January 21, 2026
Journal Article

Risk-Constrained Reinforcement Learning for Inverter-Dominated Power System Controls

Abstract

Joint submission for IEEE Control System Letters/ American Control Conference. Abstract: This paper develops a risk-aware controller for grid-forming inverters (GFMs) to minimize large frequency oscillations in GFM inverter-dominated power systems. To tackle the high variability from loads/renewables, we incorporate a mean-variance risk constraint into the classical linear quadratic regulator (LQR) formulation for this problem. The risk con- straint aims to bound the time-averaged cost of state variability and thus can improve the worst-case performance for large disturbances. The resulting risk-constrained LQR problem is solved through the dual reformulation to a minimax problem, by using a reinforcement learning (RL) method termed as stochastic gradient-descent with max-oracle (SGDmax). In particular, the zero-order policy gradient (ZOPG) approach is used to simplify the gradient estimation using simulated system trajectories. Numerical tests conducted on the IEEE 68-bus system have validated the convergence of our proposed SGDmax for GFM model and corroborate the effectiveness of the risk constraint in improving the worst-case performance while reducing the variability of the overall control cost.

Published: January 21, 2026

Citation

Kwon K., S. Mukherjee, T. Vu, and H. Zhu. 2023. Risk-Constrained Reinforcement Learning for Inverter-Dominated Power System Controls. IEEE Control Systems Letters 7. PNNL-SA-190339. doi:10.1109/LCSYS.2023.3343948