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Quantifying flexibility in EV charging as DR potential: Analysis of two real-world data sets

机译:量化EV充电的灵活性作为DR潜力:两个现实世界数据集的分析

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The increasing adoption of electric vehicles (EVs) presents both challenges and opportunities for the power grid, especially for distribution system operators (DSOs). The demand represented by EVs can be significant, but on the other hand, sojourn times of EVs could be longer than the time required to charge their batteries to the desired level (e.g., to cover the next trip). The latter observation means that the electrical load from EVs is characterized by a certain level of flexibility, which could be exploited for example in demand response (DR) approaches (e.g., to balance generation from renewable energy sources). This paper analyzes two data sets, one from a charging-at-home field trial in Flanders (about 8.5k charging sessions) and another from a large-scale EV public charging pole deployment in The Netherlands (more than 1M sessions). We rigorously analyze the collected data and quantify aforementioned flexibility: (1) we characterize the EV charging behavior by clustering the arrival and departure time combinations, identifying three behaviors (charging near home, charging near work, and park to charge), (2) we fit statistical models for the sojourn time, and flexibility (i.e., non-charging idle time) for each type of observed behavior, and (3) quantify the the potential of DR exploitation as the maximal load that could be achieved by coordinating EV charging for a given time of day t, continuously until t + Δ.
机译:越来越多的电动汽车(EVS)呈现出电网的挑战和机会,特别是对于分销系统运营商(DSOS)。由电动汽车为代表的需求可以是显著,但在另一方面,电动汽车的逗留时间可以长于所需要的时间到其电池充电到期望电平(例如,以覆盖所述下个行程)。后一种观察意味着来自EVS的电负载的特征在于一定程度的柔性,这可以例如在需求响应(DR)方法(例如,从可再生能源的平衡)进行利用。本文分析了两组数据集,其中一个来自弗兰德斯(约8.5K充电会议)的充电 - 归属实地试验,另一个来自荷兰的大型EV公共收费杆部署(超过1M的课程)。我们严格分析所收集的数据并量化上述灵活性:(1)我们通过聚类到达和出发时间组合来表征EV充电行为,识别三项行为(在家庭附近充电,收费和公园充电,收费和收费),(2)我们适合索记时间的统计模型,以及每种类型的观察行为的灵活性(即,非充电空闲时间),(3)量化DR开发的电位作为通过协调EV充电可以实现的最大负载对于一天T的给定时间,连续直到T +δ。

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