Preconditioned Galerkin and minimal residual methods for solving Sylvester equations
Author:
, , , ,Year
: 2006
Abstract: This paper presents preconditioned Galerkin and minimal residual algorithms for the solution of Sylvester equations AX−XB=C. Given two good preconditioner matrices M and N for matrices A and B, respectively, we solve the Sylvester equations MAXN−MXBN=MCN. The algorithms use the Arnoldi process to generate orthonormal bases of certain Krylov subspaces and simultaneously reduce the order of Sylvester equations. Numerical experiments show that the solution of Sylvester equations can be obtained with high accuracy by using the preconditioned versions of Galerkin and minimal residual algorithms and this versions are more robust and more efficient than those without preconditioning.
Keyword(s): Sylvester matrix equations Preconditioning Galerkin method Minimal residual method Krylov subspace
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Preconditioned Galerkin and minimal residual methods for solving Sylvester equations
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| contributor author | A. Kaabi | en |
| contributor author | فائزه توتونیان مشهد | en |
| contributor author | اصغر کرایه چیان | en |
| contributor author | Faezeh Toutounian Mashhad | fa |
| contributor author | Asghar Kerayechian | fa |
| date accessioned | 2020-06-06T13:16:33Z | |
| date available | 2020-06-06T13:16:33Z | |
| date issued | 2006 | |
| identifier uri | https://libsearch.um.ac.ir:443/fum/handle/fum/3348604 | |
| description abstract | This paper presents preconditioned Galerkin and minimal residual algorithms for the solution of Sylvester equations AX−XB=C. Given two good preconditioner matrices M and N for matrices A and B, respectively, we solve the Sylvester equations MAXN−MXBN=MCN. The algorithms use the Arnoldi process to generate orthonormal bases of certain Krylov subspaces and simultaneously reduce the order of Sylvester equations. Numerical experiments show that the solution of Sylvester equations can be obtained with high accuracy by using the preconditioned versions of Galerkin and minimal residual algorithms and this versions are more robust and more efficient than those without preconditioning. | en |
| language | English | |
| title | Preconditioned Galerkin and minimal residual methods for solving Sylvester equations | en |
| type | Journal Paper | |
| contenttype | External Fulltext | |
| subject keywords | Sylvester matrix equations Preconditioning Galerkin method Minimal residual method Krylov subspace | en |
| journal title | Applied Mathematics and Computation | en |
| journal title | Applied Mathematics and Computation | fa |
| pages | 1208-1214 | |
| journal volume | 181 | |
| journal issue | 2 | |
| identifier link | https://profdoc.um.ac.ir/paper-abstract-202465.html | |
| identifier articleid | 202465 |


