&snes_dup);
5433  TSSetSNES(ts,snes_dup);
5434 .ve
5435 
5436 .seealso: [](ch_ts), `TS`, `SNES`, `TSCreate()`, `TSSetType()`, `TSSetUp()`, `TSDestroy()`, `TSSetProblemType()`
5437 @*/
5438 PetscErrorCode TSClone(TS tsin, TS *tsout)
5439 {
5440   TS     t;
5441   SNES   snes_start;
5442   DM     dm;
5443   TSType type;
5444 
5445   PetscFunctionBegin;
5446   PetscAssertPointer(tsin, 1);
5447   *tsout = NULL;
5448 
5449   PetscCall(PetscHeaderCreate(t, TS_CLASSID, "TS", "Time stepping", "TS", PetscObjectComm((PetscObject)tsin), TSDestroy, TSView));
5450 
5451   /* General TS description */
5452   t->numbermonitors    = 0;
5453   t->monitorFrequency  = 1;
5454   t->setupcalled       = 0;
5455   t->ksp_its           = 0;
5456   t->snes_its          = 0;
5457   t->nwork             = 0;
5458   t->rhsjacobian.time  = PETSC_MIN_REAL;
5459   t->rhsjacobian.scale = 1.;
5460   t->ijacobian.shift   = 1.;
5461 
5462   PetscCall(TSGetSNES(tsin, &snes_start));
5463   PetscCall(TSSetSNES(t, snes_start));
5464 
5465   PetscCall(TSGetDM(tsin, &dm));
5466   PetscCall(TSSetDM(t, dm));
5467 
5468   t->adapt = tsin->adapt;
5469   PetscCall(PetscObjectReference((PetscObject)t->adapt));
5470 
5471   t->trajectory = tsin->trajectory;
5472   PetscCall(PetscObjectReference((PetscObject)t->trajectory));
5473 
5474   t->event = tsin->event;
5475   if (t->event) t->event->refct++;
5476 
5477   t->problem_type      = tsin->problem_type;
5478   t->ptime             = tsin->ptime;
5479   t->ptime_prev        = tsin->ptime_prev;
5480   t->time_step         = tsin->time_step;
5481   t->max_time          = tsin->max_time;
5482   t->steps             = tsin->steps;
5483   t->max_steps         = tsin->max_steps;
5484   t->equation_type     = tsin->equation_type;
5485   t->atol              = tsin->atol;
5486   t->rtol              = tsin->rtol;
5487   t->max_snes_failures = tsin->max_snes_failures;
5488   t->max_reject        = tsin->max_reject;
5489   t->errorifstepfailed = tsin->errorifstepfailed;
5490 
5491   PetscCall(TSGetType(tsin, &type));
5492   PetscCall(TSSetType(t, type));
5493 
5494   t->vec_sol = NULL;
5495 
5496   t->cfltime          = tsin->cfltime;
5497   t->cfltime_local    = tsin->cfltime_local;
5498   t->exact_final_time = tsin->exact_final_time;
5499 
5500   t->ops[0] = tsin->ops[0];
5501 
5502   if (((PetscObject)tsin)->fortran_func_pointers) {
5503     PetscInt i;
5504     PetscCall(PetscMalloc((10) * sizeof(void (*)(void)), &((PetscObject)t)->fortran_func_pointers));
5505     for (i = 0; i < 10; i++) ((PetscObject)t)->fortran_func_pointers[i] = ((PetscObject)tsin)->fortran_func_pointers[i];
5506   }
5507   *tsout = t;
5508   PetscFunctionReturn(PETSC_SUCCESS);
5509 }
5510 
5511 static PetscErrorCode RHSWrapperFunction_TSRHSJacobianTest(void *ctx, Vec x, Vec y)
5512 {
5513   TS ts = (TS)ctx;
5514 
5515   PetscFunctionBegin;
5516   PetscCall(TSComputeRHSFunction(ts, 0, x, y));
5517   PetscFunctionReturn(PETSC_SUCCESS);
5518 }
5519 
5520 /*@
5521   TSRHSJacobianTest - Compares the multiply routine provided to the `MATSHELL` with differencing on the `TS` given RHS function.
5522 
5523   Logically Collective
5524 
5525   Input Parameter:
5526 . ts - the time stepping routine
5527 
5528   Output Parameter:
5529 . flg - `PETSC_TRUE` if the multiply is likely correct
5530 
5531   Options Database Key:
5532 . -ts_rhs_jacobian_test_mult -mat_shell_test_mult_view - run the test at each timestep of the integrator
5533 
5534   Level: advanced
5535 
5536   Note:
5537   This only works for problems defined using `TSSetRHSFunction()` and Jacobian NOT `TSSetIFunction()` and Jacobian
5538 
5539 .seealso: [](ch_ts), `TS`, `Mat`, `MATSHELL`, `MatCreateShell()`, `MatShellGetContext()`, `MatShellGetOperation()`, `MatShellTestMultTranspose()`, `TSRHSJacobianTestTranspose()`
5540 @*/
5541 PetscErrorCode TSRHSJacobianTest(TS ts, PetscBool *flg)
5542 {
5543   Mat           J, B;
5544   TSRHSJacobian func;
5545   void         *ctx;
5546 
5547   PetscFunctionBegin;
5548   PetscCall(TSGetRHSJacobian(ts, &J, &B, &func, &ctx));
5549   PetscCall((*func)(ts, 0.0, ts->vec_sol, J, B, ctx));
5550   PetscCall(MatShellTestMult(J, RHSWrapperFunction_TSRHSJacobianTest, ts->vec_sol, ts, flg));
5551   PetscFunctionReturn(PETSC_SUCCESS);
5552 }
5553 
5554 /*@C
5555   TSRHSJacobianTestTranspose - Compares the multiply transpose routine provided to the `MATSHELL` with differencing on the `TS` given RHS function.
5556 
5557   Logically Collective
5558 
5559   Input Parameter:
5560 . ts - the time stepping routine
5561 
5562   Output Parameter:
5563 . flg - `PETSC_TRUE` if the multiply is likely correct
5564 
5565   Options Database Key:
5566 . -ts_rhs_jacobian_test_mult_transpose -mat_shell_test_mult_transpose_view - run the test at each timestep of the integrator
5567 
5568   Level: advanced
5569 
5570   Notes:
5571   This only works for problems defined using `TSSetRHSFunction()` and Jacobian NOT `TSSetIFunction()` and Jacobian
5572 
5573 .seealso: [](ch_ts), `TS`, `Mat`, `MatCreateShell()`, `MatShellGetContext()`, `MatShellGetOperation()`, `MatShellTestMultTranspose()`, `TSRHSJacobianTest()`
5574 @*/
5575 PetscErrorCode TSRHSJacobianTestTranspose(TS ts, PetscBool *flg)
5576 {
5577   Mat           J, B;
5578   void         *ctx;
5579   TSRHSJacobian func;
5580 
5581   PetscFunctionBegin;
5582   PetscCall(TSGetRHSJacobian(ts, &J, &B, &func, &ctx));
5583   PetscCall((*func)(ts, 0.0, ts->vec_sol, J, B, ctx));
5584   PetscCall(MatShellTestMultTranspose(J, RHSWrapperFunction_TSRHSJacobianTest, ts->vec_sol, ts, flg));
5585   PetscFunctionReturn(PETSC_SUCCESS);
5586 }
5587 
5588 /*@
5589   TSSetUseSplitRHSFunction - Use the split RHSFunction when a multirate method is used.
5590 
5591   Logically Collective
5592 
5593   Input Parameters:
5594 + ts                   - timestepping context
5595 - use_splitrhsfunction - `PETSC_TRUE` indicates that the split RHSFunction will be used
5596 
5597   Options Database Key:
5598 . -ts_use_splitrhsfunction - <true,false>
5599 
5600   Level: intermediate
5601 
5602   Note:
5603   This is only for multirate methods
5604 
5605 .seealso: [](ch_ts), `TS`, `TSGetUseSplitRHSFunction()`
5606 @*/
5607 PetscErrorCode TSSetUseSplitRHSFunction(TS ts, PetscBool use_splitrhsfunction)
5608 {
5609   PetscFunctionBegin;
5610   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
5611   ts->use_splitrhsfunction = use_splitrhsfunction;
5612   PetscFunctionReturn(PETSC_SUCCESS);
5613 }
5614 
5615 /*@
5616   TSGetUseSplitRHSFunction - Gets whether to use the split RHSFunction when a multirate method is used.
5617 
5618   Not Collective
5619 
5620   Input Parameter:
5621 . ts - timestepping context
5622 
5623   Output Parameter:
5624 . use_splitrhsfunction - `PETSC_TRUE` indicates that the split RHSFunction will be used
5625 
5626   Level: intermediate
5627 
5628 .seealso: [](ch_ts), `TS`, `TSSetUseSplitRHSFunction()`
5629 @*/
5630 PetscErrorCode TSGetUseSplitRHSFunction(TS ts, PetscBool *use_splitrhsfunction)
5631 {
5632   PetscFunctionBegin;
5633   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
5634   *use_splitrhsfunction = ts->use_splitrhsfunction;
5635   PetscFunctionReturn(PETSC_SUCCESS);
5636 }
5637 
5638 /*@
5639   TSSetMatStructure - sets the relationship between the nonzero structure of the RHS Jacobian matrix to the IJacobian matrix.
5640 
5641   Logically  Collective
5642 
5643   Input Parameters:
5644 + ts  - the time-stepper
5645 - str - the structure (the default is `UNKNOWN_NONZERO_PATTERN`)
5646 
5647   Level: intermediate
5648 
5649   Note:
5650   When the relationship between the nonzero structures is known and supplied the solution process can be much faster
5651 
5652 .seealso: [](ch_ts), `TS`, `MatAXPY()`, `MatStructure`
5653  @*/
5654 PetscErrorCode TSSetMatStructure(TS ts, MatStructure str)
5655 {
5656   PetscFunctionBegin;
5657   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
5658   ts->axpy_pattern = str;
5659   PetscFunctionReturn(PETSC_SUCCESS);
5660 }
5661 
5662 /*@
5663   TSSetTimeSpan - sets the time span. The solution will be computed and stored for each time requested in the span
5664 
5665   Collective
5666 
5667   Input Parameters:
5668 + ts         - the time-stepper
5669 . n          - number of the time points (>=2)
5670 - span_times - array of the time points. The first element and the last element are the initial time and the final time respectively.
5671 
5672   Options Database Key:
5673 . -ts_time_span <t0,...tf> - Sets the time span
5674 
5675   Level: intermediate
5676 
5677   Notes:
5678   The elements in tspan must be all increasing. They correspond to the intermediate points for time integration.
5679   `TS_EXACTFINALTIME_MATCHSTEP` must be used to make the last time step in each sub-interval match the intermediate points specified.
5680   The intermediate solutions are saved in a vector array that can be accessed with `TSGetTimeSpanSolutions()`. Thus using time span may
5681   pressure the memory system when using a large number of span points.
5682 
5683 .seealso: [](ch_ts), `TS`, `TSGetTimeSpan()`, `TSGetTimeSpanSolutions()`
5684  @*/
5685 PetscErrorCode TSSetTimeSpan(TS ts, PetscInt n, PetscReal *span_times)
5686 {
5687   PetscFunctionBegin;
5688   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
5689   PetscCheck(n >= 2, PetscObjectComm((PetscObject)ts), PETSC_ERR_ARG_WRONG, "Minimum time span size is 2 but %" PetscInt_FMT " is provided", n);
5690   if (ts->tspan && n != ts->tspan->num_span_times) {
5691     PetscCall(PetscFree(ts->tspan->span_times));
5692     PetscCall(VecDestroyVecs(ts->tspan->num_span_times, &ts->tspan->vecs_sol));
5693     PetscCall(PetscMalloc1(n, &ts->tspan->span_times));
5694   }
5695   if (!ts->tspan) {
5696     TSTimeSpan tspan;
5697     PetscCall(PetscNew(&tspan));
5698     PetscCall(PetscMalloc1(n, &tspan->span_times));
5699     tspan->reltol  = 1e-6;
5700     tspan->abstol  = 10 * PETSC_MACHINE_EPSILON;
5701     tspan->worktol = 0;
5702     ts->tspan      = tspan;
5703   }
5704   ts->tspan->num_span_times = n;
5705   PetscCall(PetscArraycpy(ts->tspan->span_times, span_times, n));
5706   PetscCall(TSSetTime(ts, ts->tspan->span_times[0]));
5707   PetscCall(TSSetMaxTime(ts, ts->tspan->span_times[n - 1]));
5708   PetscFunctionReturn(PETSC_SUCCESS);
5709 }
5710 
5711 /*@C
5712   TSGetTimeSpan - gets the time span set with `TSSetTimeSpan()`
5713 
5714   Not Collective
5715 
5716   Input Parameter:
5717 . ts - the time-stepper
5718 
5719   Output Parameters:
5720 + n          - number of the time points (>=2)
5721 - span_times - array of the time points. The first element and the last element are the initial time and the final time respectively.
5722 
5723   Level: beginner
5724 
5725   Note:
5726   The values obtained are valid until the `TS` object is destroyed.
5727 
5728   Both `n` and `span_times` can be `NULL`.
5729 
5730 .seealso: [](ch_ts), `TS`, `TSSetTimeSpan()`, `TSGetTimeSpanSolutions()`
5731  @*/
5732 PetscErrorCode TSGetTimeSpan(TS ts, PetscInt *n, const PetscReal **span_times)
5733 {
5734   PetscFunctionBegin;
5735   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
5736   if (n) PetscAssertPointer(n, 2);
5737   if (span_times) PetscAssertPointer(span_times, 3);
5738   if (!ts->tspan) {
5739     if (n) *n = 0;
5740     if (span_times) *span_times = NULL;
5741   } else {
5742     if (n) *n = ts->tspan->num_span_times;
5743     if (span_times) *span_times = ts->tspan->span_times;
5744   }
5745   PetscFunctionReturn(PETSC_SUCCESS);
5746 }
5747 
5748 /*@
5749   TSGetTimeSpanSolutions - Get the number of solutions and the solutions at the time points specified by the time span.
5750 
5751   Input Parameter:
5752 . ts - the `TS` context obtained from `TSCreate()`
5753 
5754   Output Parameters:
5755 + nsol - the number of solutions
5756 - Sols - the solution vectors
5757 
5758   Level: intermediate
5759 
5760   Notes:
5761   Both `nsol` and `Sols` can be `NULL`.
5762 
5763   Some time points in the time span may be skipped by `TS` so that `nsol` is less than the number of points specified by `TSSetTimeSpan()`.
5764   For example, manipulating the step size, especially with a reduced precision, may cause `TS` to step over certain points in the span.
5765 
5766 .seealso: [](ch_ts), `TS`, `TSSetTimeSpan()`
5767 @*/
5768 PetscErrorCode TSGetTimeSpanSolutions(TS ts, PetscInt *nsol, Vec **Sols)
5769 {
5770   PetscFunctionBegin;
5771   PetscValidHeaderSpecific(ts, TS_CLASSID, 1);
5772   if (nsol) PetscAssertPointer(nsol, 2);
5773   if (Sols) PetscAssertPointer(Sols, 3);
5774   if (!ts->tspan) {
5775     if (nsol) *nsol = 0;
5776     if (Sols) *Sols = NULL;
5777   } else {
5778     if (nsol) *nsol = ts->tspan->spanctr;
5779     if (Sols) *Sols = ts->tspan->vecs_sol;
5780   }
5781   PetscFunctionReturn(PETSC_SUCCESS);
5782 }
5783 
5784 /*@C
5785   TSPruneIJacobianColor - Remove nondiagonal zeros in the Jacobian matrix and update the `MatMFFD` coloring information.
5786 
5787   Collective
5788 
5789   Input Parameters:
5790 + ts - the `TS` context
5791 . J  - Jacobian matrix (not altered in this routine)
5792 - B  - newly computed Jacobian matrix to use with preconditioner
5793 
5794   Level: intermediate
5795 
5796   Notes:
5797   This function improves the `MatFDColoring` performance when the Jacobian matrix was over-allocated or contains
5798   many constant zeros entries, which is typically the case when the matrix is generated by a `DM`
5799   and multiple fields are involved.
5800 
5801   Users need to make sure that the Jacobian matrix is properly filled to reflect the sparsity
5802   structure. For `MatFDColoring`, the values of nonzero entries are not important. So one can
5803   usually call `TSComputeIJacobian()` with randomized input vectors to generate a dummy Jacobian.
5804   `TSComputeIJacobian()` should be called before `TSSolve()` but after `TSSetUp()`.
5805 
5806 .seealso: [](ch_ts), `TS`, `MatFDColoring`, `TSComputeIJacobianDefaultColor()`, `MatEliminateZeros()`, `MatFDColoringCreate()`, `MatFDColoringSetFunction()`
5807 @*/
5808 PetscErrorCode TSPruneIJacobianColor(TS ts, Mat J, Mat B)
5809 {
5810   MatColoring   mc            = NULL;
5811   ISColoring    iscoloring    = NULL;
5812   MatFDColoring matfdcoloring = NULL;
5813 
5814   PetscFunctionBegin;
5815   /* Generate new coloring after eliminating zeros in the matrix */
5816   PetscCall(MatEliminateZeros(B, PETSC_TRUE));
5817   PetscCall(MatColoringCreate(B, &mc));
5818   PetscCall(MatColoringSetDistance(mc, 2));
5819   PetscCall(MatColoringSetType(mc, MATCOLORINGSL));
5820   PetscCall(MatColoringSetFromOptions(mc));
5821   PetscCall(MatColoringApply(mc, &iscoloring));
5822   PetscCall(MatColoringDestroy(&mc));
5823   /* Replace the old coloring with the new one */
5824   PetscCall(MatFDColoringCreate(B, iscoloring, &matfdcoloring));
5825   PetscCall(MatFDColoringSetFunction(matfdcoloring, (PetscErrorCode(*)(void))SNESTSFormFunction, (void *)ts));
5826   PetscCall(MatFDColoringSetFromOptions(matfdcoloring));
5827   PetscCall(MatFDColoringSetUp(B, iscoloring, matfdcoloring));
5828   PetscCall(PetscObjectCompose((PetscObject)B, "TSMatFDColoring", (PetscObject)matfdcoloring));
5829   PetscCall(PetscObjectDereference((PetscObject)matfdcoloring));
5830   PetscCall(ISColoringDestroy(&iscoloring));
5831   PetscFunctionReturn(PETSC_SUCCESS);
5832 }
5833