首页> 外文会议>Hellenic Conference on AI(Artificial Intellignece)(SENTN 2004); 20040505-20040508; Samos; GR >Reinforcement Learning (RL) to Optimal Reconfiguration of Radial Distribution System (RDS)
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Reinforcement Learning (RL) to Optimal Reconfiguration of Radial Distribution System (RDS)

机译:强化学习(RL)以优化径向分配系统(RDS)的配置

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This paper presents a Reinforcement Learning (RL) method for optimal reconfiguration of radial distribution system (RDS). Optimal reconfiguration involves selection of the best set of branches to be opened, one from each loop, such that the resulting RDS has the desired performance. Among the several performance criteria considered for optimal network reconfiguration, an important one is real power losses minimization, while satisfying voltage limits. The RL method formulates the reconfiguration of RDS as a multistage decision problem. More specifically, the model-free learning algorithm (Q-learning) learns by experience how to adjust a closed-loop control rule mapping operating states to control actions by means of reward values. Rewards are chosen to express how well control actions cause minimization of power losses. The Q-leaming algorithm is applied to the reconfiguration of 33-bus RDS busbar system. The results are compared with those given by other evolutionary programming methods.
机译:本文提出了一种用于径向分配系统(RDS)最佳重构的强化学习(RL)方法。最佳的重新配置涉及从每个循环中选择要打开的最佳分支集,以使最终的RDS具有所需的性能。在考虑优化网络重新配置的几种性能标准中,一个重要的标准是在满足电压限制的同时将实际功耗降至最低。 RL方法将RDS的重新配置公式化为一个多阶段决策问题。更具体地说,无模型学习算法(Q-learning)通过经验学习如何调整闭环控制规则映射操作状态以通过奖励值来控制动作。选择奖励来表示良好的控制动作如何使功率损耗最小化。 Q学习算法应用于33总线RDS母线系统的重新配置。将结果与其他进化编程方法给出的结果进行比较。

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