2022
DOI: 10.48550/arxiv.2201.12669
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Identification of MIMO Wiener-type Koopman Models for Data-Driven Model Reduction using Deep Learning

Jan C. Schulze,
Danimir T. Doncevic,
Alexander Mitsos

Abstract: We use Koopman theory to develop a data-driven nonlinear model reduction and identification strategy for multiple-input multiple-output (MIMO) input-affine dynamical systems. While the present literature has focused on linear and bilinear Koopman models, we derive and use a Wiener-type Koopman formulation. We discuss that the Wiener structure is particularly suitable for model reduction, and can be naturally derived from Koopman theory. Moreover, the Wiener block-structure unifies the mathematical simplicity o… Show more

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