A Multi-objective Optimization Planning Framework for Active Distribution System Via Reinforcement Learning

Hongtao Li, Cunping Wang, Hao Tian, Zhigang Ren, Ergang Zhao, Lina Xu
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引用次数: 0

Abstract

The effective planning of active distribution networks is crucial for utility companies to make informed decisions regarding investments in distributed generation, reliability assessment, reactive power planning, substation revisions, and feeder repositioning. However, the dynamic nature of the solution space makes it challenging for model-based optimization methods to ensure computational performance in active distribution network planning. To address this issue, this study proposes a planning method that focuses on improving computational performance through the continuous updating of the planning model’s solution space during the reinforcement learning training process. Based on simulations conducted on the IEEE 33-bus test system, the proposed planning strategy successfully enhances computational performance while minimizing investment costs compared to other strategies. With the proposed method, the investment cost and the operation cost are reduced by 32.42% and 23.91%, respectively.
基于强化学习的主动配电系统多目标优化规划框架
有效的配电网规划对于电力公司在分布式发电、可靠性评估、无功电力规划、变电站修订和馈线重新定位方面做出明智的投资决策至关重要。然而,由于解空间的动态性,使得基于模型的优化方法难以保证主动配电网规划的计算性能。为了解决这一问题,本研究提出了一种规划方法,其重点是在强化学习训练过程中通过不断更新规划模型的解空间来提高计算性能。通过对IEEE 33总线测试系统的仿真,与其他策略相比,所提出的规划策略成功地提高了计算性能,同时最小化了投资成本。采用该方法,投资成本和运行成本分别降低32.42%和23.91%。
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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