| /petsc/src/tao/pde_constrained/tutorials/output/ |
| H A D | elliptic_2.out | 1 iter = 0, Function value: 0.467699, Residual: 0.285674 Constraint: 3.1228e-06 2 iter = 0, Function value: 0.467699, Residual: 0.285674 Constraint: 3.59238e-13 3 iter = 1, Function value: 0.391605, Residual: 0.247887 Constraint: 0.131778 4 iter = 1, Function value: 0.391507, Residual: 0.247943 Constraint: 1.27851e-09 5 iter = 2, Function value: 0.333512, Residual: 0.218693 Constraint: 0.10052 6 iter = 2, Function value: 0.333397, Residual: 0.218606 Constraint: 9.50222e-10 7 iter = 3, Function value: 0.0770781, Residual: 1.50342 Constraint: 10.3337 8 iter = 3, Function value: 0.0763368, Residual: 0.0874451 Constraint: 9.81093e-08 9 iter = 4, Function value: 0.0526638, Residual: 0.12811 Constraint: 0.575396 10 iter = 4, Function value: 0.0526009, Residual: 0.0450503 Constraint: 5.31051e-09 [all …]
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| H A D | elliptic_1.out | 1 iter = 0, Function value: 0.467699, Residual: 0.285674 Constraint: 3.1228e-06 2 iter = 0, Function value: 0.467699, Residual: 0.285674 Constraint: 3.86297e-13 3 iter = 1, Function value: 0.391605, Residual: 0.247887 Constraint: 0.131778 4 iter = 1, Function value: 0.391507, Residual: 0.247943 Constraint: 1.27854e-09 5 iter = 2, Function value: 0.333512, Residual: 0.218693 Constraint: 0.10052 6 iter = 2, Function value: 0.333397, Residual: 0.218606 Constraint: 9.50249e-10 7 iter = 3, Function value: 0.0770781, Residual: 1.50342 Constraint: 10.3337 8 iter = 3, Function value: 0.0763368, Residual: 0.0874451 Constraint: 9.81093e-08 9 iter = 4, Function value: 0.0526638, Residual: 0.12811 Constraint: 0.575396 10 iter = 4, Function value: 0.0526009, Residual: 0.0450503 Constraint: 5.3105e-09 [all …]
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| H A D | parabolic_1.out | 1 iter = 0, Function value: 0.00319113, Residual: 0.000161856 Constraint: 1.04711e-05 2 iter = 0, Function value: 0.00319113, Residual: 0.000161845 Constraint: 1.7957e-12 3 iter = 1, Function value: 0.00319111, Residual: 0.00013072 Constraint: 9.6062e-07 4 iter = 1, Function value: 0.00319111, Residual: 0.000130722 Constraint: 1.96003e-12 5 iter = 2, Function value: 0.00319109, Residual: 0.000111495 Constraint: 4.01954e-07 6 iter = 2, Function value: 0.00319109, Residual: 0.000111496 Constraint: 2.05248e-12 7 iter = 3, Function value: 0.00319103, Residual: 8.05473e-05 Constraint: 7.80863e-06
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| H A D | hyperbolic_guess_pod.out | 1 iter = 0, Function value: 36.037, Residual: 0.577738 Constraint: 0.00153606 2 iter = 0, Function value: 36.0373, Residual: 0.577738 Constraint: 0.00145613 3 iter = 1, Function value: 13.9135, Residual: 0.401034 Constraint: 0.149261
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| H A D | hyperbolic_1.out | 1 iter = 0, Function value: 36.037, Residual: 0.57773 Constraint: 0.00153606 2 iter = 0, Function value: 36.0417, Residual: 0.577734 Constraint: 4.9241e-09 3 iter = 1, Function value: 13.9146, Residual: 0.415198 Constraint: 0.149306
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| /petsc/doc/overview/ |
| H A D | tao_solve_table.md | 88 - Constraint Type 172 - Constraint Type 224 - Constraint Type 252 - Constraint Type 280 - Constraint Type
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| /petsc/src/tao/constrained/impls/admm/ |
| H A D | admm.c | 244 static PetscErrorCode ADMMInternalHessianUpdate(Mat H, Mat Constraint, PetscBool Identity, void *pt… in ADMMInternalHessianUpdate() argument 256 PetscCall(MatAXPY(H, am->mu - am->muold, Constraint, DIFFERENT_NONZERO_PATTERN)); in ADMMInternalHessianUpdate()
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| /petsc/doc/manual/ |
| H A D | ksp.md | 342 * - Conjugate Gradients with Constraint (1) 345 * - Conjugate Gradients with Constraint (2) 348 * - Conjugate Gradients with Constraint (3) 351 * - Conjugate Gradients with Constraint (4)
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| H A D | snes.md | 523 **The Constraint Surface.** Considering the $n+1$ dimensional space of
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| /petsc/doc/ |
| H A D | petsc.bib | 28600 title = {Parallel Constraint Distribution}, 29067 title = {Parallel Constraint Distribution for Convex Quadratic Programs}, 30095 title = {On the Convergence of the Parallel Constraint Distribution Algorithm}, 35381 title = {A Review of Constraint Qualifications in Finite--Dimensional Spaces}, 35704 title = {A Direct Search Optimization Method that Models the Objective and Constraint
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