4.7 Article

Reinforcement Learning for Selective Key Applications in Power Systems: Recent Advances and Future Challenges

期刊

IEEE TRANSACTIONS ON SMART GRID
卷 13, 期 4, 页码 2935-2958

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TSG.2022.3154718

关键词

Mathematical models; Power systems; Reinforcement learning; Power system dynamics; Decision making; Markov processes; Heuristic algorithms; Frequency regulation; voltage control; energy management; reinforcement learning; smart grid

资金

  1. NSF CAREER [ECCS-1553407]
  2. NSF AI Institute [2112085]
  3. NSF [ECCS-1931662, AitF1637598, CNS-1518941]
  4. Cyber-Physical Systems (CPS) [ECCS-1932611]
  5. Resnick Sustainability Institute
  6. PIMCO Fellowship
  7. Amazon AI4Science Fellowship
  8. Caltech Center for Autonomous Systems and Technologies (CAST)

向作者/读者索取更多资源

This paper provides a comprehensive review of the application of reinforcement learning techniques in decision-making and control in power systems. It presents RL-based models and solutions in key application areas such as frequency regulation, voltage control, and energy management, and discusses critical issues and potential future directions in the application of RL.
With large-scale integration of renewable generation and distributed energy resources, modern power systems are confronted with new operational challenges, such as growing complexity, increasing uncertainty, and aggravating volatility. Meanwhile, more and more data are becoming available owing to the widespread deployment of smart meters, smart sensors, and upgraded communication networks. As a result, data-driven control techniques, especially reinforcement learning (RL), have attracted surging attention in recent years. This paper provides a comprehensive review of various RL techniques and how they can be applied to decision-making and control in power systems. In particular, we select three key applications, i.e., frequency regulation, voltage control, and energy management, as examples to illustrate RL-based models and solutions. We then present the critical issues in the application of RL, i.e., safety, robustness, scalability, and data. Several potential future directions are discussed as well.

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