xref: /petsc/src/tao/bound/impls/bqnls/bqnls.c (revision 3850be85d423de4139c8d950c0ca17adc39e763f)
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;
96b591159SAlp Dener   PetscErrorCode ierr;
10d5ae2380SAlp Dener   PetscReal      gnorm2, delta;
116b591159SAlp Dener 
126b591159SAlp Dener   PetscFunctionBegin;
13f5766c09SAlp Dener   /* Compute the initial scaling and update the approximation */
14d5ae2380SAlp Dener   gnorm2 = bnk->gnorm*bnk->gnorm;
158cabe928SAlp Dener   if (gnorm2 == 0.0) gnorm2 = PETSC_MACHINE_EPSILON;
168cabe928SAlp Dener   if (bnk->f == 0.0) {
178cabe928SAlp Dener     delta = 2.0 / gnorm2;
188cabe928SAlp Dener   } else {
198cabe928SAlp Dener     delta = 2.0 * PetscAbsScalar(bnk->f) / gnorm2;
208cabe928SAlp Dener   }
21d5ae2380SAlp Dener   ierr = MatSymBrdnSetDelta(bqnk->B, delta);CHKERRQ(ierr);
226b591159SAlp Dener   ierr = MatLMVMUpdate(bqnk->B, tao->solution, bnk->unprojected_gradient);CHKERRQ(ierr);
236b591159SAlp Dener   PetscFunctionReturn(0);
246b591159SAlp Dener }
256b591159SAlp Dener 
266b591159SAlp Dener static PetscErrorCode TaoBQNLSComputeStep(Tao tao, PetscBool shift, KSPConvergedReason *ksp_reason, PetscInt *step_type)
276b591159SAlp Dener {
286b591159SAlp Dener   TAO_BNK        *bnk = (TAO_BNK *)tao->data;
296b591159SAlp Dener   TAO_BQNK       *bqnk = (TAO_BQNK*)bnk->ctx;
306b591159SAlp Dener   PetscErrorCode ierr;
3165f5217aSAlp Dener   PetscInt       nupdates;
326b591159SAlp Dener 
336b591159SAlp Dener   PetscFunctionBegin;
349515a401SAlp Dener   ierr = MatSolve(bqnk->B, tao->gradient, tao->stepdirection);CHKERRQ(ierr);
356b591159SAlp Dener   ierr = VecScale(tao->stepdirection, -1.0);CHKERRQ(ierr);
366b591159SAlp Dener   ierr = TaoBNKBoundStep(tao, bnk->as_type, tao->stepdirection);CHKERRQ(ierr);
376b591159SAlp Dener   *ksp_reason = KSP_CONVERGED_ATOL;
3865f5217aSAlp Dener   ierr = MatLMVMGetUpdateCount(bqnk->B, &nupdates);CHKERRQ(ierr);
3965f5217aSAlp Dener   if (nupdates == 0) {
4065f5217aSAlp Dener     *step_type = BNK_SCALED_GRADIENT;
4165f5217aSAlp Dener   } else {
426b591159SAlp Dener     *step_type = BNK_BFGS;
4365f5217aSAlp Dener   }
446b591159SAlp Dener   PetscFunctionReturn(0);
456b591159SAlp Dener }
466b591159SAlp Dener 
476b591159SAlp Dener static PetscErrorCode TaoSetFromOptions_BQNLS(PetscOptionItems *PetscOptionsObject,Tao tao)
486b591159SAlp Dener {
496b591159SAlp Dener   TAO_BNK        *bnk = (TAO_BNK *)tao->data;
506b591159SAlp Dener   TAO_BQNK       *bqnk = (TAO_BQNK*)bnk->ctx;
516b591159SAlp Dener   PetscErrorCode ierr;
526b591159SAlp Dener   KSPType        ksp_type;
536b591159SAlp Dener   PetscBool      is_spd;
546b591159SAlp Dener 
556b591159SAlp Dener   PetscFunctionBegin;
566b591159SAlp Dener   ierr = PetscOptionsHead(PetscOptionsObject,"Quasi-Newton-Krylov method for bound constrained optimization");CHKERRQ(ierr);
576b591159SAlp Dener   ierr = PetscOptionsEList("-tao_bqnls_as_type", "active set estimation method", "", BNK_AS, BNK_AS_TYPES, BNK_AS[bnk->as_type], &bnk->as_type, 0);CHKERRQ(ierr);
586b591159SAlp Dener   ierr = PetscOptionsReal("-tao_bqnls_epsilon", "(developer) tolerance used when computing actual and predicted reduction", "", bnk->epsilon, &bnk->epsilon,NULL);CHKERRQ(ierr);
596b591159SAlp Dener   ierr = PetscOptionsReal("-tao_bqnls_as_tol", "(developer) initial tolerance used when estimating actively bounded variables", "", bnk->as_tol, &bnk->as_tol,NULL);CHKERRQ(ierr);
606b591159SAlp Dener   ierr = PetscOptionsReal("-tao_bqnls_as_step", "(developer) step length used when estimating actively bounded variables", "", bnk->as_step, &bnk->as_step,NULL);CHKERRQ(ierr);
616b591159SAlp Dener   ierr = PetscOptionsInt("-tao_bqnls_max_cg_its", "number of BNCG iterations to take for each Newton step", "", bnk->max_cg_its, &bnk->max_cg_its,NULL);CHKERRQ(ierr);
626b591159SAlp Dener   ierr = PetscOptionsTail();CHKERRQ(ierr);
636b591159SAlp Dener   ierr = TaoSetFromOptions(bnk->bncg);CHKERRQ(ierr);
646b591159SAlp Dener   ierr = TaoLineSearchSetFromOptions(tao->linesearch);CHKERRQ(ierr);
656b591159SAlp Dener   ierr = KSPSetFromOptions(tao->ksp);CHKERRQ(ierr);
666b591159SAlp Dener   ierr = KSPGetType(tao->ksp,&ksp_type);CHKERRQ(ierr);
676b591159SAlp Dener   bnk->is_nash = bnk->is_gltr = bnk->is_stcg = PETSC_FALSE;
686b591159SAlp Dener   ierr = MatSetFromOptions(bqnk->B);CHKERRQ(ierr);
696b591159SAlp Dener   ierr = MatGetOption(bqnk->B, MAT_SPD, &is_spd);CHKERRQ(ierr);
706b591159SAlp Dener   if (!is_spd) SETERRQ(PetscObjectComm((PetscObject)tao), PETSC_ERR_ARG_INCOMP, "LMVM matrix must be symmetric positive-definite");
716b591159SAlp Dener   PetscFunctionReturn(0);
726b591159SAlp Dener }
736b591159SAlp Dener 
74*3850be85SAlp Dener /*MC
75*3850be85SAlp Dener   TAOBQNLS - Bounded Quasi-Newton Line Search method for nonlinear minimization with bound
76*3850be85SAlp Dener              constraints. This method approximates the action of the inverse-Hessian with a
77*3850be85SAlp Dener              limited memory quasi-Newton formula. The quasi-Newton matrix and its options are
78*3850be85SAlp Dener              accessible via the prefix `-tao_bqnls_`
79*3850be85SAlp Dener 
80*3850be85SAlp Dener   Options Database Keys:
81*3850be85SAlp Dener   + -tao_bqnls_max_cg_its - maximum number of bounded conjugate-gradient iterations taken in each Newton loop
82*3850be85SAlp Dener   - -tao_bqnls_as_type - active-set estimation method ("none", "bertsekas")
83*3850be85SAlp Dener 
84*3850be85SAlp Dener   Level: beginner
85*3850be85SAlp Dener M*/
866b591159SAlp Dener PETSC_EXTERN PetscErrorCode TaoCreate_BQNLS(Tao tao)
876b591159SAlp Dener {
886b591159SAlp Dener   TAO_BNK        *bnk;
896b591159SAlp Dener   TAO_BQNK       *bqnk;
906b591159SAlp Dener   PetscErrorCode ierr;
916b591159SAlp Dener 
926b591159SAlp Dener   PetscFunctionBegin;
936b591159SAlp Dener   ierr = TaoCreate_BQNK(tao);CHKERRQ(ierr);
946b591159SAlp Dener   ierr = KSPSetOptionsPrefix(tao->ksp, "unused");CHKERRQ(ierr);
956b591159SAlp Dener   tao->ops->solve = TaoSolve_BNLS;
966b591159SAlp Dener   tao->ops->setfromoptions = TaoSetFromOptions_BQNLS;
976b591159SAlp Dener 
986b591159SAlp Dener   bnk = (TAO_BNK*)tao->data;
996b591159SAlp Dener   bnk->update_type = BNK_UPDATE_STEP;
1006b591159SAlp Dener   bnk->computehessian = TaoBQNLSComputeHessian;
1016b591159SAlp Dener   bnk->computestep = TaoBQNLSComputeStep;
1026b591159SAlp Dener 
1036b591159SAlp Dener   bqnk = (TAO_BQNK*)bnk->ctx;
1046b591159SAlp Dener   ierr = MatSetOptionsPrefix(bqnk->B, "tao_bqnls_");CHKERRQ(ierr);
1056b591159SAlp Dener   ierr = MatSetType(bqnk->B, MATLMVMBFGS);CHKERRQ(ierr);
1066b591159SAlp Dener   PetscFunctionReturn(0);
1076b591159SAlp Dener }
108