xref: /petsc/src/tao/bound/impls/bqnls/bqnls.c (revision b94d7ded0a05f1bbd5e48daa6f92b28259c75b44)
16b591159SAlp Dener #include <../src/tao/bound/impls/bqnk/bqnk.h>
26b591159SAlp Dener 
370a3f44bSAlp Dener static const char *BNK_AS[64] = {"none", "bertsekas"};
470a3f44bSAlp Dener 
56b591159SAlp Dener static PetscErrorCode TaoBQNLSComputeHessian(Tao tao)
66b591159SAlp Dener {
76b591159SAlp Dener   TAO_BNK        *bnk = (TAO_BNK *)tao->data;
86b591159SAlp Dener   TAO_BQNK       *bqnk = (TAO_BQNK*)bnk->ctx;
9d5ae2380SAlp Dener   PetscReal      gnorm2, delta;
106b591159SAlp Dener 
116b591159SAlp Dener   PetscFunctionBegin;
12f5766c09SAlp Dener   /* Compute the initial scaling and update the approximation */
13d5ae2380SAlp Dener   gnorm2 = bnk->gnorm*bnk->gnorm;
148cabe928SAlp Dener   if (gnorm2 == 0.0) gnorm2 = PETSC_MACHINE_EPSILON;
158ebe3e4eSStefano Zampini   if (bnk->f == 0.0) delta = 2.0 / gnorm2;
168ebe3e4eSStefano Zampini   else delta = 2.0 * PetscAbsScalar(bnk->f) / gnorm2;
179566063dSJacob Faibussowitsch   PetscCall(MatLMVMSymBroydenSetDelta(bqnk->B, delta));
189566063dSJacob Faibussowitsch   PetscCall(MatLMVMUpdate(bqnk->B, tao->solution, bnk->unprojected_gradient));
196b591159SAlp Dener   PetscFunctionReturn(0);
206b591159SAlp Dener }
216b591159SAlp Dener 
226b591159SAlp Dener static PetscErrorCode TaoBQNLSComputeStep(Tao tao, PetscBool shift, KSPConvergedReason *ksp_reason, PetscInt *step_type)
236b591159SAlp Dener {
246b591159SAlp Dener   TAO_BNK        *bnk = (TAO_BNK *)tao->data;
256b591159SAlp Dener   TAO_BQNK       *bqnk = (TAO_BQNK*)bnk->ctx;
2665f5217aSAlp Dener   PetscInt       nupdates;
276b591159SAlp Dener 
286b591159SAlp Dener   PetscFunctionBegin;
299566063dSJacob Faibussowitsch   PetscCall(MatSolve(bqnk->B, tao->gradient, tao->stepdirection));
309566063dSJacob Faibussowitsch   PetscCall(VecScale(tao->stepdirection, -1.0));
319566063dSJacob Faibussowitsch   PetscCall(TaoBNKBoundStep(tao, bnk->as_type, tao->stepdirection));
326b591159SAlp Dener   *ksp_reason = KSP_CONVERGED_ATOL;
339566063dSJacob Faibussowitsch   PetscCall(MatLMVMGetUpdateCount(bqnk->B, &nupdates));
348ebe3e4eSStefano Zampini   if (nupdates == 0) *step_type = BNK_SCALED_GRADIENT;
358ebe3e4eSStefano Zampini   else *step_type = BNK_BFGS;
366b591159SAlp Dener   PetscFunctionReturn(0);
376b591159SAlp Dener }
386b591159SAlp Dener 
396b591159SAlp Dener static PetscErrorCode TaoSetFromOptions_BQNLS(PetscOptionItems *PetscOptionsObject,Tao tao)
406b591159SAlp Dener {
416b591159SAlp Dener   TAO_BNK        *bnk = (TAO_BNK *)tao->data;
426b591159SAlp Dener   TAO_BQNK       *bqnk = (TAO_BQNK*)bnk->ctx;
43*b94d7dedSBarry Smith   PetscBool      is_set,is_spd;
446b591159SAlp Dener 
456b591159SAlp Dener   PetscFunctionBegin;
46d0609cedSBarry Smith   PetscOptionsHeadBegin(PetscOptionsObject,"Quasi-Newton-Krylov method for bound constrained optimization");
479566063dSJacob Faibussowitsch   PetscCall(PetscOptionsEList("-tao_bnk_as_type", "active set estimation method", "", BNK_AS, BNK_AS_TYPES, BNK_AS[bnk->as_type], &bnk->as_type, NULL));
489566063dSJacob Faibussowitsch   PetscCall(PetscOptionsReal("-tao_bnk_epsilon", "(developer) tolerance used when computing actual and predicted reduction", "", bnk->epsilon, &bnk->epsilon,NULL));
499566063dSJacob Faibussowitsch   PetscCall(PetscOptionsReal("-tao_bnk_as_tol", "(developer) initial tolerance used when estimating actively bounded variables", "", bnk->as_tol, &bnk->as_tol,NULL));
509566063dSJacob Faibussowitsch   PetscCall(PetscOptionsReal("-tao_bnk_as_step", "(developer) step length used when estimating actively bounded variables", "", bnk->as_step, &bnk->as_step,NULL));
519566063dSJacob Faibussowitsch   PetscCall(PetscOptionsInt("-tao_bnk_max_cg_its", "number of BNCG iterations to take for each Newton step", "", bnk->max_cg_its, &bnk->max_cg_its,NULL));
52d0609cedSBarry Smith   PetscOptionsHeadEnd();
538ebe3e4eSStefano Zampini 
549566063dSJacob Faibussowitsch   PetscCall(TaoSetOptionsPrefix(bnk->bncg,((PetscObject)(tao))->prefix));
559566063dSJacob Faibussowitsch   PetscCall(TaoAppendOptionsPrefix(bnk->bncg,"tao_bnk_"));
569566063dSJacob Faibussowitsch   PetscCall(TaoSetFromOptions(bnk->bncg));
578ebe3e4eSStefano Zampini 
589566063dSJacob Faibussowitsch   PetscCall(MatSetOptionsPrefix(bqnk->B, ((PetscObject)tao)->prefix));
599566063dSJacob Faibussowitsch   PetscCall(MatAppendOptionsPrefix(bqnk->B, "tao_bqnls_"));
609566063dSJacob Faibussowitsch   PetscCall(MatSetFromOptions(bqnk->B));
61*b94d7dedSBarry Smith   PetscCall(MatIsSPDKnown(bqnk->B, &is_set, &is_spd));
62*b94d7dedSBarry Smith   PetscCheck(is_set && is_spd,PetscObjectComm((PetscObject)tao), PETSC_ERR_ARG_INCOMP, "LMVM matrix must be symmetric positive-definite");
636b591159SAlp Dener   PetscFunctionReturn(0);
646b591159SAlp Dener }
656b591159SAlp Dener 
663850be85SAlp Dener /*MC
673850be85SAlp Dener   TAOBQNLS - Bounded Quasi-Newton Line Search method for nonlinear minimization with bound
683850be85SAlp Dener              constraints. This method approximates the action of the inverse-Hessian with a
693850be85SAlp Dener              limited memory quasi-Newton formula. The quasi-Newton matrix and its options are
703850be85SAlp Dener              accessible via the prefix `-tao_bqnls_`
713850be85SAlp Dener 
729fa2b5dcSStefano Zampini   Option Database Keys:
739fa2b5dcSStefano Zampini + -tao_bnk_max_cg_its - maximum number of bounded conjugate-gradient iterations taken in each Newton loop
749fa2b5dcSStefano Zampini . -tao_bnk_as_type - active-set estimation method ("none", "bertsekas")
759fa2b5dcSStefano Zampini . -tao_bnk_epsilon - (developer) tolerance for small pred/actual ratios that trigger automatic step acceptance
769fa2b5dcSStefano Zampini . -tao_bnk_as_tol - (developer) initial tolerance used in estimating bounded active variables (-as_type bertsekas)
77f1a722f8SMatthew G. Knepley - -tao_bnk_as_step - (developer) trial step length used in estimating bounded active variables (-as_type bertsekas)
783850be85SAlp Dener 
793850be85SAlp Dener   Level: beginner
80db781477SPatrick Sanan .seealso: `TAOBNK`
813850be85SAlp Dener M*/
826b591159SAlp Dener PETSC_EXTERN PetscErrorCode TaoCreate_BQNLS(Tao tao)
836b591159SAlp Dener {
846b591159SAlp Dener   TAO_BNK        *bnk;
856b591159SAlp Dener   TAO_BQNK       *bqnk;
866b591159SAlp Dener 
876b591159SAlp Dener   PetscFunctionBegin;
889566063dSJacob Faibussowitsch   PetscCall(TaoCreate_BQNK(tao));
896b591159SAlp Dener   tao->ops->setfromoptions = TaoSetFromOptions_BQNLS;
906b591159SAlp Dener 
916b591159SAlp Dener   bnk = (TAO_BNK*)tao->data;
926b591159SAlp Dener   bnk->update_type = BNK_UPDATE_STEP;
936b591159SAlp Dener   bnk->computehessian = TaoBQNLSComputeHessian;
946b591159SAlp Dener   bnk->computestep = TaoBQNLSComputeStep;
956b591159SAlp Dener 
966b591159SAlp Dener   bqnk = (TAO_BQNK*)bnk->ctx;
97414d97d3SAlp Dener   bqnk->solve = TaoSolve_BNLS;
989566063dSJacob Faibussowitsch   PetscCall(MatSetType(bqnk->B, MATLMVMBFGS));
996b591159SAlp Dener   PetscFunctionReturn(0);
1006b591159SAlp Dener }
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