Stability-preserving model order reduction for linear stochastic Galerkin systems

Abstract Mathematical modeling often yields linear dynamical systems in science and engineering. We change physical parameters of the system into random variables to perform an uncertainty quantification. The stochastic Galerkin method yields a larger linear dynamical system, whose solution represen...

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Main Author: Roland Pulch
Format: Article
Language:English
Published: SpringerOpen 2019-09-01
Series:Journal of Mathematics in Industry
Subjects:
Online Access:http://link.springer.com/article/10.1186/s13362-019-0067-6
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spelling doaj-02c3da09b4db4d4185b29c93b6d2e1e22020-11-25T03:27:16ZengSpringerOpenJournal of Mathematics in Industry2190-59832019-09-019112410.1186/s13362-019-0067-6Stability-preserving model order reduction for linear stochastic Galerkin systemsRoland Pulch0Institute of Mathematics and Computer Science, University of GreifswaldAbstract Mathematical modeling often yields linear dynamical systems in science and engineering. We change physical parameters of the system into random variables to perform an uncertainty quantification. The stochastic Galerkin method yields a larger linear dynamical system, whose solution represents an approximation of random processes. A model order reduction (MOR) of the Galerkin system is advantageous due to the high dimensionality. However, asymptotic stability may be lost in some MOR techniques. In Galerkin-type MOR methods, the stability can be guaranteed by a transformation to a dissipative form. Either the original dynamical system or the stochastic Galerkin system can be transformed. We investigate the two variants of this stability-preserving approach. Both techniques are feasible, while featuring different properties in numerical methods. Results of numerical computations are demonstrated for two test examples modeling a mechanical application and an electric circuit, respectively.http://link.springer.com/article/10.1186/s13362-019-0067-6Linear dynamical systemPolynomial chaosStochastic Galerkin methodModel order reductionAsymptotic stabilityLyapunov equation
collection DOAJ
language English
format Article
sources DOAJ
author Roland Pulch
spellingShingle Roland Pulch
Stability-preserving model order reduction for linear stochastic Galerkin systems
Journal of Mathematics in Industry
Linear dynamical system
Polynomial chaos
Stochastic Galerkin method
Model order reduction
Asymptotic stability
Lyapunov equation
author_facet Roland Pulch
author_sort Roland Pulch
title Stability-preserving model order reduction for linear stochastic Galerkin systems
title_short Stability-preserving model order reduction for linear stochastic Galerkin systems
title_full Stability-preserving model order reduction for linear stochastic Galerkin systems
title_fullStr Stability-preserving model order reduction for linear stochastic Galerkin systems
title_full_unstemmed Stability-preserving model order reduction for linear stochastic Galerkin systems
title_sort stability-preserving model order reduction for linear stochastic galerkin systems
publisher SpringerOpen
series Journal of Mathematics in Industry
issn 2190-5983
publishDate 2019-09-01
description Abstract Mathematical modeling often yields linear dynamical systems in science and engineering. We change physical parameters of the system into random variables to perform an uncertainty quantification. The stochastic Galerkin method yields a larger linear dynamical system, whose solution represents an approximation of random processes. A model order reduction (MOR) of the Galerkin system is advantageous due to the high dimensionality. However, asymptotic stability may be lost in some MOR techniques. In Galerkin-type MOR methods, the stability can be guaranteed by a transformation to a dissipative form. Either the original dynamical system or the stochastic Galerkin system can be transformed. We investigate the two variants of this stability-preserving approach. Both techniques are feasible, while featuring different properties in numerical methods. Results of numerical computations are demonstrated for two test examples modeling a mechanical application and an electric circuit, respectively.
topic Linear dynamical system
Polynomial chaos
Stochastic Galerkin method
Model order reduction
Asymptotic stability
Lyapunov equation
url http://link.springer.com/article/10.1186/s13362-019-0067-6
work_keys_str_mv AT rolandpulch stabilitypreservingmodelorderreductionforlinearstochasticgalerkinsystems
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