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Approximate Solution of Linear Systems with Laplace-like Operators via Cross Approximation in the Frequency Domain

  • Ekaterina A. Muravleva EMAIL logo and Ivan V. Oseledets

Abstract

In this paper we propose an efficient algorithm to compute low-rank approximation to the solution of so-called “Laplace-like” linear systems. The idea is to transform the problem into the frequency domain, and then use cross approximation. In this case, we do not need to form explicit approximation to the inverse operator, and can approximate the solution directly, which leads to reduced complexity. We demonstrate that our method is fast and robust by using it as a solver inside Uzawa iterative method for solving the Stokes problem.

MSC 2010: 65F10; 15A09

Award Identifier / Grant number: 16-31-60095

Funding statement: This work was supported by the Russian Foundation for Basic Research, grant 16-31-60095.

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Received: 2017-10-15
Revised: 2018-02-02
Accepted: 2018-05-02
Published Online: 2018-07-21
Published in Print: 2019-01-01

© 2018 Walter de Gruyter GmbH, Berlin/Boston

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