Ergodic-Risk Constrained Policy Optimization: The Linear Quadratic Case
Abstract
Risk-sensitive control balances performance with resilience to unlikely events in uncertain systems. This paper introduces ergodic-risk criteria, which capture long-term cumulative risks through probabilistic limit theorems. By ensuring the dynamics exhibit strong ergodicity, we demonstrate that the time-correlated terms in these limiting criteria converge even with potentially heavy-tailed process noises as long as the noise has a finite fourth moment. Building upon this, we proposed the ergodic-risk constrained policy optimization which incorporates an ergodic-risk constraint to the classical Linear Quadratic Regulation (LQR) framework. We then propose a primal-dual policy optimization method that optimizes the average performance while satisfying the ergodic-risk constraints. Numerical results demonstrate that the new risk-constrained LQR not only optimizes average performance but also limits the asymptotic variance associated with the ergodic-risk criterion, making the closed-loop system more robust against sporadic large fluctuations in process noise.
Cite
@article{arxiv.2503.05878,
title = {Ergodic-Risk Constrained Policy Optimization: The Linear Quadratic Case},
author = {Shahriar Talebi and Na Li},
journal= {arXiv preprint arXiv:2503.05878},
year = {2025}
}
Comments
2025 American Control Conference (ACC)