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Optimal Control Strategy for Plug-in Electric Vehicles Based on Reinforcement Learning in Distribution Networks

机译:配网中基于强化学习的插电式电动汽车最优控制策略

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Electric vehicles (EVs) as distributed storage devices have the potential to provide frequency regulation services due to the fast adjustment of charging/discharging power. Along with the policy incentives, it is practical for EVs to take part in the regulation market through the aggregator. An optimal control strategy based on reinforcement learning (RL) for electric vehicles (EVs) in distributed networks is proposed in this paper. The overall goal is to follow the regulation signals sent by the system operator in the real time regulation market by controlling the EVs in the parking lot. To achieve this, the reinforcement learning algorithm is employed to optimize the charge and discharge strategy of the EVs, so that the aggregator optimally allocates the regulation power and the baseline charging power to EVs to respond to the regulation signals for the best regulation performance. Comprehensive simulation studies have been carried out based on the data of PJM electricity market and the results show that the regulation performance based on the control strategy is excellent in both cases of traditional and dynamic regulation signals.
机译:由于充电/放电功率的快速调整,作为分布式存储设备的电动汽车(EV)有潜力提供频率调节服务。除了政策激励措施外,电动汽车还可以通过整合商参与监管市场。提出了一种基于强化学习(RL)的分布式网络电动汽车最优控制策略。总体目标是通过控制停车场中的电动汽车来遵循系统运营商在实时监管市场中发送的监管信号。为达到此目的,采用强化学习算法来优化电动汽车的充电和放电策略,以使聚合器将调节功率和基准充电功率最佳地分配给电动汽车,以响应调节信号以获得最佳调节性能。根据PJM电力市场的数据进行了全面的仿真研究,结果表明,基于控制策略的调节性能在传统调节信号和动态调节信号两种情况下均表现出色。

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