Structured interpolation for multivariate transfer functions of quadratic-bilinear systems

被引:0
作者
Peter Benner
Serkan Gugercin
Steffen W. R. Werner
机构
[1] Max Planck Institute for Dynamics of Complex Technical Systems,Faculty of Mathematics
[2] Otto von Guericke University Magdeburg,Department of Mathematics and Division of Computational Modeling and Data Analytics, Academy of Data Science
[3] Virginia Tech,undefined
来源
Advances in Computational Mathematics | 2024年 / 50卷
关键词
Model order reduction; Quadratic-bilinear systems; Structure-preserving approximation; Multivariate interpolation; 30E05; 34K17; 65D05; 93C10; 93A15;
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摘要
High-dimensional/high-fidelity nonlinear dynamical systems appear naturally when the goal is to accurately model real-world phenomena. Many physical properties are thereby encoded in the internal differential structure of these resulting large-scale nonlinear systems. The high dimensionality of the dynamics causes computational bottlenecks, especially when these large-scale systems need to be simulated for a variety of situations such as different forcing terms. This motivates model reduction where the goal is to replace the full-order dynamics with accurate reduced-order surrogates. Interpolation-based model reduction has been proven to be an effective tool for the construction of cheap-to-evaluate surrogate models that preserve the internal structure in the case of weak nonlinearities. In this paper, we consider the construction of multivariate interpolants in frequency domain for structured quadratic-bilinear systems. We propose definitions for structured variants of the symmetric subsystem and generalized transfer functions of quadratic-bilinear systems and provide conditions for structure-preserving interpolation by projection. The theoretical results are illustrated using two numerical examples including the simulation of molecular dynamics in crystal structures.
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