Real-time power system dispatch scheme using grid expert strategy-based imitation learning

Siyang Xu, Jiebei Zhu*, Bingsen Li, Lujie Yu, Xueke Zhu, Hongjie Jia, Chi Yung Chung, Campbell D. Booth, Vladimir Terzija

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

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Abstract

With large-scale grid integration of renewable energy sources (RES), power grid operations gradually exhibit the new characteristics of high-order uncertainty, leading to significant challenges for system operational security. Traditional model-driven generation dispatch methods require large computational resources, whereas the widely concerned Reinforcement Learning (RL)-based methods lead to issues such as slow training speed due to the high complexity and dimension of processed grid state information. For this reason, this paper proposes a novel Grid Expert Strategy Imitation Learning (GESIL)-based real-time (5 min intervals in this paper) dispatch method. Firstly, a grid model is established based on the graph theory. Secondly, a pure rule-based grid expert strategy (GES) considering detailed power grid operations is proposed. Then, the GES is combined with the established model to obtain a GESIL agent using imitation learning by offline–online training, which can produce specific grid dispatch decisions for real-time. By designing a graph theory-based grid model, a model-driven purely rule-based GES, and embedding a penalty factor-based loss function into IL offline–online training, GESIL ultimately achieves high training speed, high solution speed, and strong generalization capability. A modified IEEE 118-node system is employed to compare the proposed GESIL to traditional dispatch method and RL method. Results show that GESIL has significantly improved computational efficiency by approximately 17 times and training speed by 14.5 times. GESIL can more stably and efficiently compute real-time dispatch decisions of grid operations, enhancing the optimization effect in terms of transmission overloading mitigation, transmission loading optimization, and power balancing control.
Original languageEnglish
Article number110148
JournalInternational Journal of Electrical Power & Energy Systems
Volume161
Early online date29 Jul 2024
DOIs
Publication statusE-pub ahead of print - 29 Jul 2024

Keywords

  • Real-time dispatch
  • Imitation learning
  • Grid export strategy
  • N-1 security operation
  • Reinforcement learning

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