弹性输电系统中有意孤岛的强化学习

Sobhan Badakhshan, R. Jacob, Binghui Li, J. Zhang
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引用次数: 0

摘要

有意孤岛化是指识别和有意分解输电网络的过程,以便在中断期间从濒临灭绝的网络中形成自给自足的岛屿,以提高恢复力和安全性。大多数现有的有意孤岛模型都是离线弹性决策工具,因此不能及时提供中断响应。本文提出了一种基于强化学习(RL)的有意孤岛模型,该模型具有实时切换控制、在线部署能力和对不同系统条件的适应性。有意孤岛过程被表述为马尔可夫决策过程,其中使用RL方法学习最优传输交换策略。控制策略是在一个环境中学习的,该环境包含传输网络的电力系统工程模拟器(PSS/E)模型,由标准openAI Gym框架的接口促进。提出的基于rl的方法旨在通过确保电压稳定,同时减少形成的岛屿中的功率不匹配,形成稳定和自我可持续的岛屿。设计了一种适合于以多层感知器为值和行动者网络控制开关开关状态的近端策略优化算法。在改进的IEEE 39总线测试网络上应用了该框架,并通过动态仿真验证了该框架在海岛自恢复电网中的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reinforcement Learning for Intentional Islanding in Resilient Power Transmission Systems
Intentional islanding is the process of identifying and deliberately decomposing the transmission network to form self-sustained islands from an endangered network during disruptions to improve resilience and security. Most existing intentional islanding models are offline resilience decision tools and hence do not provide outage responses in a timely manner. In this paper, a reinforcement learning (RL) based model for intentional islanding is developed, which offers real-time switching control, online deployability, and adaptability to varying system conditions. The intentional islanding process is formulated as a Markov decision process, where the optimal transmission switching policy is learned using the RL approach. The control policy is learned over an environment that encompasses a Power System Simulator for Engineering (PSS/E) model of the transmission network, facilitated by an interface to the standard openAI Gym framework. The proposed RL-based methodology aims to form stable and self-sustainable islands by ensuring voltage stability while reducing the power mismatch in the formed islands. A proximal policy optimization algorithm is designed, which is suitable for controlling the on/off status of the switches with multi-layer perceptron as value and actor networks. The effectiveness of the proposed framework in the self-recovery of the grid by island formation is applied on the modified IEEE 39-bus test network and validated by dynamic simulations.
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