Data-driven reduced-order modeling for nonautonomous dynamical systems in multiscale media
Mengnan Li, Lijian Jiang

TL;DR
This paper develops a data-driven reduced-order modeling approach for nonautonomous dynamical systems in multiscale media using Koopman operators, with strategies for high-dimensional data and real-time updates.
Contribution
It introduces a novel two-stage reduced-order modeling framework with online correction methods for nonautonomous systems in multiscale media.
Findings
Effective Koopman operator estimation with moving time windows
High-dimensional data handled via block-wise low rank decomposition
Adaptive online method balances accuracy and efficiency
Abstract
In this article, we present data-driven reduced-order modeling for nonautonomous dynamical systems in multiscale media using Koopman operators. Different from the case of autonomous dynamical systems, the Koopman operator family of nonautonomous dynamical systems significantly depend on a time pair. In order to effectively estimate the time-dependent Koopman operators, a moving time window is used to decompose the snapshot data, and the extended dynamic mode decomposition method is applied to computing the Koopman operators in each local temporal domain. Many physical properties in multiscale media often vary in very different scales. In order to capture multiscale information well, the dimension of collected data may be high. To accurately construct the models of dynamical systems in multiscale media, we use high spatial dimension of observation data. It is challenging to compute the…
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Taxonomy
TopicsSeismic Imaging and Inversion Techniques · Model Reduction and Neural Networks · Advanced Mathematical Modeling in Engineering
