Likelihood-based generalization of Markov parameter estimation and multiple shooting objectives in system identification

arXiv:2212.13902v21 citationsh-index: 17
Originality Incremental advance
AI Analysis

This addresses the problem of robust model learning in control and engineering for scenarios with limited or noisy data, though it is incremental as it builds on prior methods.

The paper tackles system identification from noisy and sparse data by proposing a Bayesian-derived objective function, showing it generalizes existing methods and achieves over 8.7 times lower mean squared error than multiple shooting in simulations.

This paper considers the problem of system identification (ID) of linear and nonlinear non-autonomous systems from noisy and sparse data. We propose and analyze an objective function derived from a Bayesian formulation for learning a hidden Markov model with stochastic dynamics. We then analyze this objective function in the context of several state-of-the-art approaches for both linear and nonlinear system ID. In the former, we analyze least squares approaches for Markov parameter estimation, and in the latter, we analyze the multiple shooting approach. We demonstrate the limitations of the optimization problems posed by these existing methods by showing that they can be seen as special cases of the proposed optimization objective under certain simplifying assumptions: conditional independence of data and zero model error. Furthermore, we observe that our proposed approach has improved smoothness and inherent regularization that make it well-suited for system ID and provide mathematical explanations for these characteristics' origins. Finally, numerical simulations demonstrate a mean squared error over 8.7 times lower compared to multiple shooting when data are noisy and/or sparse. Moreover, the proposed approach can identify accurate and generalizable models even when there are more parameters than data or when the underlying system exhibits chaotic behavior.

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