xref: /petsc/src/tao/complementarity/impls/asls/asils.c (revision e0877f539457ad1ce8178bc0750eac5ffa490a67)
1aaa7dc30SBarry Smith #include <../src/tao/complementarity/impls/ssls/ssls.h>
2a7e14dcfSSatish Balay /*
3a7e14dcfSSatish Balay    Context for ASXLS
4a7e14dcfSSatish Balay      -- active-set      - reduced matrices formed
5a7e14dcfSSatish Balay                           - inherit properties of original system
6a7e14dcfSSatish Balay      -- semismooth (S)  - function not differentiable
7a7e14dcfSSatish Balay                         - merit function continuously differentiable
8a7e14dcfSSatish Balay                         - Fischer-Burmeister reformulation of complementarity
9a7e14dcfSSatish Balay                           - Billups composition for two finite bounds
10a7e14dcfSSatish Balay      -- infeasible (I)  - iterates not guaranteed to remain within bounds
11a7e14dcfSSatish Balay      -- feasible (F)    - iterates guaranteed to remain within bounds
12a7e14dcfSSatish Balay      -- linesearch (LS) - Armijo rule on direction
13a7e14dcfSSatish Balay 
14a7e14dcfSSatish Balay    Many other reformulations are possible and combinations of
15a7e14dcfSSatish Balay    feasible/infeasible and linesearch/trust region are possible.
16a7e14dcfSSatish Balay 
17a7e14dcfSSatish Balay    Basic theory
18a7e14dcfSSatish Balay      Fischer-Burmeister reformulation is semismooth with a continuously
19a7e14dcfSSatish Balay      differentiable merit function and strongly semismooth if the F has
20a7e14dcfSSatish Balay      lipschitz continuous derivatives.
21a7e14dcfSSatish Balay 
22a7e14dcfSSatish Balay      Every accumulation point generated by the algorithm is a stationary
23a7e14dcfSSatish Balay      point for the merit function.  Stationary points of the merit function
24a7e14dcfSSatish Balay      are solutions of the complementarity problem if
25a7e14dcfSSatish Balay        a.  the stationary point has a BD-regular subdifferential, or
26a7e14dcfSSatish Balay        b.  the Schur complement F'/F'_ff is a P_0-matrix where ff is the
27a7e14dcfSSatish Balay            index set corresponding to the free variables.
28a7e14dcfSSatish Balay 
29a7e14dcfSSatish Balay      If one of the accumulation points has a BD-regular subdifferential then
30a7e14dcfSSatish Balay        a.  the entire sequence converges to this accumulation point at
31a7e14dcfSSatish Balay            a local q-superlinear rate
32a7e14dcfSSatish Balay        b.  if in addition the reformulation is strongly semismooth near
33a7e14dcfSSatish Balay            this accumulation point, then the algorithm converges at a
34a7e14dcfSSatish Balay            local q-quadratic rate.
35a7e14dcfSSatish Balay 
36a7e14dcfSSatish Balay    The theory for the feasible version follows from the feasible descent
37a7e14dcfSSatish Balay    algorithm framework.
38a7e14dcfSSatish Balay 
39a7e14dcfSSatish Balay    References:
40a7e14dcfSSatish Balay      Billups, "Algorithms for Complementarity Problems and Generalized
4196a0c994SBarry Smith        Equations," Ph.D thesis, University of Wisconsin  Madison, 1995.
42a7e14dcfSSatish Balay      De Luca, Facchinei, Kanzow, "A Semismooth Equation Approach to the
43a7e14dcfSSatish Balay        Solution of Nonlinear Complementarity Problems," Mathematical
4496a0c994SBarry Smith        Programming, 75, 1996.
45a7e14dcfSSatish Balay      Ferris, Kanzow, Munson, "Feasible Descent Algorithms for Mixed
46a7e14dcfSSatish Balay        Complementarity Problems," Mathematical Programming, 86,
4796a0c994SBarry Smith        1999.
4896a0c994SBarry Smith      Fischer, "A Special Newton type Optimization Method," Optimization,
4996a0c994SBarry Smith        24, 1992
50a7e14dcfSSatish Balay      Munson, Facchinei, Ferris, Fischer, Kanzow, "The Semismooth Algorithm
5196a0c994SBarry Smith        for Large Scale Complementarity Problems," Technical Report,
5296a0c994SBarry Smith        University of Wisconsin  Madison, 1999.
53a7e14dcfSSatish Balay */
54a7e14dcfSSatish Balay 
55a7e14dcfSSatish Balay 
56a7e14dcfSSatish Balay #undef __FUNCT__
57a7e14dcfSSatish Balay #define __FUNCT__ "TaoSetUp_ASILS"
58*e0877f53SBarry Smith static PetscErrorCode TaoSetUp_ASILS(Tao tao)
59a7e14dcfSSatish Balay {
60a7e14dcfSSatish Balay   TAO_SSLS       *asls = (TAO_SSLS *)tao->data;
61a7e14dcfSSatish Balay   PetscErrorCode ierr;
62a7e14dcfSSatish Balay 
63a7e14dcfSSatish Balay   PetscFunctionBegin;
64a7e14dcfSSatish Balay   ierr = VecDuplicate(tao->solution,&tao->gradient);CHKERRQ(ierr);
65a7e14dcfSSatish Balay   ierr = VecDuplicate(tao->solution,&tao->stepdirection);CHKERRQ(ierr);
66a7e14dcfSSatish Balay   ierr = VecDuplicate(tao->solution,&asls->ff);CHKERRQ(ierr);
67a7e14dcfSSatish Balay   ierr = VecDuplicate(tao->solution,&asls->dpsi);CHKERRQ(ierr);
68a7e14dcfSSatish Balay   ierr = VecDuplicate(tao->solution,&asls->da);CHKERRQ(ierr);
69a7e14dcfSSatish Balay   ierr = VecDuplicate(tao->solution,&asls->db);CHKERRQ(ierr);
70a7e14dcfSSatish Balay   ierr = VecDuplicate(tao->solution,&asls->t1);CHKERRQ(ierr);
71a7e14dcfSSatish Balay   ierr = VecDuplicate(tao->solution,&asls->t2);CHKERRQ(ierr);
726c23d075SBarry Smith   asls->fixed = NULL;
736c23d075SBarry Smith   asls->free = NULL;
746c23d075SBarry Smith   asls->J_sub = NULL;
756c23d075SBarry Smith   asls->Jpre_sub = NULL;
766c23d075SBarry Smith   asls->w = NULL;
776c23d075SBarry Smith   asls->r1 = NULL;
786c23d075SBarry Smith   asls->r2 = NULL;
796c23d075SBarry Smith   asls->r3 = NULL;
806c23d075SBarry Smith   asls->dxfree = NULL;
81a7e14dcfSSatish Balay   PetscFunctionReturn(0);
82a7e14dcfSSatish Balay }
83a7e14dcfSSatish Balay 
84a7e14dcfSSatish Balay #undef __FUNCT__
85a7e14dcfSSatish Balay #define __FUNCT__ "Tao_ASLS_FunctionGradient"
86a7e14dcfSSatish Balay static PetscErrorCode Tao_ASLS_FunctionGradient(TaoLineSearch ls, Vec X, PetscReal *fcn,  Vec G, void *ptr)
87a7e14dcfSSatish Balay {
88441846f8SBarry Smith   Tao            tao = (Tao)ptr;
89a7e14dcfSSatish Balay   TAO_SSLS       *asls = (TAO_SSLS *)tao->data;
90a7e14dcfSSatish Balay   PetscErrorCode ierr;
91a7e14dcfSSatish Balay 
92a7e14dcfSSatish Balay   PetscFunctionBegin;
93a7e14dcfSSatish Balay   ierr = TaoComputeConstraints(tao, X, tao->constraints);CHKERRQ(ierr);
94a7e14dcfSSatish Balay   ierr = VecFischer(X,tao->constraints,tao->XL,tao->XU,asls->ff);CHKERRQ(ierr);
95a7e14dcfSSatish Balay   ierr = VecNorm(asls->ff,NORM_2,&asls->merit);CHKERRQ(ierr);
96a7e14dcfSSatish Balay   *fcn = 0.5*asls->merit*asls->merit;
97a7e14dcfSSatish Balay 
98ffad9901SBarry Smith   ierr = TaoComputeJacobian(tao,tao->solution,tao->jacobian,tao->jacobian_pre);CHKERRQ(ierr);
99235fd6e6SBarry Smith   ierr = MatDFischer(tao->jacobian, tao->solution, tao->constraints,tao->XL, tao->XU, asls->t1, asls->t2,asls->da, asls->db);CHKERRQ(ierr);
100a7e14dcfSSatish Balay   ierr = VecPointwiseMult(asls->t1, asls->ff, asls->db);CHKERRQ(ierr);
101a7e14dcfSSatish Balay   ierr = MatMultTranspose(tao->jacobian,asls->t1,G);CHKERRQ(ierr);
102a7e14dcfSSatish Balay   ierr = VecPointwiseMult(asls->t1, asls->ff, asls->da);CHKERRQ(ierr);
103a7e14dcfSSatish Balay   ierr = VecAXPY(G,1.0,asls->t1);CHKERRQ(ierr);
104a7e14dcfSSatish Balay   PetscFunctionReturn(0);
105a7e14dcfSSatish Balay }
106a7e14dcfSSatish Balay 
107a7e14dcfSSatish Balay #undef __FUNCT__
108a7e14dcfSSatish Balay #define __FUNCT__ "TaoDestroy_ASILS"
109441846f8SBarry Smith static PetscErrorCode TaoDestroy_ASILS(Tao tao)
110a7e14dcfSSatish Balay {
111a7e14dcfSSatish Balay   TAO_SSLS       *ssls = (TAO_SSLS *)tao->data;
112a7e14dcfSSatish Balay   PetscErrorCode ierr;
113a7e14dcfSSatish Balay 
114a7e14dcfSSatish Balay   PetscFunctionBegin;
115a7e14dcfSSatish Balay   ierr = VecDestroy(&ssls->ff);CHKERRQ(ierr);
116a7e14dcfSSatish Balay   ierr = VecDestroy(&ssls->dpsi);CHKERRQ(ierr);
117a7e14dcfSSatish Balay   ierr = VecDestroy(&ssls->da);CHKERRQ(ierr);
118a7e14dcfSSatish Balay   ierr = VecDestroy(&ssls->db);CHKERRQ(ierr);
119a7e14dcfSSatish Balay   ierr = VecDestroy(&ssls->w);CHKERRQ(ierr);
120a7e14dcfSSatish Balay   ierr = VecDestroy(&ssls->t1);CHKERRQ(ierr);
121a7e14dcfSSatish Balay   ierr = VecDestroy(&ssls->t2);CHKERRQ(ierr);
122a7e14dcfSSatish Balay   ierr = VecDestroy(&ssls->r1);CHKERRQ(ierr);
123a7e14dcfSSatish Balay   ierr = VecDestroy(&ssls->r2);CHKERRQ(ierr);
124a7e14dcfSSatish Balay   ierr = VecDestroy(&ssls->r3);CHKERRQ(ierr);
125a7e14dcfSSatish Balay   ierr = VecDestroy(&ssls->dxfree);CHKERRQ(ierr);
126a7e14dcfSSatish Balay   ierr = MatDestroy(&ssls->J_sub);CHKERRQ(ierr);
127a7e14dcfSSatish Balay   ierr = MatDestroy(&ssls->Jpre_sub);CHKERRQ(ierr);
128a7e14dcfSSatish Balay   ierr = ISDestroy(&ssls->fixed);CHKERRQ(ierr);
129a7e14dcfSSatish Balay   ierr = ISDestroy(&ssls->free);CHKERRQ(ierr);
130a7e14dcfSSatish Balay   ierr = PetscFree(tao->data);CHKERRQ(ierr);
131a7e14dcfSSatish Balay   PetscFunctionReturn(0);
132a7e14dcfSSatish Balay }
13347a47007SBarry Smith 
134a7e14dcfSSatish Balay #undef __FUNCT__
135a7e14dcfSSatish Balay #define __FUNCT__ "TaoSolve_ASILS"
136441846f8SBarry Smith static PetscErrorCode TaoSolve_ASILS(Tao tao)
137a7e14dcfSSatish Balay {
138a7e14dcfSSatish Balay   TAO_SSLS                     *asls = (TAO_SSLS *)tao->data;
139a7e14dcfSSatish Balay   PetscReal                    psi,ndpsi, normd, innerd, t=0;
1408931d482SJason Sarich   PetscInt                     nf;
141a7e14dcfSSatish Balay   PetscErrorCode               ierr;
142e4cb33bbSBarry Smith   TaoConvergedReason           reason;
143e4cb33bbSBarry Smith   TaoLineSearchConvergedReason ls_reason;
144a7e14dcfSSatish Balay 
145a7e14dcfSSatish Balay   PetscFunctionBegin;
146a7e14dcfSSatish Balay   /* Assume that Setup has been called!
147a7e14dcfSSatish Balay      Set the structure for the Jacobian and create a linear solver. */
148a7e14dcfSSatish Balay 
149a7e14dcfSSatish Balay   ierr = TaoComputeVariableBounds(tao);CHKERRQ(ierr);
150a7e14dcfSSatish Balay   ierr = TaoLineSearchSetObjectiveAndGradientRoutine(tao->linesearch,Tao_ASLS_FunctionGradient,tao);CHKERRQ(ierr);
151a7e14dcfSSatish Balay   ierr = TaoLineSearchSetObjectiveRoutine(tao->linesearch,Tao_SSLS_Function,tao);CHKERRQ(ierr);
152a7e14dcfSSatish Balay 
153a7e14dcfSSatish Balay   /* Calculate the function value and fischer function value at the
154a7e14dcfSSatish Balay      current iterate */
155a7e14dcfSSatish Balay   ierr = TaoLineSearchComputeObjectiveAndGradient(tao->linesearch,tao->solution,&psi,asls->dpsi);CHKERRQ(ierr);
156a7e14dcfSSatish Balay   ierr = VecNorm(asls->dpsi,NORM_2,&ndpsi);CHKERRQ(ierr);
157a7e14dcfSSatish Balay 
158a7e14dcfSSatish Balay   while (1) {
159a7e14dcfSSatish Balay     /* Check the termination criteria */
1608931d482SJason Sarich     ierr = PetscInfo3(tao,"iter %D, merit: %g, ||dpsi||: %g\n",tao->niter, (double)asls->merit,  (double)ndpsi);CHKERRQ(ierr);
1618931d482SJason Sarich     ierr = TaoMonitor(tao, tao->niter, asls->merit, ndpsi, 0.0, t, &reason);CHKERRQ(ierr);
162a7e14dcfSSatish Balay     if (TAO_CONTINUE_ITERATING != reason) break;
163e6d4cb7fSJason Sarich     tao->niter++;
164a7e14dcfSSatish Balay 
165a7e14dcfSSatish Balay     /* We are going to solve a linear system of equations.  We need to
166a7e14dcfSSatish Balay        set the tolerances for the solve so that we maintain an asymptotic
167a7e14dcfSSatish Balay        rate of convergence that is superlinear.
168a7e14dcfSSatish Balay        Note: these tolerances are for the reduced system.  We really need
169a7e14dcfSSatish Balay        to make sure that the full system satisfies the full-space conditions.
170a7e14dcfSSatish Balay 
171a7e14dcfSSatish Balay        This rule gives superlinear asymptotic convergence
172a7e14dcfSSatish Balay        asls->atol = min(0.5, asls->merit*sqrt(asls->merit));
173a7e14dcfSSatish Balay        asls->rtol = 0.0;
174a7e14dcfSSatish Balay 
175a7e14dcfSSatish Balay        This rule gives quadratic asymptotic convergence
176a7e14dcfSSatish Balay        asls->atol = min(0.5, asls->merit*asls->merit);
177a7e14dcfSSatish Balay        asls->rtol = 0.0;
178a7e14dcfSSatish Balay 
179a7e14dcfSSatish Balay        Calculate a free and fixed set of variables.  The fixed set of
180a7e14dcfSSatish Balay        variables are those for the d_b is approximately equal to zero.
181a7e14dcfSSatish Balay        The definition of approximately changes as we approach the solution
182a7e14dcfSSatish Balay        to the problem.
183a7e14dcfSSatish Balay 
184a7e14dcfSSatish Balay        No one rule is guaranteed to work in all cases.  The following
185a7e14dcfSSatish Balay        definition is based on the norm of the Jacobian matrix.  If the
186a7e14dcfSSatish Balay        norm is large, the tolerance becomes smaller. */
187a7e14dcfSSatish Balay     ierr = MatNorm(tao->jacobian,NORM_1,&asls->identifier);CHKERRQ(ierr);
188a7e14dcfSSatish Balay     asls->identifier = PetscMin(asls->merit, 1e-2) / (1 + asls->identifier);
189a7e14dcfSSatish Balay 
190a7e14dcfSSatish Balay     ierr = VecSet(asls->t1,-asls->identifier);CHKERRQ(ierr);
191a7e14dcfSSatish Balay     ierr = VecSet(asls->t2, asls->identifier);CHKERRQ(ierr);
192a7e14dcfSSatish Balay 
193a7e14dcfSSatish Balay     ierr = ISDestroy(&asls->fixed);CHKERRQ(ierr);
194a7e14dcfSSatish Balay     ierr = ISDestroy(&asls->free);CHKERRQ(ierr);
195a7e14dcfSSatish Balay     ierr = VecWhichBetweenOrEqual(asls->t1, asls->db, asls->t2, &asls->fixed);CHKERRQ(ierr);
1964473680cSBarry Smith     ierr = ISComplementVec(asls->fixed,asls->t1, &asls->free);CHKERRQ(ierr);
197a7e14dcfSSatish Balay 
198a7e14dcfSSatish Balay     ierr = ISGetSize(asls->fixed,&nf);CHKERRQ(ierr);
199335036cbSBarry Smith     ierr = PetscInfo1(tao,"Number of fixed variables: %D\n", nf);CHKERRQ(ierr);
200a7e14dcfSSatish Balay 
201a7e14dcfSSatish Balay     /* We now have our partition.  Now calculate the direction in the
202a7e14dcfSSatish Balay        fixed variable space. */
203302440fdSBarry Smith     ierr = TaoVecGetSubVec(asls->ff, asls->fixed, tao->subset_type, 0.0, &asls->r1);CHKERRQ(ierr);
204302440fdSBarry Smith     ierr = TaoVecGetSubVec(asls->da, asls->fixed, tao->subset_type, 1.0, &asls->r2);CHKERRQ(ierr);
205a7e14dcfSSatish Balay     ierr = VecPointwiseDivide(asls->r1,asls->r1,asls->r2);CHKERRQ(ierr);
206a7e14dcfSSatish Balay     ierr = VecSet(tao->stepdirection,0.0);CHKERRQ(ierr);
2074473680cSBarry Smith     ierr = VecISAXPY(tao->stepdirection, asls->fixed,1.0,asls->r1);CHKERRQ(ierr);
208a7e14dcfSSatish Balay 
209a7e14dcfSSatish Balay     /* Our direction in the Fixed Variable Set is fixed.  Calculate the
210a7e14dcfSSatish Balay        information needed for the step in the Free Variable Set.  To
211a7e14dcfSSatish Balay        do this, we need to know the diagonal perturbation and the
212a7e14dcfSSatish Balay        right hand side. */
213a7e14dcfSSatish Balay 
214b98f30f2SJason Sarich     ierr = TaoVecGetSubVec(asls->da, asls->free, tao->subset_type, 0.0, &asls->r1);CHKERRQ(ierr);
215b98f30f2SJason Sarich     ierr = TaoVecGetSubVec(asls->ff, asls->free, tao->subset_type, 0.0, &asls->r2);CHKERRQ(ierr);
216b98f30f2SJason Sarich     ierr = TaoVecGetSubVec(asls->db, asls->free, tao->subset_type, 1.0, &asls->r3);CHKERRQ(ierr);
217a7e14dcfSSatish Balay     ierr = VecPointwiseDivide(asls->r1,asls->r1, asls->r3);CHKERRQ(ierr);
218a7e14dcfSSatish Balay     ierr = VecPointwiseDivide(asls->r2,asls->r2, asls->r3);CHKERRQ(ierr);
219a7e14dcfSSatish Balay 
220a7e14dcfSSatish Balay     /* r1 is the diagonal perturbation
221a7e14dcfSSatish Balay        r2 is the right hand side
222a7e14dcfSSatish Balay        r3 is no longer needed
223a7e14dcfSSatish Balay 
224a7e14dcfSSatish Balay        Now need to modify r2 for our direction choice in the fixed
225a7e14dcfSSatish Balay        variable set:  calculate t1 = J*d, take the reduced vector
226a7e14dcfSSatish Balay        of t1 and modify r2. */
227a7e14dcfSSatish Balay 
228a7e14dcfSSatish Balay     ierr = MatMult(tao->jacobian, tao->stepdirection, asls->t1);CHKERRQ(ierr);
229b98f30f2SJason Sarich     ierr = TaoVecGetSubVec(asls->t1,asls->free,tao->subset_type,0.0,&asls->r3);CHKERRQ(ierr);
230a7e14dcfSSatish Balay     ierr = VecAXPY(asls->r2, -1.0, asls->r3);CHKERRQ(ierr);
231a7e14dcfSSatish Balay 
232a7e14dcfSSatish Balay     /* Calculate the reduced problem matrix and the direction */
23347a47007SBarry Smith     if (!asls->w && (tao->subset_type == TAO_SUBSET_MASK || tao->subset_type == TAO_SUBSET_MATRIXFREE)) {
234a7e14dcfSSatish Balay       ierr = VecDuplicate(tao->solution, &asls->w);CHKERRQ(ierr);
235a7e14dcfSSatish Balay     }
236b98f30f2SJason Sarich     ierr = TaoMatGetSubMat(tao->jacobian, asls->free, asls->w, tao->subset_type,&asls->J_sub);CHKERRQ(ierr);
237a7e14dcfSSatish Balay     if (tao->jacobian != tao->jacobian_pre) {
238b98f30f2SJason Sarich       ierr = TaoMatGetSubMat(tao->jacobian_pre, asls->free, asls->w, tao->subset_type, &asls->Jpre_sub);CHKERRQ(ierr);
239a7e14dcfSSatish Balay     } else {
240a7e14dcfSSatish Balay       ierr = MatDestroy(&asls->Jpre_sub);CHKERRQ(ierr);
241a7e14dcfSSatish Balay       asls->Jpre_sub = asls->J_sub;
242a7e14dcfSSatish Balay       ierr = PetscObjectReference((PetscObject)(asls->Jpre_sub));CHKERRQ(ierr);
243a7e14dcfSSatish Balay     }
244a7e14dcfSSatish Balay     ierr = MatDiagonalSet(asls->J_sub, asls->r1,ADD_VALUES);CHKERRQ(ierr);
245b98f30f2SJason Sarich     ierr = TaoVecGetSubVec(tao->stepdirection, asls->free, tao->subset_type, 0.0, &asls->dxfree);CHKERRQ(ierr);
246a7e14dcfSSatish Balay     ierr = VecSet(asls->dxfree, 0.0);CHKERRQ(ierr);
247a7e14dcfSSatish Balay 
248a7e14dcfSSatish Balay     /* Calculate the reduced direction.  (Really negative of Newton
249a7e14dcfSSatish Balay        direction.  Therefore, rest of the code uses -d.) */
250302440fdSBarry Smith     ierr = KSPReset(tao->ksp);CHKERRQ(ierr);
25123ee1639SBarry Smith     ierr = KSPSetOperators(tao->ksp, asls->J_sub, asls->Jpre_sub);CHKERRQ(ierr);
252a7e14dcfSSatish Balay     ierr = KSPSolve(tao->ksp, asls->r2, asls->dxfree);CHKERRQ(ierr);
253b0026674SJason Sarich     ierr = KSPGetIterationNumber(tao->ksp,&tao->ksp_its);CHKERRQ(ierr);
254b0026674SJason Sarich     tao->ksp_tot_its+=tao->ksp_its;
255a7e14dcfSSatish Balay 
256a7e14dcfSSatish Balay     /* Add the direction in the free variables back into the real direction. */
2574473680cSBarry Smith     ierr = VecISAXPY(tao->stepdirection, asls->free, 1.0,asls->dxfree);CHKERRQ(ierr);
258a7e14dcfSSatish Balay 
259a7e14dcfSSatish Balay     /* Check the real direction for descent and if not, use the negative
260a7e14dcfSSatish Balay        gradient direction. */
261a7e14dcfSSatish Balay     ierr = VecNorm(tao->stepdirection, NORM_2, &normd);CHKERRQ(ierr);
262a7e14dcfSSatish Balay     ierr = VecDot(tao->stepdirection, asls->dpsi, &innerd);CHKERRQ(ierr);
263a7e14dcfSSatish Balay 
264a7e14dcfSSatish Balay     if (innerd <= asls->delta*pow(normd, asls->rho)) {
265335036cbSBarry Smith       ierr = PetscInfo1(tao,"Gradient direction: %5.4e.\n", (double)innerd);CHKERRQ(ierr);
2668931d482SJason Sarich       ierr = PetscInfo1(tao, "Iteration %D: newton direction not descent\n", tao->niter);CHKERRQ(ierr);
267a7e14dcfSSatish Balay       ierr = VecCopy(asls->dpsi, tao->stepdirection);CHKERRQ(ierr);
268a7e14dcfSSatish Balay       ierr = VecDot(asls->dpsi, tao->stepdirection, &innerd);CHKERRQ(ierr);
269a7e14dcfSSatish Balay     }
270a7e14dcfSSatish Balay 
271a7e14dcfSSatish Balay     ierr = VecScale(tao->stepdirection, -1.0);CHKERRQ(ierr);
272a7e14dcfSSatish Balay     innerd = -innerd;
273a7e14dcfSSatish Balay 
274a7e14dcfSSatish Balay     /* We now have a correct descent direction.  Apply a linesearch to
275a7e14dcfSSatish Balay        find the new iterate. */
276a7e14dcfSSatish Balay     ierr = TaoLineSearchSetInitialStepLength(tao->linesearch, 1.0);CHKERRQ(ierr);
27747a47007SBarry Smith     ierr = TaoLineSearchApply(tao->linesearch, tao->solution, &psi,asls->dpsi, tao->stepdirection, &t, &ls_reason);CHKERRQ(ierr);
278a7e14dcfSSatish Balay     ierr = VecNorm(asls->dpsi, NORM_2, &ndpsi);CHKERRQ(ierr);
279a7e14dcfSSatish Balay   }
280a7e14dcfSSatish Balay   PetscFunctionReturn(0);
281a7e14dcfSSatish Balay }
282a7e14dcfSSatish Balay 
283a7e14dcfSSatish Balay /* ---------------------------------------------------------- */
2841522df2eSJason Sarich /*MC
2851522df2eSJason Sarich    TAOASILS - Active-set infeasible linesearch algorithm for solving
2861522df2eSJason Sarich        complementarity constraints
2871522df2eSJason Sarich 
2881522df2eSJason Sarich    Options Database Keys:
2891522df2eSJason Sarich + -tao_ssls_delta - descent test fraction
2901522df2eSJason Sarich - -tao_ssls_rho - descent test power
2911522df2eSJason Sarich 
2921eb8069cSJason Sarich   Level: beginner
2931522df2eSJason Sarich M*/
294a7e14dcfSSatish Balay #undef __FUNCT__
295a7e14dcfSSatish Balay #define __FUNCT__ "TaoCreate_ASILS"
296728e0ed0SBarry Smith PETSC_EXTERN PetscErrorCode TaoCreate_ASILS(Tao tao)
297a7e14dcfSSatish Balay {
298a7e14dcfSSatish Balay   TAO_SSLS       *asls;
299a7e14dcfSSatish Balay   PetscErrorCode ierr;
3008caf6e8cSBarry Smith   const char     *armijo_type = TAOLINESEARCHARMIJO;
301a7e14dcfSSatish Balay 
302a7e14dcfSSatish Balay   PetscFunctionBegin;
3033c9e27cfSGeoffrey Irving   ierr = PetscNewLog(tao,&asls);CHKERRQ(ierr);
304a7e14dcfSSatish Balay   tao->data = (void*)asls;
305a7e14dcfSSatish Balay   tao->ops->solve = TaoSolve_ASILS;
306a7e14dcfSSatish Balay   tao->ops->setup = TaoSetUp_ASILS;
307a7e14dcfSSatish Balay   tao->ops->view = TaoView_SSLS;
308a7e14dcfSSatish Balay   tao->ops->setfromoptions = TaoSetFromOptions_SSLS;
309a7e14dcfSSatish Balay   tao->ops->destroy = TaoDestroy_ASILS;
310a7e14dcfSSatish Balay   tao->subset_type = TAO_SUBSET_SUBVEC;
311a7e14dcfSSatish Balay   asls->delta = 1e-10;
312a7e14dcfSSatish Balay   asls->rho = 2.1;
3136c23d075SBarry Smith   asls->fixed = NULL;
3146c23d075SBarry Smith   asls->free = NULL;
3156c23d075SBarry Smith   asls->J_sub = NULL;
3166c23d075SBarry Smith   asls->Jpre_sub = NULL;
3176c23d075SBarry Smith   asls->w = NULL;
3186c23d075SBarry Smith   asls->r1 = NULL;
3196c23d075SBarry Smith   asls->r2 = NULL;
3206c23d075SBarry Smith   asls->r3 = NULL;
3216c23d075SBarry Smith   asls->t1 = NULL;
3226c23d075SBarry Smith   asls->t2 = NULL;
3236c23d075SBarry Smith   asls->dxfree = NULL;
324a7e14dcfSSatish Balay 
325a7e14dcfSSatish Balay   asls->identifier = 1e-5;
326a7e14dcfSSatish Balay 
327a7e14dcfSSatish Balay   ierr = TaoLineSearchCreate(((PetscObject)tao)->comm, &tao->linesearch);CHKERRQ(ierr);
328a7e14dcfSSatish Balay   ierr = TaoLineSearchSetType(tao->linesearch, armijo_type);CHKERRQ(ierr);
3295d527766SPatrick Farrell   ierr = TaoLineSearchSetOptionsPrefix(tao->linesearch,tao->hdr.prefix);CHKERRQ(ierr);
330a7e14dcfSSatish Balay   ierr = TaoLineSearchSetFromOptions(tao->linesearch);CHKERRQ(ierr);
331a7e14dcfSSatish Balay 
332a7e14dcfSSatish Balay   ierr = KSPCreate(((PetscObject)tao)->comm, &tao->ksp);CHKERRQ(ierr);
3335d527766SPatrick Farrell   ierr = KSPSetOptionsPrefix(tao->ksp,tao->hdr.prefix);CHKERRQ(ierr);
334a7e14dcfSSatish Balay   ierr = KSPSetFromOptions(tao->ksp);CHKERRQ(ierr);
3356552cf8aSJason Sarich 
3366552cf8aSJason Sarich   /* Override default settings (unless already changed) */
3376552cf8aSJason Sarich   if (!tao->max_it_changed) tao->max_it = 2000;
3386552cf8aSJason Sarich   if (!tao->max_funcs_changed) tao->max_funcs = 4000;
3396552cf8aSJason Sarich   if (!tao->gttol_changed) tao->gttol = 0;
3406552cf8aSJason Sarich   if (!tao->grtol_changed) tao->grtol = 0;
3416f4723b1SBarry Smith #if defined(PETSC_USE_REAL_SINGLE)
3426552cf8aSJason Sarich   if (!tao->gatol_changed) tao->gatol = 1.0e-6;
3436552cf8aSJason Sarich   if (!tao->fmin_changed)  tao->fmin = 1.0e-4;
3446f4723b1SBarry Smith #else
3456552cf8aSJason Sarich   if (!tao->gatol_changed) tao->gatol = 1.0e-16;
3466552cf8aSJason Sarich   if (!tao->fmin_changed) tao->fmin = 1.0e-8;
3476f4723b1SBarry Smith #endif
348a7e14dcfSSatish Balay   PetscFunctionReturn(0);
349a7e14dcfSSatish Balay }
350728e0ed0SBarry Smith 
351a7e14dcfSSatish Balay 
352