State-Space Kolmogorov Arnold Networks for Interpretable Nonlinear System Identification

Cruz, Gonçalo Granjal, Renczes, Balazs, Runacres, Mark C, Decuyper, Jan

arXiv.org Artificial Intelligence 

-- While accurate, black-box system identification models lack interpretability of the underlying system dynamics. This paper proposes State-Space Kolmogorov-Arnold Networks (SS-KAN) to address this challenge by integrating Kolmogorov-Arnold Networks within a state-space framework. The proposed model is validated on two benchmark systems: the Silverbox and the Wiener-Hammerstein benchmarks. Results show that SS-KAN provides enhanced interpretability due to sparsity-promoting regularization and the direct visualization of its learned univariate functions, which reveal system nonlinearities at the cost of accuracy when compared to state-of-the-art black-box models, highlighting SS-KAN as a promising approach for interpretable nonlinear system identification, balancing accuracy and interpretability of nonlinear system dynamics. YSTEM identification, the process of building mathematical models from observed data, is a fundamental discipline in engineering and control. Accurate system models are useful for tasks ranging from controller design and performance optimization to fault detection and system analysis.

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