Study of methods for dimension reduction of complex dynamic linear systems models

Complex dynamic linear systems of equations are solved by numerical iterative methods, which need much computation and are timeconsuming ones, and the optimization stage requires repeated solution of these equation systems that increases the time on development. To shorten the computation time, vari...

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Main Authors: Manatskov Yuriy M., Bertram Torsten, Shaykhutdinov Danil V., Gorbatenko Nikolay I.
Format: Article
Language:English
Published: EDP Sciences 2018-01-01
Series:MATEC Web of Conferences
Online Access:https://doi.org/10.1051/matecconf/201822604036
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spelling doaj-7cb5ba50880243529c918de1dd1a07d92021-02-02T04:38:44ZengEDP SciencesMATEC Web of Conferences2261-236X2018-01-012260403610.1051/matecconf/201822604036matecconf_dts2018_04036Study of methods for dimension reduction of complex dynamic linear systems modelsManatskov Yuriy M.Bertram Torsten0Shaykhutdinov Danil V.1Gorbatenko Nikolay I.2TU Dortmund, Department of Electrical Engineering and Information TechnologyPlatov South-Russian State Polytechnic University (NPI), Information Measuring Systems and Technologies DepartmentPlatov South-Russian State Polytechnic University (NPI), Information Measuring Systems and Technologies DepartmentComplex dynamic linear systems of equations are solved by numerical iterative methods, which need much computation and are timeconsuming ones, and the optimization stage requires repeated solution of these equation systems that increases the time on development. To shorten the computation time, various methods can be applied, among them preliminary (estimated) calculation or oversimple models calculation, however, while testing and optimizing the full model is used. Reduced order models are very popular in solving this problem. The main idea of a reduced order model is to find a simplified model that may reflect the required properties of the original model as accurately as possible. There are many methods for the model order reduction, which have their advantages and disadvantages. In this article, a method based on Krylov subspaces and SVD methods is considered. A numerical experiments is given.https://doi.org/10.1051/matecconf/201822604036
collection DOAJ
language English
format Article
sources DOAJ
author Manatskov Yuriy M.
Bertram Torsten
Shaykhutdinov Danil V.
Gorbatenko Nikolay I.
spellingShingle Manatskov Yuriy M.
Bertram Torsten
Shaykhutdinov Danil V.
Gorbatenko Nikolay I.
Study of methods for dimension reduction of complex dynamic linear systems models
MATEC Web of Conferences
author_facet Manatskov Yuriy M.
Bertram Torsten
Shaykhutdinov Danil V.
Gorbatenko Nikolay I.
author_sort Manatskov Yuriy M.
title Study of methods for dimension reduction of complex dynamic linear systems models
title_short Study of methods for dimension reduction of complex dynamic linear systems models
title_full Study of methods for dimension reduction of complex dynamic linear systems models
title_fullStr Study of methods for dimension reduction of complex dynamic linear systems models
title_full_unstemmed Study of methods for dimension reduction of complex dynamic linear systems models
title_sort study of methods for dimension reduction of complex dynamic linear systems models
publisher EDP Sciences
series MATEC Web of Conferences
issn 2261-236X
publishDate 2018-01-01
description Complex dynamic linear systems of equations are solved by numerical iterative methods, which need much computation and are timeconsuming ones, and the optimization stage requires repeated solution of these equation systems that increases the time on development. To shorten the computation time, various methods can be applied, among them preliminary (estimated) calculation or oversimple models calculation, however, while testing and optimizing the full model is used. Reduced order models are very popular in solving this problem. The main idea of a reduced order model is to find a simplified model that may reflect the required properties of the original model as accurately as possible. There are many methods for the model order reduction, which have their advantages and disadvantages. In this article, a method based on Krylov subspaces and SVD methods is considered. A numerical experiments is given.
url https://doi.org/10.1051/matecconf/201822604036
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