Control-Oriented System Identification: Classical, Learning, and Physics-Informed Approaches
S. Sivaranjani, Yuanyuan Shi, Nikolay Atanasov, Thai Duong, Jie Feng, Tim Martin, Yuezhu Xu, Vijay Gupta, Frank Allg\"ower

TL;DR
This paper surveys various approaches to system identification, emphasizing the integration of control-relevant and physics-informed properties to improve model interpretability, guarantees, and sample efficiency in control applications.
Contribution
It introduces a unified optimization framework for incorporating control-relevant properties into system identification and reviews classical, machine learning, and data-driven methods with practical examples.
Findings
Machine learning enables identification from complex data.
Enforcing control properties improves model guarantees.
Survey includes classical, ML, and data-driven methods.
Abstract
We survey classical, machine learning, and data-driven system identification approaches to learn control-relevant and physics-informed models of dynamical systems. Recently, machine learning approaches have enabled system identification from noisy, high-dimensional, and complex data. However, their utility is limited by their ability to provide provable guarantees on control-relevant properties. Meanwhile, control theory has identified several properties that are useful in analysis and control synthesis, such as dissipativity, monotonicity, energy conservation, and symmetry-preserving structures. We posit that merging system identification with such control-relevant or physics-informed properties can provide useful inductive bias, enhance explainability, enable control synthesis with provable guarantees, and improve sample complexity. We formulate system identification as an…
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Taxonomy
TopicsModel Reduction and Neural Networks · Control Systems and Identification · Neural Networks and Reservoir Computing
