Temporal-Aware Deep Reinforcement Learning for Energy Storage Bidding in Energy and Contingency Reserve Markets

Jinhao Li;Changlong Wang;Yanru Zhang;Hao Wang
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Abstract

The battery energy storage system (BESS) has immense potential for enhancing grid reliability and security through its participation in the electricity market. BESS often seeks various revenue streams by taking part in multiple markets to unlock its full potential, but effective algorithms for joint-market participation under price uncertainties are insufficiently explored in the existing research. To bridge this gap, we develop a novel BESS joint bidding strategy that utilizes deep reinforcement learning (DRL) to bid in the spot and contingency frequency control ancillary services (FCAS) markets. Our approach leverages a transformer-based temporal feature extractor to effectively respond to price fluctuations in seven markets simultaneously and helps DRL learn the best BESS bidding strategy in joint-market participation. Additionally, unlike conventional “black-box” DRL model, our approach is more interpretable and provides valuable insights into the temporal bidding behavior of BESS in the dynamic electricity market. We validate our method using realistic market prices from the Australian National Electricity Market. The results show that our strategy outperforms benchmarks, including both optimization-based and other DRL-based strategies, by substantial margins. Our findings further suggest that effective temporal-aware bidding can significantly increase profits in the spot and contingency FCAS markets compared to individual market participation.
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面向能源和应急储备市场储能竞价的时间感知深度强化学习
电池储能系统(BESS)在通过参与电力市场提高电网可靠性和安全性方面潜力巨大。BESS 通常通过参与多个市场来寻求各种收入流,以充分释放其潜力,但现有研究对价格不确定情况下联合参与市场的有效算法探索不足。为了弥补这一不足,我们开发了一种新颖的 BESS 联合投标策略,利用深度强化学习(DRL)在现货市场和应急频率控制辅助服务(FCAS)市场进行投标。我们的方法利用基于变压器的时间特征提取器来同时有效应对七个市场的价格波动,并帮助 DRL 学习联合市场参与中的最佳 BESS 投标策略。此外,与传统的 "黑箱 "DRL 模型不同,我们的方法更具可解释性,可为动态电力市场中 BESS 的时间竞价行为提供有价值的见解。我们使用澳大利亚国家电力市场的实际市场价格验证了我们的方法。结果表明,我们的策略大大优于基准策略,包括基于优化的策略和其他基于 DRL 的策略。我们的研究结果进一步表明,与单独参与市场相比,有效的时间感知投标可以显著提高现货和应急 FCAS 市场的利润。
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2024 Index IEEE Transactions on Energy Markets, Policy and Regulation Vol. 2 Table of Contents IEEE Power & Energy Society Information IEEE Transactions on Energy Markets, Policy, and Regulation Information for Authors Blank Page
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