Energy optimization management of microgrid using improved soft actor-critic algorithm

Zhiwen Yu, Wenjie Zheng, Kaiwen Zeng, Ruifeng Zhao, Yanxu Zhang, Mengdi Zeng
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Abstract

To tackle the challenges associated with variability and uncertainty in distributed power generation, as well as the complexities of solving high-dimensional energy management mathematical models in mi-crogrid energy optimization, a microgrid energy optimization management method is proposed based on an improved soft actor-critic algorithm. In the proposed method, the improved soft actor-critic algorithm employs an entropy-based objective function to encourage target exploration without assigning signifi-cantly higher probabilities to any part of the action space, which can simplify the analysis process of distributed power generation variability and uncertainty while effectively mitigating the convergence fragility issues in solving the high-dimensional mathematical model of microgrid energy management. The effectiveness of the proposed method is validated through a case study analysis of microgrid energy op-timization management. The results revealed an increase of 51.20%, 52.38%, 13.43%, 16.50%, 58.26%, and 36.33% in the total profits of a microgrid compared with the Deep Q-network algorithm, the state-action-reward-state-action algorithm, the proximal policy optimization algorithm, the ant-colony based algorithm, a microgrid energy optimization management strategy based on the genetic algorithm and the fuzzy inference system, and the theoretical retailer stragety, respectively. Additionally, com-pared with other methods and strategies, the proposed method can learn more optimal microgrid energy management behaviors and anticipate fluctuations in electricity prices and demand.
使用改进的软行为批评算法进行微电网能源优化管理
针对分布式发电的多变性和不确定性带来的挑战,以及微电网能源优化中高维能源管理数学模型求解的复杂性,提出了一种基于改进软行为批判算法的微电网能源优化管理方法。在所提出的方法中,改进的软行为批判算法采用了基于熵的目标函数,鼓励目标探索,而不对行动空间的任何部分赋予显著较高的概率,这可以简化分布式发电变异性和不确定性的分析过程,同时有效缓解微电网能源管理高维数学模型求解过程中的收敛脆弱性问题。通过对微电网能源优化管理的案例分析,验证了所提方法的有效性。结果表明,与深度 Q 网络算法、状态-行动-奖励-状态-行动算法、近端策略优化算法、基于蚁群的算法、基于遗传算法和模糊推理系统的微电网能源优化管理策略以及理论零售商策略相比,微电网的总利润分别增加了 51.20%、52.38%、13.43%、16.50%、58.26% 和 36.33%。此外,与其他方法和策略相比,所提出的方法可以学习到更多最优微电网能源管理行为,并预测电价和需求的波动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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