电动出租车车队的可预测充电计划

Zheng Dong, Cong Liu, Yanhua Li, Jie Bao, Y. Gu, T. He
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引用次数: 41

摘要

由于对能源安全的担忧,我们的社会正在见证电动汽车车队应用的激增,例如公共电动出租车车队系统。阻碍电动汽车更广泛采用的一个主要问题是里程焦虑,这是由于几个因素造成的,包括电池容量有限,电池充电站的可用性有限,以及与传统汽油车相比充电时间长。通过分析可访问的真实世界电动出租车系统数据集,我们观察到由于充电站利用率的时空不平衡,当前电动出租车司机在充电站的等待时间往往难以预测。这主要是因为目前的出租车车队管理系统简单地依靠出租车司机来进行收费决策。在本文中,我们开发了一个用于电动出租车车队的实时电动汽车充电调度框架REC,该框架在运行时通知每个电动出租车司机何时何地给电池充电。如果每个司机都遵循REC的充电决策,REC能够从分析上保证车队中所有电动汽车的可预测和严格限定的等待时间,以及充电站之间的时间/空间平衡利用率。此外,REC还可以进一步有效地处理现实问题,例如,允许出租车司机在其首选充电站充电,同时保证充电站的平衡利用率。我们使用可访问的真实世界电动出租车系统范围的数据集广泛评估了REC。实验结果表明,REC能够解决当前电动出租车车队系统存在的不可预测性和不平衡性问题,产生可预测和严格限定的等待时间,同样重要的是,充电站利用率在时间/空间上平衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
REC: Predictable Charging Scheduling for Electric Taxi Fleets
Due to the energy security concern, our society is witnessing a surge of EV fleet applications, e.g., public EV taxi fleet systems. A major issue impeding an even more widespread adoption of EVs is range anxiety, which is due to several factors including limited battery capacity, limited availability of battery charging stations, and long charging time compared to traditional gasoline vehicles. By analyzing our accessible real-world EV taxi system-wide datasets, we observe that current EV taxi drivers often suffer from unpredictable, long waiting times at charging stations, due to temporally and spatially unbalanced utilization among charging stations. This is mainly because current taxi fleet management system simply rely on taxi drivers to make charging decisions. In this paper, In this paper, we develop REC, a Real-time Ev Charging scheduling framework for EV taxi fleets, which informs each EV taxi driver at runtime when and where to charge the battery. REC is able to analytically guarantee predictable and tightly bounded waiting times for all EVs in the fleet and temporally/spatially balanced utilization among charging stations, if each driver follows the charging decision made by REC. Moreover, REC can further efficiently handle real-life issues, e.g., allowing a taxi driver to charge at its preferred charging station while still guaranteeing balanced charging station utilization.We have extensively evaluated REC using our accessible real-world EV taxi system-wide datasets. Experimental results show that REC is able to address the unpredictability and unbalancing issues existing in current EV taxi fleet systems, yielding predictable and tightly bounded waiting times, and equally important, temporally/spatially balanced charging station utilization.
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