Title of article :
Efficient and reliable iterative methods for linear systems
Author/Authors :
van der Vorst، نويسنده , , Henk A، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2002
Abstract :
The approximate solutions in standard iteration methods for linear systems Ax=b, with A an n by n nonsingular matrix, form a subspace. In this subspace, one may try to construct better approximations for the solution x. This is the idea behind Krylov subspace methods. It has led to very powerful and efficient methods such as conjugate gradients, GMRES, and Bi-CGSTAB. We will give an overview of these methods and we will discuss some relevant properties from the userʹs perspective view.
nvergence of Krylov subspace methods depends strongly on the eigenvalue distribution of A, and on the angles between eigenvectors of A. Preconditioning is a popular technique to obtain a better behaved linear system. We will briefly discuss some modern developments in preconditioning, in particular parallel preconditioners will be highlighted: reordering techniques for incomplete decompositions, domain decomposition approaches, and sparsified Schur complements.
Keywords :
Iterative Methods , Conjugate gradients , GMRES , Bi-CGSTAB , Preconditioning , Krylov methods , domain decomposition , Incomplete Cholesky
Journal title :
Journal of Computational and Applied Mathematics
Journal title :
Journal of Computational and Applied Mathematics