2024
DOI: 10.1002/aic.18649
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Self‐tuning moving horizon estimation of nonlinear systems via physics‐informed machine learning Koopman modeling

Mingxue Yan,
Minghao Han,
Adrian Wing‐Keung Law
et al.

Abstract: In this article, we propose a physics‐informed learning‐based Koopman modeling approach and present a Koopman‐based self‐tuning moving horizon estimation design for a class of nonlinear systems. Specifically, we train Koopman operators and two neural networks—the state lifting network and the noise characterization network—using both data and available physical information. The first network accounts for the nonlinear lifting functions for the Koopman model, while the second network characterizes the system no… Show more

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