1 #include <../src/tao/complementarity/impls/ssls/ssls.h> 2 /* 3 Context for ASXLS 4 -- active-set - reduced matrices formed 5 - inherit properties of original system 6 -- semismooth (S) - function not differentiable 7 - merit function continuously differentiable 8 - Fischer-Burmeister reformulation of complementarity 9 - Billups composition for two finite bounds 10 -- infeasible (I) - iterates not guaranteed to remain within bounds 11 -- feasible (F) - iterates guaranteed to remain within bounds 12 -- linesearch (LS) - Armijo rule on direction 13 14 Many other reformulations are possible and combinations of 15 feasible/infeasible and linesearch/trust region are possible. 16 17 Basic theory 18 Fischer-Burmeister reformulation is semismooth with a continuously 19 differentiable merit function and strongly semismooth if the F has 20 lipschitz continuous derivatives. 21 22 Every accumulation point generated by the algorithm is a stationary 23 point for the merit function. Stationary points of the merit function 24 are solutions of the complementarity problem if 25 a. the stationary point has a BD-regular subdifferential, or 26 b. the Schur complement F'/F'_ff is a P_0-matrix where ff is the 27 index set corresponding to the free variables. 28 29 If one of the accumulation points has a BD-regular subdifferential then 30 a. the entire sequence converges to this accumulation point at 31 a local q-superlinear rate 32 b. if in addition the reformulation is strongly semismooth near 33 this accumulation point, then the algorithm converges at a 34 local q-quadratic rate. 35 36 The theory for the feasible version follows from the feasible descent 37 algorithm framework. 38 39 References: 40 + * - Billups, "Algorithms for Complementarity Problems and Generalized 41 Equations," Ph.D thesis, University of Wisconsin Madison, 1995. 42 . * - De Luca, Facchinei, Kanzow, "A Semismooth Equation Approach to the 43 Solution of Nonlinear Complementarity Problems," Mathematical 44 Programming, 75, 1996. 45 . * - Ferris, Kanzow, Munson, "Feasible Descent Algorithms for Mixed 46 Complementarity Problems," Mathematical Programming, 86, 47 1999. 48 . * - Fischer, "A Special Newton type Optimization Method," Optimization, 49 24, 1992 50 - * - Munson, Facchinei, Ferris, Fischer, Kanzow, "The Semismooth Algorithm 51 for Large Scale Complementarity Problems," Technical Report, 52 University of Wisconsin Madison, 1999. 53 */ 54 55 static PetscErrorCode TaoSetUp_ASILS(Tao tao) 56 { 57 TAO_SSLS *asls = (TAO_SSLS *)tao->data; 58 59 PetscFunctionBegin; 60 PetscCall(VecDuplicate(tao->solution, &tao->gradient)); 61 PetscCall(VecDuplicate(tao->solution, &tao->stepdirection)); 62 PetscCall(VecDuplicate(tao->solution, &asls->ff)); 63 PetscCall(VecDuplicate(tao->solution, &asls->dpsi)); 64 PetscCall(VecDuplicate(tao->solution, &asls->da)); 65 PetscCall(VecDuplicate(tao->solution, &asls->db)); 66 PetscCall(VecDuplicate(tao->solution, &asls->t1)); 67 PetscCall(VecDuplicate(tao->solution, &asls->t2)); 68 asls->fixed = NULL; 69 asls->free = NULL; 70 asls->J_sub = NULL; 71 asls->Jpre_sub = NULL; 72 asls->w = NULL; 73 asls->r1 = NULL; 74 asls->r2 = NULL; 75 asls->r3 = NULL; 76 asls->dxfree = NULL; 77 PetscFunctionReturn(0); 78 } 79 80 static PetscErrorCode Tao_ASLS_FunctionGradient(TaoLineSearch ls, Vec X, PetscReal *fcn, Vec G, void *ptr) 81 { 82 Tao tao = (Tao)ptr; 83 TAO_SSLS *asls = (TAO_SSLS *)tao->data; 84 85 PetscFunctionBegin; 86 PetscCall(TaoComputeConstraints(tao, X, tao->constraints)); 87 PetscCall(VecFischer(X, tao->constraints, tao->XL, tao->XU, asls->ff)); 88 PetscCall(VecNorm(asls->ff, NORM_2, &asls->merit)); 89 *fcn = 0.5 * asls->merit * asls->merit; 90 91 PetscCall(TaoComputeJacobian(tao, tao->solution, tao->jacobian, tao->jacobian_pre)); 92 PetscCall(MatDFischer(tao->jacobian, tao->solution, tao->constraints, tao->XL, tao->XU, asls->t1, asls->t2, asls->da, asls->db)); 93 PetscCall(VecPointwiseMult(asls->t1, asls->ff, asls->db)); 94 PetscCall(MatMultTranspose(tao->jacobian, asls->t1, G)); 95 PetscCall(VecPointwiseMult(asls->t1, asls->ff, asls->da)); 96 PetscCall(VecAXPY(G, 1.0, asls->t1)); 97 PetscFunctionReturn(0); 98 } 99 100 static PetscErrorCode TaoDestroy_ASILS(Tao tao) 101 { 102 TAO_SSLS *ssls = (TAO_SSLS *)tao->data; 103 104 PetscFunctionBegin; 105 PetscCall(VecDestroy(&ssls->ff)); 106 PetscCall(VecDestroy(&ssls->dpsi)); 107 PetscCall(VecDestroy(&ssls->da)); 108 PetscCall(VecDestroy(&ssls->db)); 109 PetscCall(VecDestroy(&ssls->w)); 110 PetscCall(VecDestroy(&ssls->t1)); 111 PetscCall(VecDestroy(&ssls->t2)); 112 PetscCall(VecDestroy(&ssls->r1)); 113 PetscCall(VecDestroy(&ssls->r2)); 114 PetscCall(VecDestroy(&ssls->r3)); 115 PetscCall(VecDestroy(&ssls->dxfree)); 116 PetscCall(MatDestroy(&ssls->J_sub)); 117 PetscCall(MatDestroy(&ssls->Jpre_sub)); 118 PetscCall(ISDestroy(&ssls->fixed)); 119 PetscCall(ISDestroy(&ssls->free)); 120 PetscCall(KSPDestroy(&tao->ksp)); 121 PetscCall(PetscFree(tao->data)); 122 PetscFunctionReturn(0); 123 } 124 125 static PetscErrorCode TaoSolve_ASILS(Tao tao) 126 { 127 TAO_SSLS *asls = (TAO_SSLS *)tao->data; 128 PetscReal psi, ndpsi, normd, innerd, t = 0; 129 PetscInt nf; 130 TaoLineSearchConvergedReason ls_reason; 131 132 PetscFunctionBegin; 133 /* Assume that Setup has been called! 134 Set the structure for the Jacobian and create a linear solver. */ 135 136 PetscCall(TaoComputeVariableBounds(tao)); 137 PetscCall(TaoLineSearchSetObjectiveAndGradientRoutine(tao->linesearch, Tao_ASLS_FunctionGradient, tao)); 138 PetscCall(TaoLineSearchSetObjectiveRoutine(tao->linesearch, Tao_SSLS_Function, tao)); 139 140 /* Calculate the function value and fischer function value at the 141 current iterate */ 142 PetscCall(TaoLineSearchComputeObjectiveAndGradient(tao->linesearch, tao->solution, &psi, asls->dpsi)); 143 PetscCall(VecNorm(asls->dpsi, NORM_2, &ndpsi)); 144 145 tao->reason = TAO_CONTINUE_ITERATING; 146 while (1) { 147 /* Check the termination criteria */ 148 PetscCall(PetscInfo(tao, "iter %" PetscInt_FMT ", merit: %g, ||dpsi||: %g\n", tao->niter, (double)asls->merit, (double)ndpsi)); 149 PetscCall(TaoLogConvergenceHistory(tao, asls->merit, ndpsi, 0.0, tao->ksp_its)); 150 PetscCall(TaoMonitor(tao, tao->niter, asls->merit, ndpsi, 0.0, t)); 151 PetscUseTypeMethod(tao, convergencetest, tao->cnvP); 152 if (TAO_CONTINUE_ITERATING != tao->reason) break; 153 154 /* Call general purpose update function */ 155 PetscTryTypeMethod(tao, update, tao->niter, tao->user_update); 156 tao->niter++; 157 158 /* We are going to solve a linear system of equations. We need to 159 set the tolerances for the solve so that we maintain an asymptotic 160 rate of convergence that is superlinear. 161 Note: these tolerances are for the reduced system. We really need 162 to make sure that the full system satisfies the full-space conditions. 163 164 This rule gives superlinear asymptotic convergence 165 asls->atol = min(0.5, asls->merit*sqrt(asls->merit)); 166 asls->rtol = 0.0; 167 168 This rule gives quadratic asymptotic convergence 169 asls->atol = min(0.5, asls->merit*asls->merit); 170 asls->rtol = 0.0; 171 172 Calculate a free and fixed set of variables. The fixed set of 173 variables are those for the d_b is approximately equal to zero. 174 The definition of approximately changes as we approach the solution 175 to the problem. 176 177 No one rule is guaranteed to work in all cases. The following 178 definition is based on the norm of the Jacobian matrix. If the 179 norm is large, the tolerance becomes smaller. */ 180 PetscCall(MatNorm(tao->jacobian, NORM_1, &asls->identifier)); 181 asls->identifier = PetscMin(asls->merit, 1e-2) / (1 + asls->identifier); 182 183 PetscCall(VecSet(asls->t1, -asls->identifier)); 184 PetscCall(VecSet(asls->t2, asls->identifier)); 185 186 PetscCall(ISDestroy(&asls->fixed)); 187 PetscCall(ISDestroy(&asls->free)); 188 PetscCall(VecWhichBetweenOrEqual(asls->t1, asls->db, asls->t2, &asls->fixed)); 189 PetscCall(ISComplementVec(asls->fixed, asls->t1, &asls->free)); 190 191 PetscCall(ISGetSize(asls->fixed, &nf)); 192 PetscCall(PetscInfo(tao, "Number of fixed variables: %" PetscInt_FMT "\n", nf)); 193 194 /* We now have our partition. Now calculate the direction in the 195 fixed variable space. */ 196 PetscCall(TaoVecGetSubVec(asls->ff, asls->fixed, tao->subset_type, 0.0, &asls->r1)); 197 PetscCall(TaoVecGetSubVec(asls->da, asls->fixed, tao->subset_type, 1.0, &asls->r2)); 198 PetscCall(VecPointwiseDivide(asls->r1, asls->r1, asls->r2)); 199 PetscCall(VecSet(tao->stepdirection, 0.0)); 200 PetscCall(VecISAXPY(tao->stepdirection, asls->fixed, 1.0, asls->r1)); 201 202 /* Our direction in the Fixed Variable Set is fixed. Calculate the 203 information needed for the step in the Free Variable Set. To 204 do this, we need to know the diagonal perturbation and the 205 right hand side. */ 206 207 PetscCall(TaoVecGetSubVec(asls->da, asls->free, tao->subset_type, 0.0, &asls->r1)); 208 PetscCall(TaoVecGetSubVec(asls->ff, asls->free, tao->subset_type, 0.0, &asls->r2)); 209 PetscCall(TaoVecGetSubVec(asls->db, asls->free, tao->subset_type, 1.0, &asls->r3)); 210 PetscCall(VecPointwiseDivide(asls->r1, asls->r1, asls->r3)); 211 PetscCall(VecPointwiseDivide(asls->r2, asls->r2, asls->r3)); 212 213 /* r1 is the diagonal perturbation 214 r2 is the right hand side 215 r3 is no longer needed 216 217 Now need to modify r2 for our direction choice in the fixed 218 variable set: calculate t1 = J*d, take the reduced vector 219 of t1 and modify r2. */ 220 221 PetscCall(MatMult(tao->jacobian, tao->stepdirection, asls->t1)); 222 PetscCall(TaoVecGetSubVec(asls->t1, asls->free, tao->subset_type, 0.0, &asls->r3)); 223 PetscCall(VecAXPY(asls->r2, -1.0, asls->r3)); 224 225 /* Calculate the reduced problem matrix and the direction */ 226 if (!asls->w && (tao->subset_type == TAO_SUBSET_MASK || tao->subset_type == TAO_SUBSET_MATRIXFREE)) PetscCall(VecDuplicate(tao->solution, &asls->w)); 227 PetscCall(TaoMatGetSubMat(tao->jacobian, asls->free, asls->w, tao->subset_type, &asls->J_sub)); 228 if (tao->jacobian != tao->jacobian_pre) { 229 PetscCall(TaoMatGetSubMat(tao->jacobian_pre, asls->free, asls->w, tao->subset_type, &asls->Jpre_sub)); 230 } else { 231 PetscCall(MatDestroy(&asls->Jpre_sub)); 232 asls->Jpre_sub = asls->J_sub; 233 PetscCall(PetscObjectReference((PetscObject)(asls->Jpre_sub))); 234 } 235 PetscCall(MatDiagonalSet(asls->J_sub, asls->r1, ADD_VALUES)); 236 PetscCall(TaoVecGetSubVec(tao->stepdirection, asls->free, tao->subset_type, 0.0, &asls->dxfree)); 237 PetscCall(VecSet(asls->dxfree, 0.0)); 238 239 /* Calculate the reduced direction. (Really negative of Newton 240 direction. Therefore, rest of the code uses -d.) */ 241 PetscCall(KSPReset(tao->ksp)); 242 PetscCall(KSPSetOperators(tao->ksp, asls->J_sub, asls->Jpre_sub)); 243 PetscCall(KSPSolve(tao->ksp, asls->r2, asls->dxfree)); 244 PetscCall(KSPGetIterationNumber(tao->ksp, &tao->ksp_its)); 245 tao->ksp_tot_its += tao->ksp_its; 246 247 /* Add the direction in the free variables back into the real direction. */ 248 PetscCall(VecISAXPY(tao->stepdirection, asls->free, 1.0, asls->dxfree)); 249 250 /* Check the real direction for descent and if not, use the negative 251 gradient direction. */ 252 PetscCall(VecNorm(tao->stepdirection, NORM_2, &normd)); 253 PetscCall(VecDot(tao->stepdirection, asls->dpsi, &innerd)); 254 255 if (innerd <= asls->delta * PetscPowReal(normd, asls->rho)) { 256 PetscCall(PetscInfo(tao, "Gradient direction: %5.4e.\n", (double)innerd)); 257 PetscCall(PetscInfo(tao, "Iteration %" PetscInt_FMT ": newton direction not descent\n", tao->niter)); 258 PetscCall(VecCopy(asls->dpsi, tao->stepdirection)); 259 PetscCall(VecDot(asls->dpsi, tao->stepdirection, &innerd)); 260 } 261 262 PetscCall(VecScale(tao->stepdirection, -1.0)); 263 innerd = -innerd; 264 265 /* We now have a correct descent direction. Apply a linesearch to 266 find the new iterate. */ 267 PetscCall(TaoLineSearchSetInitialStepLength(tao->linesearch, 1.0)); 268 PetscCall(TaoLineSearchApply(tao->linesearch, tao->solution, &psi, asls->dpsi, tao->stepdirection, &t, &ls_reason)); 269 PetscCall(VecNorm(asls->dpsi, NORM_2, &ndpsi)); 270 } 271 PetscFunctionReturn(0); 272 } 273 274 /* ---------------------------------------------------------- */ 275 /*MC 276 TAOASILS - Active-set infeasible linesearch algorithm for solving 277 complementarity constraints 278 279 Options Database Keys: 280 + -tao_ssls_delta - descent test fraction 281 - -tao_ssls_rho - descent test power 282 283 Level: beginner 284 M*/ 285 PETSC_EXTERN PetscErrorCode TaoCreate_ASILS(Tao tao) 286 { 287 TAO_SSLS *asls; 288 const char *armijo_type = TAOLINESEARCHARMIJO; 289 290 PetscFunctionBegin; 291 PetscCall(PetscNew(&asls)); 292 tao->data = (void *)asls; 293 tao->ops->solve = TaoSolve_ASILS; 294 tao->ops->setup = TaoSetUp_ASILS; 295 tao->ops->view = TaoView_SSLS; 296 tao->ops->setfromoptions = TaoSetFromOptions_SSLS; 297 tao->ops->destroy = TaoDestroy_ASILS; 298 tao->subset_type = TAO_SUBSET_SUBVEC; 299 asls->delta = 1e-10; 300 asls->rho = 2.1; 301 asls->fixed = NULL; 302 asls->free = NULL; 303 asls->J_sub = NULL; 304 asls->Jpre_sub = NULL; 305 asls->w = NULL; 306 asls->r1 = NULL; 307 asls->r2 = NULL; 308 asls->r3 = NULL; 309 asls->t1 = NULL; 310 asls->t2 = NULL; 311 asls->dxfree = NULL; 312 313 asls->identifier = 1e-5; 314 315 PetscCall(TaoLineSearchCreate(((PetscObject)tao)->comm, &tao->linesearch)); 316 PetscCall(PetscObjectIncrementTabLevel((PetscObject)tao->linesearch, (PetscObject)tao, 1)); 317 PetscCall(TaoLineSearchSetType(tao->linesearch, armijo_type)); 318 PetscCall(TaoLineSearchSetOptionsPrefix(tao->linesearch, tao->hdr.prefix)); 319 PetscCall(TaoLineSearchSetFromOptions(tao->linesearch)); 320 321 PetscCall(KSPCreate(((PetscObject)tao)->comm, &tao->ksp)); 322 PetscCall(PetscObjectIncrementTabLevel((PetscObject)tao->ksp, (PetscObject)tao, 1)); 323 PetscCall(KSPSetOptionsPrefix(tao->ksp, tao->hdr.prefix)); 324 PetscCall(KSPSetFromOptions(tao->ksp)); 325 326 /* Override default settings (unless already changed) */ 327 if (!tao->max_it_changed) tao->max_it = 2000; 328 if (!tao->max_funcs_changed) tao->max_funcs = 4000; 329 if (!tao->gttol_changed) tao->gttol = 0; 330 if (!tao->grtol_changed) tao->grtol = 0; 331 #if defined(PETSC_USE_REAL_SINGLE) 332 if (!tao->gatol_changed) tao->gatol = 1.0e-6; 333 if (!tao->fmin_changed) tao->fmin = 1.0e-4; 334 #else 335 if (!tao->gatol_changed) tao->gatol = 1.0e-16; 336 if (!tao->fmin_changed) tao->fmin = 1.0e-8; 337 #endif 338 PetscFunctionReturn(0); 339 } 340