Data-driven model discovery with Kolmogorov-Arnold networks

Moradi, Mohammadamin, Panahi, Shirin, Bollt, Erik M., Lai, Ying-Cheng

arXiv.org Artificial Intelligence 

Department of Physics, Arizona State University, Tempe, Arizona 85287, USA (Dated: September 24, 2024) Data-driven model discovery of complex dynamical systems is typically done using sparse optimization, but it has a fundamental limitation: sparsity in that the underlying governing equations of the system contain only a small number of elementary mathematical terms. Examples where sparse optimization fails abound, such as the classic Ikeda or optical-cavity map in nonlinear dynamics and a large variety of ecosystems. Exploiting the recently articulated Kolmogorov-Arnold networks, we develop a general model-discovery framework for any dynamical systems including those that do not satisfy the sparsity condition. In particular, we demonstrate non-uniqueness in that a large number of approximate models of the system can be found which generate the same invariant set with the correct statistics such as the Lyapunov exponents and Kullback-Leibler divergence. An analogy to shadowing of numerical trajectories in chaotic systems is pointed out.

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