In this work we propose a novel data-driven, real-time power system voltage stability control method based on the physics-informed guided meta evolutionary strategy (ES). The main objective is to quickly provide an adaptive control strategy to secure system voltage stability. The problem is challenging due to the high-dimensional feature of the power system model and the fast-changing and uncertain nature of power system operation scenarios. To this end, a model-free and derivative-free guided ES method is applied. The method is further combined with a meta-learning strategy to make the learnt control policy automatically adapted to unseen operation conditions and fault scenarios, which is highly desired for real-time emergency control. Last but not least, physical knowledge is embedded in the above method through a trainable action mask technique to rule out unnecessary load shedding actions for better learning and control performance. Case studies on the IEEE 300-bus system and comparisons with other state-of-the-art benchmark methods verify the superiority of the proposed physics-informed guided meta ES method in realizing fast and adaptive power system voltage stability control.
Published: October 6, 2022
Citation
Du Y., Q. Huang, R. Huang, T. Yin, J. Tan, W. Yu, and X. Li. 2022.Physics-Informed Evolutionary Strategy Based Control for Mitigating Delayed Voltage Recovery.IEEE Transactions on Smart Grid 37, no. 5:3516-3527.PNNL-SA-159691.doi:10.1109/TPWRS.2021.3132328