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Power Flow Management in Electric Vehicles Charging Station Using Reinforcement Learning

机译:基于强化学习的电动汽车充电站潮流管理

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This paper investigates optimal power flow management problem in an electric vehicle charging station. The charging station is powered by solar PV and is tied to the grid and a battery storage system through necessary power conversion interfaces for DC fast charging. The optimal power management problem for EV charging is solved via reinforcement learning (RL). Unlike classical optimization methods such as dynamic programming, linear programming (LP) and mixed-integer linear programming which are limited in handling stochastic problems adequately and are slow due to the curse of dimensionality when used for large dynamic problems, RL does not have to iterate for every time step as learning can be done completely offline and optimal solutions saved in a lookup table, from which optimal control actions can be retrieved almost instantaneously. The optimization problem in this paper is defined as a Markov Decision Process (MDP) and a modified Q-learning algorithm that indexes both states and control actions in a hash-table (dictionary) fashion is used to solve it. The algorithm is tested with a typical load curve over a 24-hour horizon. The simulations results demonstrate that the modified Q-learning algorithm achieves higher total rewards and returns a 14% lower global cost than the conventional Q-learning formulation.
机译:本文研究了电动汽车充电站的最优潮流管理问题。充电站由太阳能PV供电,并通过必要的电源转换接口连接到电网和电池存储系统,以进行DC快速充电。 EV学习的最佳电源管理问题是通过强化学习(RL)解决的。不同于动态规划,线性规划(LP)和混合整数线性规划等经典优化方法,它们在适当处理随机问题方面受到限制,并且在用于大型动态问题时由于维数的诅咒而缓慢,因此RL不必进行迭代对于每个时间步,学习都可以完全脱机进行,并且最佳解决方案保存在查找表中,几乎可以从中立即检索最佳控制动作。本文中的优化问题被定义为马尔可夫决策过程(MDP),并且使用一种改进的Q学习算法(以哈希表(字典)方式对状态和控制动作进行索引)来解决该问题。使用24小时范围内的典型负载曲线对算法进行了测试。仿真结果表明,与传统的Q学习公式相比,改进的Q学习算法获得了更高的总奖励,并降低了14%的全球成本。

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