English

Safe Physics-Informed Machine Learning for Dynamics and Control

Systems and Control 2025-06-16 v2 Systems and Control

Abstract

This tutorial paper focuses on safe physics-informed machine learning in the context of dynamics and control, providing a comprehensive overview of how to integrate physical models and safety guarantees. As machine learning techniques enhance the modeling and control of complex dynamical systems, ensuring safety and stability remains a critical challenge, especially in safety-critical applications like autonomous vehicles, robotics, medical decision-making, and energy systems. We explore various approaches for embedding and ensuring safety constraints, including structural priors, Lyapunov and Control Barrier Functions, predictive control, projections, and robust optimization techniques. Additionally, we delve into methods for uncertainty quantification and safety verification, including reachability analysis and neural network verification tools, which help validate that control policies remain within safe operating bounds even in uncertain environments. The paper includes illustrative examples demonstrating the implementation aspects of safe learning frameworks that combine the strengths of data-driven approaches with the rigor of physical principles, offering a path toward the safe control of complex dynamical systems.

Keywords

Cite

@article{arxiv.2504.12952,
  title  = {Safe Physics-Informed Machine Learning for Dynamics and Control},
  author = {Jan Drgona and Truong X. Nghiem and Thomas Beckers and Mahyar Fazlyab and Enrique Mallada and Colin Jones and Draguna Vrabie and Steven L. Brunton and Rolf Findeisen},
  journal= {arXiv preprint arXiv:2504.12952},
  year   = {2025}
}
R2 v1 2026-06-28T23:02:04.639Z