How Many More Public Charging Stations Do We Need? A Data-Driven Approach Considering Charging Station Overflow Dynamics

Simon Weekx, Gil Tal, Lieselot Vanhaverbeke
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Abstract

The development of public charging infrastructure is crucial to support mass electric vehicle (EV) adoption. Although many cities worldwide have already installed an initial network of public chargers, it is often unclear whether the current supply of infrastructure is in line with demand and how many more charging stations are required to cope with future EV growth. In this sense, transactional charging data on the existing network can help answer these questions. We present a novel method that uses historical charging data as input to obtain answers to the following questions: (a) How many more chargers are required to meet future demand? and (b) Where should these new chargers be installed? By mining the individual charging behavior of EV drivers, we show that overflow dynamics can be found between charging stations. That is, when a preferred charging station is fully occupied, it is found that EV drivers divert to other charging stations nearby. Identifying these dynamics allows us to simulate the impact of a demand increase on the charging infrastructure network more accurately. We found the number of new chargers required to be significantly lower when considering overflow dynamics. Our simulations indicate that if demand is doubled, 30%–50% fewer charging points are needed compared with a situation in which overflow dynamics are neglected but the same failure rate is still maintained (i.e., percentage of failed charging sessions in the network). Determining the exact number of chargers will depend on the failure rate policymakers are willing to accept, reflecting the trade-off between charging convenience and utilization.
我们还需要多少公共充电站?考虑充电站溢出动态的数据驱动方法
公共充电基础设施的发展对于支持电动汽车(EV)的大规模应用至关重要。尽管全球许多城市已经安装了公共充电器初始网络,但人们往往不清楚目前的基础设施供应是否与需求相匹配,也不清楚还需要多少充电站才能应对未来电动汽车的增长。从这个意义上说,现有网络的充电交易数据有助于回答这些问题。我们提出了一种新方法,利用历史充电数据作为输入,来获得以下问题的答案:(a) 需要增加多少充电器才能满足未来需求? (b) 这些新充电器应安装在哪里?通过挖掘电动汽车驾驶员的个人充电行为,我们发现充电站之间存在溢出动态。也就是说,当一个首选充电站满员时,电动汽车驾驶员会转向附近的其他充电站。通过识别这些动态,我们可以更准确地模拟需求增长对充电基础设施网络的影响。我们发现,如果考虑到溢出动态,所需的新充电器数量将大大减少。我们的模拟结果表明,与忽略溢出动态但仍保持相同故障率(即网络中充电失败的百分比)的情况相比,如果需求增加一倍,所需的充电桩数量将减少 30%-50%。确定充电桩的确切数量将取决于决策者愿意接受的故障率,这反映了充电便利性和利用率之间的权衡。
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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