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Online reconfiguration scheme of self-sufficient distribution network based on a reinforcement learning approach

机译:基于强化学习方法的自充其充分分配网络在线重新配置方案

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With increasing number of distributed renewable energy sources integrated in power distribution networks, network security issues such as line overloading or bus voltage violations are becoming increasingly common. Traditional capital-intensive system reinforcements could lead to overinvestment. Moreover, active network management solutions, which have emerged as important alternatives, may become a financial burden for distribution system operators or reduce profits for owners of distributed renewable energy sources, or both. To address these limitations, this paper proposes an online network reconfiguration scheme based on a deep reinforcement learning approach. In this scheme, the distribution network operator modifies the network topology to change the power flow when the reliability of network is threatened. Because the variability of distributed renewable energy is large in self-sufficient distribution networks, the reconfiguration process needs to be performed online within short time intervals, which involves the use of conventional algorithms. To solve this problem efficiently, a deep q-learning model is utilized to determine the optimal network topology. Performances of proposed and other algorithms were compared in modified CIGRE 14-bus and IEEE 123-bus test network, as well as varying penalties for frequent switching operation in consideration of physical characteristic of the network. Simulation results demonstrated that the proposed algorithm showed almost identical performances with brute-force search algorithm in both test networks, satisfying network constraints over almost all timespans. Further, the proposed method required very small computation times - under a second per each state and its scalability was verified by comparing the computation time between two test networks.
机译:随着在配电网络中集成的分布式可再生能源的数量越来越多,线路过载或总线电压违规等网络安全问题变得越来越普遍。传统的资本密集型系统增强率可能导致过度投资。此外,作为重要替代品出现的主动网络管理解决方案可能成为分销系统运营商的财务负担,或者减少分布式可再生能源业主的利润,或减少分布式可再生能源的业主。为了解决这些限制,本文提出了一种基于深度加强学习方法的在线网络重新配置方案。在该方案中,当网络的可靠性受到威胁时,分发网络运营商修改网络拓扑以改变电力流量。由于分布式可再生能量的可变性在自充足的分配网络中很大,所以需要在短时间内进行重新配置过程,这涉及使用传统算法。为了有效地解决这个问题,利用深度Q学习模型来确定最佳网络拓扑。在修改CIGRE 14总线和IEEE 123总线测试网络中比较了所提出的算法和其他算法的性能,以及考虑到网络物理特性的频繁切换操作的变化处罚。仿真结果表明,所提出的算法在两个测试网络中具有蛮力搜索算法几乎相同的性能,满足几乎所有Timespans的网络约束。此外,所提出的方法需要非常小的计算时间 - 在每个状态下,通过比较两个测试网络之间的计算时间来验证其可伸缩性。

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