Deflation for the Off-Diagonal Block in Symmetric Saddle Point Systems

IF 1.5 2区 数学 Q2 MATHEMATICS, APPLIED SIAM Journal on Matrix Analysis and Applications Pub Date : 2024-01-17 DOI:10.1137/22m1537266
Andrei Dumitrasc, Carola Kruse, Ulrich Rüde
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Abstract

SIAM Journal on Matrix Analysis and Applications, Volume 45, Issue 1, Page 203-231, March 2024.
Abstract. Deflation techniques are typically used to shift isolated clusters of small eigenvalues in order to obtain a tighter distribution and a smaller condition number. Such changes induce a positive effect in the convergence behavior of Krylov subspace methods, which are among the most popular iterative solvers for large sparse linear systems. We develop a deflation strategy for symmetric saddle point matrices by taking advantage of their underlying block structure. The vectors used for deflation come from an elliptic singular value decomposition relying on the generalized Golub–Kahan bidiagonalization process. The block targeted by deflation is the off-diagonal one since it features a problematic singular value distribution for certain applications. One example is the Stokes flow in elongated channels, where the off-diagonal block has several small, isolated singular values, depending on the length of the channel. Applying deflation to specific parts of the saddle point system is important when using solvers such as CRAIG, which operates on individual blocks rather than the whole system. The theory is developed by extending the existing framework for deflating square matrices before applying a Krylov subspace method such as MINRES. Numerical experiments confirm the merits of our strategy and lead to interesting questions about using approximate vectors for deflation.
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对称鞍点系统中对角线外块的放缩
SIAM 矩阵分析与应用期刊》,第 45 卷,第 1 期,第 203-231 页,2024 年 3 月。 摘要放缩技术通常用于移动孤立的小特征值簇,以获得更紧密的分布和更小的条件数。这种变化会对 Krylov 子空间方法的收敛行为产生积极影响,而 Krylov 子空间方法是大型稀疏线性系统最常用的迭代求解器之一。我们利用对称鞍点矩阵的底层块结构,开发了一种对称鞍点矩阵的放缩策略。用于放缩的向量来自椭圆奇异值分解,依赖于广义 Golub-Kahan 对角线化过程。放缩的目标块是离对角线块,因为它在某些应用中具有奇异值分布问题。其中一个例子是细长通道中的斯托克斯流,根据通道的长度,非对角线块有几个孤立的小奇异值。在使用 CRAIG 等求解器时,对鞍点系统的特定部分进行放缩非常重要,因为 CRAIG 等求解器对单个块而不是整个系统进行求解。该理论是通过扩展现有框架,在应用诸如 MINRES 等克雷洛夫子空间方法之前对正方形矩阵进行放缩而发展起来的。数值实验证实了我们策略的优点,并引出了关于使用近似向量进行放缩的有趣问题。
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来源期刊
CiteScore
2.90
自引率
6.70%
发文量
61
审稿时长
6-12 weeks
期刊介绍: The SIAM Journal on Matrix Analysis and Applications contains research articles in matrix analysis and its applications and papers of interest to the numerical linear algebra community. Applications include such areas as signal processing, systems and control theory, statistics, Markov chains, and mathematical biology. Also contains papers that are of a theoretical nature but have a possible impact on applications.
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