住宅电动汽车充电负荷的表后分解

Kang Pu, Yue Zhao
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引用次数: 0

摘要

随着电动汽车(ev)在配电系统中的迅速渗透,公用事业公司面临的一个主要问题是对电表后(BTM)电动汽车的充电行为缺乏可视性。了解BTM电动汽车充电行为可以极大地提高电力公司的系统规划和运营效率。本文研究了从智能电表数据轨迹中分离出BTM EV负荷轨迹的问题。根据典型电动汽车充电轨迹的特点,提出了三个相互依存的子问题:a)检测BTM电动汽车的存在,b)估计电动汽车的充电速率,c)检测电动汽车的充电周期。提出了一个统一的迭代算法框架来解决这三个子问题。重要的是,所提出的算法不假设或利用地真EV负载轨迹的知识,而是以“无监督”的方式估计BTM EV负载轨迹。基于来自德克萨斯州奥斯汀的实际15分钟间隔智能电表数据进行了数值评估,并证明了所提出的算法取得的良好性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Behind-the-Meter Disaggregation of Residential Electric Vehicle Charging Load
With the rapidly evolving penetration of electric vehicles (EVs) in power distribution systems, a major issue that utilities face is the lack of visibility into the charging behaviors of the behind-the-meter (BTM) EVs. Knowing the BTM EV charging behaviors can greatly enhance utilities' system planning and operation efficacy. In this paper, the problem of disaggregating BTM EV load traces from smart meter data traces is studied. Based on the characteristics of typical EV charging traces, three interdependent sub-problems are formulated: a) Detecting the presence of BTM EVs, b) Estimating the EV charging rate, and c) Detecting the EV charging periods. A unified iterative algorithmic framework is developed to solve all three sub-problems. Importantly, the proposed algorithms do not assume or utilize the knowledge of ground truth EV load traces but estimate BTM EV load traces in an “unsupervised” fashion. Numerical evaluation is conducted based on real-world 15-minute interval smart meter data from Austin, TX, and demonstrates great performance achieved by the proposed algorithms.
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