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Cooperative Management for PV/ESS-Enabled Electric Vehicle Charging Stations: A Multiagent Deep Reinforcement Learning Approach

机译:支持PV / ESS的电动车辆充电站的合作管理:多源深度增强学习方法

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摘要

This article proposes a novel multiagent deep reinforcement learning method for the energy management of distributed electric vehicle charging stations with a solar photovoltaic system and energy storage system. In the literature, the conventional method is to calculate the optimal electric vehicle charging schedule in a centralized manner. However, in general, the centralized approach is not realistic under certain environments where the system operators for multiple electric vehicle charging stations handle dynamically varying data, such as the status of the energy storage system and electric vehicle-related information. Therefore, this article proposes a method that can compute the scheduling solutions of multiple electric vehicle charging stations in a distributed manner while handling run-time time-varying dynamic data. As shown in the data-intensive performance evaluation, it can be observed that the proposed method achieves a desirable performance in terms of reducing the operation costs of electric vehicle charging stations.
机译:本文提出了一种新的多层深加固学习方法,用于具有太阳能光伏系统和能量存储系统的分布式电动车充电站的能量管理。在文献中,传统方法是以集中方式计算最佳电动车辆充电时间表。然而,通常,在多个电动车辆充电站处理动态变化的数据的系统运营商处的某些环境下,集中式方法在诸如能量存储系统和电动车辆相关信息的状态下的系统运营商处不方意。因此,本文提出了一种方法,其可以以分布式方式计算多个电动车辆充电站的调度解决方案,同时处理运行时时变形动态数据。如数据密集型性能评估所示,可以观察到所提出的方法在降低电动车辆充电站的运行成本方面实现了所需的性能。

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