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A data driven typology of electric vehicle user types and charging sessions

机译:电动车辆用户类型和充电会话的数据驱动类型。

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The understanding of charging behavior has been recognized as a crucial element in optimizing roll out of charging infrastructure. While current literature provides charging choices and categorizations of charging behavior, these seem oversimplified and limitedly based on charging data.In this research we provide a typology of charging behavior and electric vehicle user types based on 4.9 million charging transactions from January 2017 until March 2019 and 27,000 users on 7079 Charging Points the public level 2 charging infrastructure of 4 largest cities and metropolitan areas of the Netherlands.We overcome predefined stereotypical expectations of user behavior by using a bottom-up data driven two-step clustering approach that first clusters charging sessions and thereafter portfolios of charging sessions per user. From the first clustering (Gaussian Mixture) 13 distinct charging session types were found; 7 types of daytime charging sessions (4 short, 3 medium duration) and 6 types of overnight charging sessions. The second clustering (Partition Around Medoids) clustering result in 9 user types based on their distinct portfolio of charging session types. We found (i) 3 daytime office hours charging user types (ii) 3 overnight user types and (iii) 3 non-typical user types (mixed day and overnight chargers, visitors and car sharing). Three user types show significant peaks at larger battery sizes which affects the time between sessions. Results show that none of the user types display solely stereotypical behavior as the range of behaviors is more varied and more subtle. Analysis of population composition over time revealed that large battery users increase over time in the population. From this we expect that shifts charging portfolios will be observed in future, while the types of charging remain stable.
机译:对充电行为的理解已被认为是优化收费基础设施滚动的关键因素。虽然目前的文献提供了充电选择和对充电行为的分类,但这些似乎超薄并有限地基于充电数据。本研究我们提供了根据2017年1月至2019年1月的490万美元收费交易提供了充电行为和电动汽车用户类型的类型。 7079名用户在7079个用户收费点4个最大的2个城市和荷兰大都市地区的收费基础设施。我们克服了通过使用自下而上的数据驱动的两步聚类方法来克服用户行为的预定刻度预期,这是第一个集群充电会话和收费的两步聚类方法和此后每个用户充电会话的投资组合。从第一聚类(高斯混合物)发现13种不同的充电会议类型; 7种日间充电会话(4个短,3中等持续时间)和6种频道充电会话。基于其不同的充电会话类型的不同组合,第二个聚类(左右分区)聚类导致9个用户类型。我们发现(i)3日间办公时间充电用户类型(ii)3夜间用户类型和(iii)3非典型用户类型(混合日和隔夜充电器,访客和汽车分享)。三个用户类型在更大的电池尺寸下显示出显着的峰值,影响会话之间的时间。结果表明,由于行为范围更加多样化,因此没有任何用户类型显示陈规定型行为。随着时间的推移分析人口构成显示,大量电池用户随着时间的推移而增加。由此,我们预计将来会在将来观察到收费投资组合,而充电类型保持稳定。

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