LGGTSYMay 7, 2022

Applications of Reinforcement Learning in Deregulated Power Market: A Comprehensive Review

arXiv:2205.08369v21 citationsh-index: 43
Originality Synthesis-oriented
AI Analysis

It provides a comprehensive overview for researchers and industry professionals in the power sector, but is incremental as a review paper.

This paper reviews over 150 studies on using reinforcement learning to optimize bidding and dispatching strategies in deregulated power markets, addressing challenges like uncertainty and computational efficiency.

The increasing penetration of renewable generations, along with the deregulation and marketization of power industry, promotes the transformation of power market operation paradigms. The optimal bidding strategy and dispatching methodology under these new paradigms are prioritized concerns for both market participants and power system operators, with obstacles of uncertain characteristics, computational efficiency, as well as requirements of hyperopic decision-making. To tackle these problems, the Reinforcement Learning (RL), as an emerging machine learning technique with advantages compared with conventional optimization tools, is playing an increasingly significant role in both academia and industry. This paper presents a comprehensive review of RL applications in deregulated power market operation including bidding and dispatching strategy optimization, based on more than 150 carefully selected literatures. For each application, apart from a paradigmatic summary of generalized methodology, in-depth discussions of applicability and obstacles while deploying RL techniques are also provided. Finally, some RL techniques that have great potentiality to be deployed in bidding and dispatching problems are recommended and discussed.

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