Physics-Informed Machine Learning for Characterizing System Stability
Tomoki Koike, Elizabeth Qian

TL;DR
This paper introduces a physics-informed machine learning approach to infer Lyapunov functions from trajectory data, enabling stability region characterization for complex systems without explicit system models.
Contribution
It proposes LyapInf, a novel quadratic Lyapunov function inference method that uses trajectory data and the Zubov equation, bypassing the need for explicit system equations.
Findings
Successfully characterizes near-maximal ellipsoidal stability regions
Does not require explicit knowledge of system governing equations
Demonstrates effectiveness on benchmark examples
Abstract
In the design and operation of complex dynamical systems, it is essential to ensure that all state trajectories of the dynamical system converge to a desired equilibrium within a guaranteed stability region. Yet, for many practical systems -- especially in aerospace -- this region cannot be determined a priori and is often challenging to compute. One of the most common methods for computing the stability region is to identify a Lyapunov function. A Lyapunov function is a positive function whose time derivative along system trajectories is non-positive, which provides a sufficient condition for stability and characterizes an estimated stability region. However, existing methods of characterizing a stability region via a Lyapunov function often rely on explicit knowledge of the system governing equations. In this work, we present a new physics-informed machine learning method of…
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Taxonomy
TopicsModel Reduction and Neural Networks · Neural Networks and Reservoir Computing · Control and Stability of Dynamical Systems
