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Quantitive analysis of electric vehicle flexibility: A data-driven approach

机译:电动汽车灵活性的定量分析:一种数据驱动的方法

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The electric vehicle (EV) flexibility, indicates to what extent the charging load can be coordinated (i.e., to flatten the load curve or to utilize renewable energy resources). However, such flexibility is neither well analyzed nor effectively quantified in literature. In this paper we fill this gap and offer an extensive analysis of the flexibility characteristics of 390k EV charging sessions and propose measures to quantize their flexibility exploitation. Our contributions include: (1) characterization of the EV charging behavior by clustering the arrival and departure time combinations that leads to the identification of type of EV charging behavior, (2) in-depth analysis of the characteristics of the charging sessions in each behavioral cluster and investigation of the influence of weekdays and seasonal changes on those characteristics including arrival, sojourn and idle times, and (3) proposing measures and an algorithm to quantitatively analyze how much flexibility (in terms of duration and amount) is used at various times of a day, for two representative scenarios. Understanding the characteristics of that flexibility (e.g., amount, time and duration of availability) and when it is used (in terms of both duration and amount) helps to develop more realistic price and incentive schemes in DR algorithms to efficiently exploit the offered flexibility or to estimate when to stimulate additional flexibility. (C) 2017 Elsevier Ltd. All rights reserved.
机译:电动汽车(EV)的灵活性表示充电负载可以协调到什么程度(即,使负载曲线变平或利用可再生能源)。但是,这种灵活性在文献中既没有得到很好的分析,也没有得到有效的量化。在本文中,我们填补了这一空白,并对390k EV充电会话的灵活性特征进行了广泛的分析,并提出了量化其灵活性利用的措施。我们的贡献包括:(1)通过对到达和离开时间组合进行聚类来表征EV充电行为,从而确定EV充电行为的类型;(2)深入分析每种行为中充电会话的特征聚类并研究工作日和季节变化对这些特征的影响,包括到达,逗留和空闲时间,以及(3)提出建议的方法和算法,以定量分析在不同时间使用多少灵活性(就持续时间和数量而言)一天,针对两种代表性情况。了解该灵活性的特征(例如,可用性的数量,时间和持续时间)以及使用时间(就持续时间和数量而言)有助于在灾难恢复算法中开发出更切合实际的价格和激励机制,以有效地利用所提供的灵活性或估计何时可以激发更多的灵活性。 (C)2017 Elsevier Ltd.保留所有权利。

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