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

机译:量化作为DR潜力的EV充电的灵活性:分析两个实际数据集

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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:电动汽车(EV)的日益普及给电网,尤其是配电系统运营商(DSO)带来了挑战和机遇。电动汽车所代表的需求可能很大,但另一方面,电动汽车的停留时间可能比将其电池充电至所需水平(例如,覆盖下一次旅行)所需的时间更长。后一种观察意味着,电动汽车的电力负载具有一定程度的灵活性,例如可以在需求响应(DR)方法中加以利用(例如,平衡可再生能源的发电量)。本文分析了两个数据集,一个来自弗兰德的家庭充电实地试验(约8.5k充电会议),另一个来自荷兰的大规模EV公共充电杆部署(超过100万个会议)。我们严格分析收集的数据并量化上述灵活性:(1)通过对到达和离开时间组合进行聚类来表征电动汽车的充电行为,确定三种行为(在家附近充电,在工作场所附近充电以及停车充电),(2)我们针对停留时间和每种观察到的行为的灵活性(即非充电空闲时间)建立了统计模型,并且(3)量化了DR开发作为协调EV充电可以实现的最大负载的潜力在一天中给定的时间t内,持续直到t +Δ。

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