Autoencoding for the 'Good Dictionary' of eigen pairs of the Koopman Operator

Neranjaka Jayarathne,Erik M. Bollt

CoRR(2023)

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摘要
Reduced order modelling relies on representing complex dynamical systems using simplified modes, which can be achieved through Koopman operator analysis. However, computing Koopman eigen pairs for high-dimensional observable data can be inefficient. This paper proposes using deep autoencoders, a type of deep learning technique, to perform non-linear geometric transformations on raw data before computing Koopman eigen vectors. The encoded data produced by the deep autoencoder is diffeomorphic to a manifold of the dynamical system, and has a significantly lower dimension than the raw data. To handle high-dimensional time series data, Takens's time delay embedding is presented as a pre-processing technique. The paper concludes by presenting examples of these techniques in action.
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关键词
deep learning,autoencoders,data driven science,reduced order modelling,koopman analysis
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