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Main Authors: Zhang, Hanqing, Mao, Junyu, Shakib, Mohammad Fahim, Scarciotti, Giordano
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2506.10866
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author Zhang, Hanqing
Mao, Junyu
Shakib, Mohammad Fahim
Scarciotti, Giordano
author_facet Zhang, Hanqing
Mao, Junyu
Shakib, Mohammad Fahim
Scarciotti, Giordano
contents Theory and methods to obtain parametric reduced-order models by moment matching are presented. The definition of the parametric moment is introduced, and methods (model-based and data-driven) for the approximation of the parametric moment of linear and nonlinear parametric systems are proposed. These approximations are exploited to construct families of parametric reduced-order models that match the approximate parametric moment of the system to be reduced and preserve key system properties such as asymptotic stability and dissipativity. The use of the model reduction methods is illustrated by means of a parametric benchmark model for the linear case and a large-scale wind farm model for the nonlinear case. In the illustration, a comparison of the proposed approximation methods is drawn and their advantages/disadvantages are discussed.
format Preprint
id arxiv_https___arxiv_org_abs_2506_10866
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Data-Driven Model Reduction by Moment Matching for Linear and Nonlinear Parametric Systems
Zhang, Hanqing
Mao, Junyu
Shakib, Mohammad Fahim
Scarciotti, Giordano
Systems and Control
Theory and methods to obtain parametric reduced-order models by moment matching are presented. The definition of the parametric moment is introduced, and methods (model-based and data-driven) for the approximation of the parametric moment of linear and nonlinear parametric systems are proposed. These approximations are exploited to construct families of parametric reduced-order models that match the approximate parametric moment of the system to be reduced and preserve key system properties such as asymptotic stability and dissipativity. The use of the model reduction methods is illustrated by means of a parametric benchmark model for the linear case and a large-scale wind farm model for the nonlinear case. In the illustration, a comparison of the proposed approximation methods is drawn and their advantages/disadvantages are discussed.
title Data-Driven Model Reduction by Moment Matching for Linear and Nonlinear Parametric Systems
topic Systems and Control
url https://arxiv.org/abs/2506.10866