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113 lines
3.4 KiB
C++
113 lines
3.4 KiB
C++
/*
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Written by Xuchen Han <xuchenhan2015@u.northwestern.edu>
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Bullet Continuous Collision Detection and Physics Library
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Copyright (c) 2019 Google Inc. http://bulletphysics.org
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This software is provided 'as-is', without any express or implied warranty.
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In no event will the authors be held liable for any damages arising from the use of this software.
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Permission is granted to anyone to use this software for any purpose,
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including commercial applications, and to alter it and redistribute it freely,
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subject to the following restrictions:
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1. The origin of this software must not be misrepresented; you must not claim that you wrote the original software. If you use this software in a product, an acknowledgment in the product documentation would be appreciated but is not required.
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2. Altered source versions must be plainly marked as such, and must not be misrepresented as being the original software.
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3. This notice may not be removed or altered from any source distribution.
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*/
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#ifndef BT_CONJUGATE_RESIDUAL_H
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#define BT_CONJUGATE_RESIDUAL_H
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#include "btKrylovSolver.h"
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template <class MatrixX>
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class btConjugateResidual : public btKrylovSolver<MatrixX>
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{
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typedef btAlignedObjectArray<btVector3> TVStack;
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typedef btKrylovSolver<MatrixX> Base;
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TVStack r, p, z, temp_p, temp_r, best_x;
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// temp_r = A*r
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// temp_p = A*p
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// z = M^(-1) * temp_p = M^(-1) * A * p
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btScalar best_r;
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public:
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btConjugateResidual(const int max_it_in)
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: Base(max_it_in, 1e-8)
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{
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}
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virtual ~btConjugateResidual() {}
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// return the number of iterations taken
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int solve(MatrixX& A, TVStack& x, const TVStack& b, bool verbose = false)
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{
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BT_PROFILE("CRSolve");
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btAssert(x.size() == b.size());
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reinitialize(b);
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// r = b - A * x --with assigned dof zeroed out
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A.multiply(x, temp_r); // borrow temp_r here to store A*x
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r = this->sub(b, temp_r);
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// z = M^(-1) * r
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A.precondition(r, z); // borrow z to store preconditioned r
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r = z;
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btScalar residual_norm = this->norm(r);
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if (residual_norm <= Base::m_tolerance)
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{
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return 0;
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}
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p = r;
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btScalar r_dot_Ar, r_dot_Ar_new;
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// temp_p = A*p
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A.multiply(p, temp_p);
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// temp_r = A*r
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temp_r = temp_p;
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r_dot_Ar = this->dot(r, temp_r);
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for (int k = 1; k <= Base::m_maxIterations; k++)
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{
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// z = M^(-1) * Ap
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A.precondition(temp_p, z);
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// alpha = r^T * A * r / (Ap)^T * M^-1 * Ap)
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btScalar alpha = r_dot_Ar / this->dot(temp_p, z);
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// x += alpha * p;
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this->multAndAddTo(alpha, p, x);
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// r -= alpha * z;
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this->multAndAddTo(-alpha, z, r);
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btScalar norm_r = this->norm(r);
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if (norm_r < best_r)
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{
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best_x = x;
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best_r = norm_r;
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if (norm_r < Base::m_tolerance)
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{
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return k;
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}
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}
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// temp_r = A * r;
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A.multiply(r, temp_r);
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r_dot_Ar_new = this->dot(r, temp_r);
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btScalar beta = r_dot_Ar_new / r_dot_Ar;
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r_dot_Ar = r_dot_Ar_new;
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// p = beta*p + r;
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p = this->multAndAdd(beta, p, r);
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// temp_p = beta*temp_p + temp_r;
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temp_p = this->multAndAdd(beta, temp_p, temp_r);
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}
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if (verbose)
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{
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std::cout << "ConjugateResidual max iterations reached, residual = " << best_r << std::endl;
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}
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x = best_x;
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return Base::m_maxIterations;
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}
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void reinitialize(const TVStack& b)
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{
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r.resize(b.size());
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p.resize(b.size());
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z.resize(b.size());
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temp_p.resize(b.size());
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temp_r.resize(b.size());
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best_x.resize(b.size());
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best_r = SIMD_INFINITY;
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}
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};
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#endif /* btConjugateResidual_h */
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