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Distributed reinforcement learning to coordinate current sharing and voltage restoration for islanded DC microgrid

机译:分布式强化学习以协调孤岛DC微电网的电流共享和电压恢复

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摘要

A novel distributed reinforcement learning (DRL) strategy is proposed in this study to coordinate current sharing and voltage restoration in an islanded DC microgrid. Firstly, a reward function considering both equal proportional current sharing and cooperative voltage restoration is defined for each local agent. The global reward of the whole DC microgrid which is the sum of the local rewards is regarged as the optimization objective for DRL. Secondly, by using the distributed consensus method, the predefined pinning consensus value that will maximize the global reward is obtained. An adaptive updating method is proposed to ensure stability of the above pinning consensus method under uncertain communication. Finally, the proposed DRL is implemented along with the synchronization seeking process of the pinning reward, to maximize the global reward and achieve an optimal solution for a DC microgrid. Simulation studies with a typical DC microgrid demonstrate that the proposed DRL is computationally efficient and able to provide an optimal solution even when the communication topology changes.
机译:在这项研究中提出了一种新颖的分布式强化学习(DRL)策略,以协调孤岛DC微电网中的电流共享和电压恢复。首先,为每个本地代理定义同时考虑相等比例电流共享和协作电压恢复的奖励函数。将整个DC微电网的全局奖励(即本地奖励的总和)作为DRL的优化目标。其次,通过使用分布式共识方法,可以获得将全局奖励最大化的预定义固定共识值。提出了一种自适应更新方法,以确保不确定通信条件下上述固定共识方法的稳定性。最后,提出的DRL与固定奖励的同步搜索过程一起实施,以最大化全局奖励并实现DC微电网的最佳解决方案。用典型的直流微电网进行的仿真研究表明,即使通信拓扑发生变化,所提出的DRL也具有计算效率,并且能够提供最佳解决方案。

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