October 13, 2023
Conference Paper

Physics-Informed Machine Learning for Modeling and Control of Dynamical Systems

Abstract

Physics-informed machine learning (PIML) is a set of methods and tools that systematically integrate machine learning (ML) algorithms with physical constraints and abstract mathematical models developed in scientific and engineering domains. As opposed to purely data-driven methods, {PIML} models can be trained from additional information obtained by enforcing physical laws such as energy and mass conservation. More broadly, {PIML} models can include abstract properties and conditions such as stability, convexity, or invariance. The basic premise of {PIML} is that the integration of ML and physics can yield more effective, physically consistent, and data-efficient models. This paper aims to provide a tutorial-like overview of the recent advances in {PIML} for dynamical system modeling and control. Specifically, the paper covers an overview of the theory, fundamental concepts and methods, tools, and applications on topics of: 1) physics-informed learning for system identification; 2) physics-informed learning for control; 3) analysis and verification of {PIML} models; and 4) physics-informed digital twins. The paper is concluded with a perspective on open challenges and future research opportunities.

Published: October 13, 2023

Citation

Nghiem T., J. Drgona, C. Jones, Z. Nagy, R. Schwan, B. Dey, and A. Chakrabarty, et al. 2023. Physics-Informed Machine Learning for Modeling and Control of Dynamical Systems. In American Control Conference (ACC 2023), May 31-June 2, 2023, San Diego, CA, 3735-3750. Piscataway, New Jersey:IEEE. PNNL-SA-183234. doi:10.23919/ACC55779.2023.10155901