Home /Research /PolarNet: Single-Minima Neural Network for Modeling Lyapunov Functions
LEARNING

PolarNet: Single-Minima Neural Network for Modeling Lyapunov Functions

Yuan Zhong, Jiaxin Cheng, Hefu Ye, Yicong Zhou

Year
2026
Access
Open access

Abstract

Learning control strategies with provable stability guarantees continues to be a challenging problem. In this work, we examine a family of training-time behaviors exhibited by existing neural Lyapunov control methods under specific conditions, which can hinder the synthesis of a provably stable controller. We identify the root cause as the lack of neural network architectural guarantees on the learned Lyapunov function, and propose PolarNet, a network architecture that provably addresses these issues by structurally guarantee to have a single critical point. We provide theoretical guarantee regarding the properness and universality of PolarNet for modeling Lyapunov functions, and show that using it as a drop-in replacement in existing neural Lyapunov control methods can effectively circumvent particular difficulties in training. We conduct a set of numerical experiments to verify that PolarNet consistently maintains a single critical point and, when used as a drop-in replacement in existing neural Lyapunov control methods, successfully avoids training failures caused by the lack of architectural guarantees. The code of this paper is available at https://github.com/23-zy/PolarNet.

Keywords

eess.SY

Related papers

Browse all LEARNING papers