genherm.c

来自「math library from gnu」· C语言 代码 · 共 226 行

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/* eigen/genherm.c *  * Copyright (C) 2007 Patrick Alken *  * This program is free software; you can redistribute it and/or modify * it under the terms of the GNU General Public License as published by * the Free Software Foundation; either version 3 of the License, or (at * your option) any later version. *  * This program is distributed in the hope that it will be useful, but * WITHOUT ANY WARRANTY; without even the implied warranty of * MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE.  See the GNU * General Public License for more details. *  * You should have received a copy of the GNU General Public License * along with this program; if not, write to the Free Software * Foundation, Inc., 51 Franklin Street, Fifth Floor, Boston, MA 02110-1301, USA. */#include <stdlib.h>#include <config.h>#include <gsl/gsl_eigen.h>#include <gsl/gsl_linalg.h>#include <gsl/gsl_math.h>#include <gsl/gsl_blas.h>#include <gsl/gsl_vector.h>#include <gsl/gsl_matrix.h>#include <gsl/gsl_complex.h>#include <gsl/gsl_complex_math.h>/* * This module computes the eigenvalues of a complex generalized * hermitian-definite eigensystem A x = \lambda B x, where A and * B are hermitian, and B is positive-definite. *//*gsl_eigen_genherm_alloc()Allocate a workspace for solving the generalized hermitian-definiteeigenvalue problem. The size of this workspace is O(3n).Inputs: n - size of matricesReturn: pointer to workspace*/gsl_eigen_genherm_workspace *gsl_eigen_genherm_alloc(const size_t n){  gsl_eigen_genherm_workspace *w;  if (n == 0)    {      GSL_ERROR_NULL ("matrix dimension must be positive integer",                      GSL_EINVAL);    }  w = (gsl_eigen_genherm_workspace *) calloc (1, sizeof (gsl_eigen_genherm_workspace));  if (w == 0)    {      GSL_ERROR_NULL ("failed to allocate space for workspace", GSL_ENOMEM);    }  w->size = n;  w->herm_workspace_p = gsl_eigen_herm_alloc(n);  if (!w->herm_workspace_p)    {      gsl_eigen_genherm_free(w);      GSL_ERROR_NULL("failed to allocate space for herm workspace", GSL_ENOMEM);    }  return (w);} /* gsl_eigen_genherm_alloc() *//*gsl_eigen_genherm_free()  Free workspace w*/voidgsl_eigen_genherm_free (gsl_eigen_genherm_workspace * w){  if (w->herm_workspace_p)    gsl_eigen_herm_free(w->herm_workspace_p);  free(w);} /* gsl_eigen_genherm_free() *//*gsl_eigen_genherm()Solve the generalized hermitian-definite eigenvalue problemA x = \lambda B xfor the eigenvalues \lambda.Inputs: A    - complex hermitian matrix        B    - complex hermitian and positive definite matrix        eval - where to store eigenvalues        w    - workspaceReturn: success or error*/intgsl_eigen_genherm (gsl_matrix_complex * A, gsl_matrix_complex * B,                   gsl_vector * eval, gsl_eigen_genherm_workspace * w){  const size_t N = A->size1;  /* check matrix and vector sizes */  if (N != A->size2)    {      GSL_ERROR ("matrix must be square to compute eigenvalues", GSL_ENOTSQR);    }  else if ((N != B->size1) || (N != B->size2))    {      GSL_ERROR ("B matrix dimensions must match A", GSL_EBADLEN);    }  else if (eval->size != N)    {      GSL_ERROR ("eigenvalue vector must match matrix size", GSL_EBADLEN);    }  else if (w->size != N)    {      GSL_ERROR ("matrix size does not match workspace", GSL_EBADLEN);    }  else    {      int s;      /* compute Cholesky factorization of B */      s = gsl_linalg_complex_cholesky_decomp(B);      if (s != GSL_SUCCESS)        return s; /* B is not positive definite */      /* transform to standard hermitian eigenvalue problem */      gsl_eigen_genherm_standardize(A, B);      s = gsl_eigen_herm(A, eval, w->herm_workspace_p);      return s;    }} /* gsl_eigen_genherm() *//*gsl_eigen_genherm_standardize()  Reduce the generalized hermitian-definite eigenproblem tothe standard hermitian eigenproblem by computingC = L^{-1} A L^{-H}where L L^H is the Cholesky decomposition of BInputs: A - (input/output) complex hermitian matrix        B - complex hermitian, positive definite matrix in Cholesky formReturn: successNotes: A is overwritten by L^{-1} A L^{-H}*/intgsl_eigen_genherm_standardize(gsl_matrix_complex *A,                              const gsl_matrix_complex *B){  const size_t N = A->size1;  size_t i;  double a, b;  gsl_complex y, z;  GSL_SET_IMAG(&z, 0.0);  for (i = 0; i < N; ++i)    {      /* update lower triangle of A(i:n, i:n) */      y = gsl_matrix_complex_get(A, i, i);      a = GSL_REAL(y);      y = gsl_matrix_complex_get(B, i, i);      b = GSL_REAL(y);      a /= b * b;      GSL_SET_REAL(&z, a);      gsl_matrix_complex_set(A, i, i, z);      if (i < N - 1)        {          gsl_vector_complex_view ai =            gsl_matrix_complex_subcolumn(A, i, i + 1, N - i - 1);          gsl_matrix_complex_view ma =            gsl_matrix_complex_submatrix(A, i + 1, i + 1, N - i - 1, N - i - 1);          gsl_vector_complex_const_view bi =            gsl_matrix_complex_const_subcolumn(B, i, i + 1, N - i - 1);          gsl_matrix_complex_const_view mb =            gsl_matrix_complex_const_submatrix(B, i + 1, i + 1, N - i - 1, N - i - 1);          gsl_blas_zdscal(1.0 / b, &ai.vector);          GSL_SET_REAL(&z, -0.5 * a);          gsl_blas_zaxpy(z, &bi.vector, &ai.vector);          gsl_blas_zher2(CblasLower,                         GSL_COMPLEX_NEGONE,                         &ai.vector,                         &bi.vector,                         &ma.matrix);          gsl_blas_zaxpy(z, &bi.vector, &ai.vector);          gsl_blas_ztrsv(CblasLower,                         CblasNoTrans,                         CblasNonUnit,                         &mb.matrix,                         &ai.vector);        }    }  return GSL_SUCCESS;} /* gsl_eigen_genherm_standardize() */

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