Location Analysis of Electric Vehicle Charging Stations for Maximum Capacity and Coverage

I. S. Bayram, S. Bayhan
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引用次数: 10

Abstract

Electric vehicle charging facility location is a critical component of long-term strategic planning. Integration of electric vehicles into mainstream adoption has unique characteristics as it requires a careful investigation of both electric and transportation networks. In this paper, we provide an overview of recent approaches in location analyses of electric vehicle charging infrastructures. We review approaches from classical operations research for fast and slow charging stations. Sample formulations along with case studies are presented to provide insights. We discuss that classical methods are appropriate to address the coverage of charging networks which is defined as average time or distance to reach a charging station when needed. On the other hand, calculating required capacity, defined as the individual charging resources at each node, is still an open research topic. In the final part, we present stochastic facility location theory that uses queuing and other probabilistic approaches.
基于最大容量和最大覆盖的电动汽车充电站选址分析
电动汽车充电设施选址是电动汽车长期战略规划的重要组成部分。将电动汽车融入主流市场具有独特的特点,因为它需要对电动汽车和交通网络进行仔细的调查。本文概述了电动汽车充电设施位置分析的最新研究方法。本文综述了快速充电站和慢速充电站的经典运筹学方法。样例公式以及案例研究提出,以提供见解。我们讨论了经典方法适合于解决充电网络的覆盖问题,即当需要时到达充电站的平均时间或距离。另一方面,计算所需容量(定义为每个节点上的单个充电资源)仍然是一个开放的研究课题。最后,我们提出了利用排队和其他概率方法的随机设施选址理论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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