Stabilized model reduction for nonlinear dynamical systems through a contractivity-preserving framework

This work develops a technique for constructing a reduced-order system that not only has low computational complexity, but also maintains the stability of the original nonlinear dynamical system. The proposed framework is designed to preserve the contractivity of the vector field in the original sys...

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Main Author: Chaturantabut Saifon
Format: Article
Language:English
Published: Sciendo 2020-12-01
Series:International Journal of Applied Mathematics and Computer Science
Subjects:
Online Access:https://doi.org/10.34768/amcs-2020-0045
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spelling doaj-810f84ce5713488f9220e3a543d4dab62021-09-06T19:41:54ZengSciendoInternational Journal of Applied Mathematics and Computer Science2083-84922020-12-0130461562810.34768/amcs-2020-0045amcs-2020-0045Stabilized model reduction for nonlinear dynamical systems through a contractivity-preserving frameworkChaturantabut Saifon0Department of Mathematics and Statistics, Thammasat University, Pathum Thani 12120, ThailandThis work develops a technique for constructing a reduced-order system that not only has low computational complexity, but also maintains the stability of the original nonlinear dynamical system. The proposed framework is designed to preserve the contractivity of the vector field in the original system, which can further guarantee stability preservation, as well as provide an error bound for the approximated equilibrium solution of the resulting reduced system. This technique employs a low-dimensional basis from proper orthogonal decomposition to optimally capture the dominant dynamics of the original system, and modifies the discrete empirical interpolation method by enforcing certain structure for the nonlinear approximation. The efficiency and accuracy of the proposed method are illustrated through numerical tests on a nonlinear reaction diffusion problem.https://doi.org/10.34768/amcs-2020-0045model order reductioncontractivityordinary differential equationspartial differential equationsproper orthogonal decompositiondiscrete empirical interpolation method
collection DOAJ
language English
format Article
sources DOAJ
author Chaturantabut Saifon
spellingShingle Chaturantabut Saifon
Stabilized model reduction for nonlinear dynamical systems through a contractivity-preserving framework
International Journal of Applied Mathematics and Computer Science
model order reduction
contractivity
ordinary differential equations
partial differential equations
proper orthogonal decomposition
discrete empirical interpolation method
author_facet Chaturantabut Saifon
author_sort Chaturantabut Saifon
title Stabilized model reduction for nonlinear dynamical systems through a contractivity-preserving framework
title_short Stabilized model reduction for nonlinear dynamical systems through a contractivity-preserving framework
title_full Stabilized model reduction for nonlinear dynamical systems through a contractivity-preserving framework
title_fullStr Stabilized model reduction for nonlinear dynamical systems through a contractivity-preserving framework
title_full_unstemmed Stabilized model reduction for nonlinear dynamical systems through a contractivity-preserving framework
title_sort stabilized model reduction for nonlinear dynamical systems through a contractivity-preserving framework
publisher Sciendo
series International Journal of Applied Mathematics and Computer Science
issn 2083-8492
publishDate 2020-12-01
description This work develops a technique for constructing a reduced-order system that not only has low computational complexity, but also maintains the stability of the original nonlinear dynamical system. The proposed framework is designed to preserve the contractivity of the vector field in the original system, which can further guarantee stability preservation, as well as provide an error bound for the approximated equilibrium solution of the resulting reduced system. This technique employs a low-dimensional basis from proper orthogonal decomposition to optimally capture the dominant dynamics of the original system, and modifies the discrete empirical interpolation method by enforcing certain structure for the nonlinear approximation. The efficiency and accuracy of the proposed method are illustrated through numerical tests on a nonlinear reaction diffusion problem.
topic model order reduction
contractivity
ordinary differential equations
partial differential equations
proper orthogonal decomposition
discrete empirical interpolation method
url https://doi.org/10.34768/amcs-2020-0045
work_keys_str_mv AT chaturantabutsaifon stabilizedmodelreductionfornonlineardynamicalsystemsthroughacontractivitypreservingframework
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