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Reinforcement Learning for Smart Charging of Electric Buses in Smart Grid

机译:智能电网中电动公交的智能充电强化学习

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In recent years, the environmental issues caused by using conventional energy resources, such as gasoline and diesel, become more and more serious. One promising solution to these issues is the electrification of public transit by replacing the internal combustion engine buses with electric buses (EBs). However, due to the degradation of EB batteries, the optimization of EB charging schedules during operating time is still challenging for the public transit service providers. This challenge is further complicated by the randomnesses of traffic and road conditions. In this paper, the problem of optimizing EB charging schedules is formulated as a Markov decision process, based on the battery degradation model of EBs and the information available via vehicular communication networks in smart grid. A double Q-leaning algorithm is used to optimize the charging schedules by minimizing the battery degradation cost of EBs. The performance of the proposed algorithm is evaluated by comparing with existing algorithms based on the real data of EB mobility and energy consumption collected from St. Albert Transit, AB, Canada.
机译:近年来,由使用常规能源例如汽油和柴油引起的环境问题变得越来越严重。解决这些问题的一种有希望的解决方案是通过用电动巴士(EB)代替内燃机巴士来实现公共交通的电动化。但是,由于EB电池的性能下降,对于公交服务提供商而言,在运行时间内优化EB充电时间表仍然是一项挑战。交通和道路条件的随机性使这一挑战更加复杂。在本文中,基于EB的电池退化模型和可通过智能电网中的车辆通信网络获得的信息,将优化EB充电时间表的问题表述为Markov决策过程。通过使EB的电池降级成本最小化,使用了双重Q倾斜算法来优化充电时间表。通过与现有算法进行比较,对所提出算法的性能进行了评估,这些算法是基于从加拿大AB州圣艾伯特公交公司收集的EB流动性和能耗的真实数据进行比较的。

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