Spectral behavior of preconditioned non-Hermitian multilevel block Toeplitz matrices with matrix-valued symbol
Marco Donatelli, Carlo Garoni, Mariarosa Mazza, Stefano, Serra-Capizzano, Debora Sesana

TL;DR
This paper analyzes the spectral properties of preconditioned non-Hermitian multilevel block Toeplitz matrices with matrix-valued symbols, providing asymptotic eigenvalue distribution results and numerical validation for GMRES preconditioning.
Contribution
It extends spectral distribution analysis to preconditioned multilevel block Toeplitz matrices with matrix-valued symbols, generalizing previous results and offering practical preconditioning insights.
Findings
Eigenvalue distribution of preconditioned matrices converges to the symbol inverse times the symbol.
Conditions on the symbol ensure spectral localization and distribution.
Numerical experiments support theoretical spectral analysis and optimal preconditioning strategies.
Abstract
This note is devoted to preconditioning strategies for non-Hermitian multilevel block Toeplitz linear systems associated with a multivariate Lebesgue integrable matrix-valued symbol. In particular, we consider special preconditioned matrices, where the preconditioner has a band multilevel block Toeplitz structure, and we complement known results on the localization of the spectrum with global distribution results for the eigenvalues of the preconditioned matrices. In this respect, our main result is as follows. Let , let be the linear space of complex matrices, and let be functions whose components belong to . Consider the matrices , where varies in and are the multilevel block Toeplitz…
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Taxonomy
TopicsAdvanced Algebra and Geometry · Mathematical Analysis and Transform Methods · Matrix Theory and Algorithms
