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A Reordering Heuristic for Accelerating the Convergence of the Solution of Some Large Sparse PDE Matrices on Structured Grids by the Krylov Subspace Methods with the ILUT Preconditioner

Authors
Sangbaek, M. A.
Issue Date
May-2009
Publisher
Oxford University Press
Keywords
partial differential equations; sparse linear systems; iterative methods; ILUT preconditioner; reverse cuthill-McKee; lute Red/Black ordering
Citation
IEICE Transactions on Fundamentals of Electronics, Communications and Computer Sciences, v.E92A, no.5, pp 1322 - 1330
Pages
9
Indexed
SCOPUS
Journal Title
IEICE Transactions on Fundamentals of Electronics, Communications and Computer Sciences
Volume
E92A
Number
5
Start Page
1322
End Page
1330
URI
https://scholarworks.bwise.kr/erica/handle/2021.sw.erica/41271
DOI
10.1587/transfun.E92.A.1322
ISSN
0916-8508
1745-1337
Abstract
Given a sparse linear system, A x = b, we can solve the equivalent system P A P-T y = P b, x = P-T y, where P is a permutation matrix. It has been known that, for example, when P is the RCMK (Reverse Cuthill-Mckee) ordering permutation, the convergence rate of the Krylov subspace method combined with the ILU-type preconditioner is often enhanced, especially if the matrix A is highly nonsymmetric. In this paper we offer a reordering heuristic for accelerating the solution of large sparse linear systems by the Krylov subspace methods with the ILUT preconditioner. It is the LRB (Line Red/Black) ordering based on the well-known 2-point Red-Black ordering. We show that for some model-like PDE (partial differential equations the LRB ordered FDM (Finite Difference Method)/FEM (Finite Element Method) discretization matrices require much less fill-ins in the ILUT factorizations than those of the Natural ordering and the RCMK ordering and hence, produces a more accurate preconditioner, if a high level of fill-in is used. It implies that the LRB ordering could outperform the other two orderings combined with the ILUT preconditioned Krylov subspace method if the level of fill-in is high enough. We compare the performance of our heuristic with that of the RCMK (Reverse Cuthill-McKee) ordering. Our test matrices are obtained from various standard discretizations of two-dimensional and three-dimensional model-like PDEs on structured grids by the FDM or the FEM. We claim that for the resulting matrices the performance of our reordering strategy for the Krylov subspace method combined with the ILUT preconditioner is superior to that of RCMK ordering, when the proper number of fill-in was used for the ILUT. Also, while the RCMK ordering is known to have little advantage over the Natural ordering in the case of symmetric matrices, the LRB ordering still can improve the convergence rate, even if the matrices are symmetric.
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