Energy Storage Science and Technology ›› 2024, Vol. 13 ›› Issue (3): 858-869.doi: 10.19799/j.cnki.2095-4239.2023.0658

• Energy Storage System and Engineering • Previous Articles     Next Articles

Adaptive control strategy for primary frequency regulation for new energy storage stations based on reinforcement learning

Ran SUN1(), Jianbo WANG1, Yanzhao MA2, Xiaoke ZHANG3, Huaizhong HU2()   

  1. 1.State Grid Henan Electric Power Company, Zhengzhou 450000, Henan, China
    2.School of Automation Science and Engineering, Xi'an 710100, Shaanxi, China
    3.Electric Power Research Institute of State Grid Henan Electric Power Company, Zhengzhou 450052, Henan, China
  • Received:2023-09-26 Revised:2023-11-23 Online:2024-03-28 Published:2024-03-28
  • Contact: Huaizhong HU E-mail:persiasun@126.com;huhuaizhong@xjtu.edu.cn

Abstract:

Based on traditional virtual inertia and virtual sag control methods, and considering the characteristics of new energy output, we propose a new energy storage adaptive control strategy for primary frequency regulation using a reinforcement learning algorithm. Herein, reinforcement learning agent dynamically adjusts the output proportion of the energy storage participating in primary frequency regulation through the virtual inertia control method, responding to real-time fluctuations in system frequency and frequency difference change rate. Subsequently, energy storage primary frequency regulation adaptive controller calculates the output proportion of the virtual sag control method, thereby obtaining the total primary frequency regulation output command for the energy storage. Considering the inherent randomness of active power output in new energy stations, reinforcement learning agent learns from the output disturbances, which are influenced by wind speed disturbances through the wind turbine model in the new energy station. The proposed control strategy maximizes the distinct advantages of virtual inertia and virtual sag control methods before and after frequency regulation. It achieves an optimal combination of the two control methods, unlocking the full potential of energy storage in participating in primary frequency regulation. To validate the effectiveness of the proposed strategy, we constructed a regional power grid frequency response model in Matlab/Simulink. This model simulated extreme working conditions and actual operational scenarios of the new energy station. The simulation results confirm that the strategy can appropriately adjust the proportion of virtual inertial output and virtual sagging output during the frequency modulation process. This adjustment reduces the operation depth of battery energy storage, effectively mitigates frequency fluctuation caused by variations in new energy output to the power grid, and enhances overall frequency quality.

Key words: battery energy storage, primary frequency regulation, new energy station, reinforcement learning, adaptive control

CLC Number: