强化学习
智能电网
计算机科学
可扩展性
电动汽车
网格
增强学习
汽车工程
电池(电)
模拟
功率(物理)
人工智能
工程类
电气工程
量子力学
数据库
数学
物理
几何学
作者
S.J. Sultanuddin,R. Vibin,Alok Kumar,Nihar Ranjan Behera,M. Jahir Pasha,K. K. Baseer
标识
DOI:10.1016/j.est.2023.106987
摘要
Due to its environmental and energy sustainability, electric vehicles (EV) have emerged as the preferred option in the current transportation system. Uncontrolled EV charging, however, can raise consumers; charging costs and overwhelm the grid. Smart charging coordination systems are required to prevent the grid overload caused by charging too many electric vehicles at once. In light of the baseload that is present in the power grid, this research suggests an improved reinforcement learning charging management system. An optimization method, however, requires some knowledge in advance, such as the time the vehicle departs and how much energy it will need when it arrives at the charging station. Therefore, under realistic operating conditions, our improved Reinforcement Learning method with Double Deep Q-learning approach provides an adjustable, scalable, and flexible strategy for an electric car fleet. Our proposed approach provides fair value which solves the overestimation action value problem in deep Q-learning. Then, a number of different charging strategies are compared to the Reinforcement Learning algorithm. The proposed Reinforcement Learning technique minimizes the variance of the overall load by 68 % when compared to an uncontrolled charging strategy.
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