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首页> 外文期刊>SIAM Journal on Matrix Analysis and Applications >LOW-RANK CORRECTION METHODS FOR ALGEBRAIC DOMAIN DECOMPOSITION PRECONDITIONERS
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LOW-RANK CORRECTION METHODS FOR ALGEBRAIC DOMAIN DECOMPOSITION PRECONDITIONERS

机译:代数域分解前提者的低秩校正方法

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This paper presents a parallel preconditioning method for distributed sparse linear systems, based on an approximate inverse of the original matrix, that adopts a general framework of distributed sparse matrices and exploits domain decomposition (DD) and low-rank corrections. The DD approach decouples the matrix and, once inverted, a low-rank approximation is applied by exploiting the Sherman-Morrison-Woodbury formula, which yields two variants of the preconditioning methods. The low-rank expansion is computed by the Lanczos procedure with reorthogonalizations. Numerical experiments indicate that, when combined with Krylov subspace accelerators, this preconditioner can be efficient and robust for solving symmetric sparse linear systems. Comparisons with pARMS, a DD-based parallel incomplete LU (ILU) preconditioning method, are presented for solving Poisson's equation and linear elasticity problems.
机译:本文提出了一种用于分布式稀疏线性系统的并行预处理方法,基于原始矩阵的近似逆,它采用分布式稀疏矩阵的一般框架,利用域分解(DD)和低秩校正。 DD方法通过倒置矩阵并通过利用谢尔曼-Morrison-Woodbury公式来施加低秩近似,这产生了预处理方法的两个变体。 Lanczos手术与rebortortOnalizations计算的低级别扩展。 数值实验表明,当与Krylov子空间加速器结合时,该预处理器可以是用于求解对称稀疏线性系统的高效且稳健。 提出了一种与PARMS,一种DD的并行不完整的LU(ILU)预处理方法,用于解决泊松方程和线性弹性问题。

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