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AI-Based Autonomous Line Flow Control via Topology Adjustment for Maximizing Time-Series ATCs

机译:基于AI的自主线流量控制通过拓扑调整,用于最大化时间序列ATCS

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This paper presents a novel AI-based approach for maximizing time-series available transfer capabilities (ATCs) via autonomous topology control considering various practical constraints and uncertainties. Several AI techniques including supervised learning and deep reinforcement learning (DRL) are adopted and improved to train effective AI agents for achieving the desired performance. First, imitation learning (IL) is used to provide a good initial policy for the AI agent. Then, the agent is trained by DRL algorithms with a novel guided exploration technique, which significantly improves the training efficiency. Finally, an Early Warning (EW) mechanism is designed to help the agent find good topology control strategies for long testing periods, which helps the agent to determine action timing using power system domain knowledge; thus, effectively increases the system error-tolerance and robustness. Effectiveness of the proposed approach is demonstrated in the “2019 Learn to Run a Power Network (L2RPN)” Global Competition, where the developed AI agents can continuously and safely control a power grid to maximize ATCs without operator’s intervention for up to 1-month’s operation data and eventually won the first place in both development and final phases of the competition. The winning agent has been open-sourced on GitHub.
机译:本文介绍了一种基于基于AI的基于AI的方法,可通过考虑各种实际限制和不确定性来通过自主拓扑控制来最大化时间序列可用传输能力(ATC)。采用若干AI技术,包括监督学习和深度增强学习(DRL),并改善培训有效的AI代理,以实现所需的性能。首先,模仿学习(IL)用于为AI代理提供良好的初始策略。然后,该代理由DRL算法培训,具有一种新颖的引导探索技术,这显着提高了培训效率。最后,预警(EW)机制旨在帮助代理找到良好的拓扑控制策略,用于长期测试期,帮助代理使用电力系统域知识来确定动作时机;因此,有效地增加了系统误差和鲁棒性。 “2019年学习运行电力网络(L2RPN)”全球竞争中展示了拟议方法的有效性,其中开发的AI代理可以连续,安全地控制电网,以最大化ATC,没有运算符的干预达到1个月的操作数据并最终赢得了竞争的发展和最终阶段的第一名。获奖代理人在GitHub上开放。

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