English

Regularization for Covariance Parameterization of Direct Data-Driven LQR Control

Systems and Control 2025-03-06 v1 Systems and Control Optimization and Control

Abstract

As the benchmark of data-driven control methods, the linear quadratic regulator (LQR) problem has gained significant attention. A growing trend is direct LQR design, which finds the optimal LQR gain directly from raw data and bypassing system identification. To achieve this, our previous work develops a direct LQR formulation parameterized by sample covariance. In this paper, we propose a regularization method for the covariance-parameterized LQR. We show that the regularizer accounts for the uncertainty in both the steady-state covariance matrix corresponding to closed-loop stability, and the LQR cost function corresponding to averaged control performance. With a positive or negative coefficient, the regularizer can be interpreted as promoting either exploitation or exploration, which are well-known trade-offs in reinforcement learning. In simulations, we observe that our covariance-parameterized LQR with regularization can significantly outperform the certainty-equivalence LQR in terms of both the optimality gap and the robust closed-loop stability.

Keywords

Cite

@article{arxiv.2503.02985,
  title  = {Regularization for Covariance Parameterization of Direct Data-Driven LQR Control},
  author = {Feiran Zhao and Alessandro Chiuso and Florian Dörfler},
  journal= {arXiv preprint arXiv:2503.02985},
  year   = {2025}
}

Comments

Submitted to C-LSS and CDC

R2 v1 2026-06-28T22:07:03.173Z