{Group Convolutional Extended Dynamic Mode Decomposition}

This paper explores the integration of symmetries into the Koopman-operator framework for the analysis and efficient learning of equivariant dynamical systems using a group-convolutional approach. Approximating the Koopman operator by finite-dimensional surrogates, e.g., via extended dynamic mode decomposition (EDMD), is challenging for high-dimensional systems due to computational constraints. To tackle this problem with a particular focus on EDMD, we demonstrate — under suitable equivarance assumptions on the system and the observables — that the optimal EDMD matrix is equivariant. That is, its action on states can be described by group convolutions and the generalized Fourier transform. We show that this structural property has many advantages for equivariant systems, in particular, that it allows for data-efficient learning, fast predictions and fast eigenfunction approximations. We conduct numerical experiments on the Kuramoto–Sivashinsky equation, a nonlinear and chaotic partial differential equation, providing evidence of the effectiveness of this approach, and highlighting its potential for broader applications in dynamical systems analysis.

  • Published in:
    arXiv
  • Type:
    Article
  • Authors:
    Harder, Hans; Peitz, Sebastian; Nüske, Feliks; Philipp, Friedrich M.; Schaller, Manuel; Worthmann, Karl
  • Year:
    2024

Citation information

Harder, Hans; Peitz, Sebastian; Nüske, Feliks; Philipp, Friedrich M.; Schaller, Manuel; Worthmann, Karl: {Group Convolutional Extended Dynamic Mode Decomposition}, arXiv, 2024, https://arxiv.org/abs/2411.00905, Harder.etal.2024a,

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Photo. Potrait of Sebastian Peitz.

Prof. Dr. Sebastian Peitz

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