J 2014

A preconditioned low-rank CG method for parameter-dependent Lyapunov matrix equations

PLEŠINGER, Martin, Daniel KRESSNER and Christine TOBLER

Basic information

Original name

A preconditioned low-rank CG method for parameter-dependent Lyapunov matrix equations

Authors

PLEŠINGER, Martin (203 Czech Republic, guarantor, belonging to the institution), Daniel KRESSNER (276 Germany) and Christine TOBLER (756 Switzerland)

Edition

Numerical Linear Algebra with Applications, 2014, 1070-5325

Other information

Language

English

Type of outcome

Article in a journal

Field of Study

General mathematics

Country of publisher

United Kingdom of Great Britain and Northern Ireland

Confidentiality degree

is not subject to a state or trade secret

References:

RIV identification code

RIV/46747885:24510/14:#0001110

Organization

Faculty of Science, Humanities and Education – Technical University of Liberec – Repository

UT WoS

000343009000006

Keywords in English

Lyapunov equations; CG method;preconditioning; ADI preconditioner; sign function preconditioner; tensors in Tucker format; model reduction

Tags

International impact, Reviewed
Changed: 9/4/2015 19:39, Mgr. Jiří Šmída, Ph.D.

Abstract

V originále

This paper is concerned with the numerical solution of symmetric large-scale Lyapunov equations with low-rank right-hand sides and coefficient matrices depending on a parameter. Specifically, we consider the situation when the parameter dependence is sufficiently smooth, and the aim is to compute solutions for many different parameter samples. On the basis of existing results for Lyapunov equations and parameter-dependent linear systems, we prove that the tensor containing all solution samples typically allows for an excellent low multilinear rank approximation. Stacking all sampled equations into one huge linear system, this fact can be exploited by combining the preconditioned CG method with low-rank truncation. Our approach is flexible enough to allow for a variety of preconditioners based, for example, on the sign function iteration or the alternating direction implicit method.