Learning Neural Controllers with Optimality and Stability Guarantees Using Input-Output Dissipativity
Abstract
Deep learning methods have demonstrated significant potential for addressing complex nonlinear control problems. For real-world safety-critical tasks, however, it is crucial to provide formal stability guarantees for the designed controllers. In this paper, we propose a new framework for designing neural controllers that achieve both stability and optimality with respect to certain functions. Our key idea is to exploit the concept of input-output dissipativity of nonlinear systems by learning neural storage functions and supply rate functions. As a generalization of Lyapunov theory, dissipativity theory provides a natural connection to optimal control theory, offering both stability guarantees and meaningful optimality certificates. The neural controllers can be directly derived from the learned supply rate functions and guarantee closed-loop stability while inheriting optimality properties that can be shaped towards user-defined control objectives. Extensive numerical experiments demonstrate the effectiveness of our approach.
Cite
@article{arxiv.2506.06564,
title = {Learning Neural Controllers with Optimality and Stability Guarantees Using Input-Output Dissipativity},
author = {Han Wang and Keyan Miao and Diego Madeira and Antonis Papachristodoulou},
journal= {arXiv preprint arXiv:2506.06564},
year = {2025}
}
Comments
submitted to Automatica