基于数据驱动的电动汽车集成策略的非侵入式电动汽车负荷分解算法

A. James, Alec Zhixiao Lin
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摘要

在过去的10年里,电动汽车(EV)充电器的需求从1.44千瓦增加到3.3千瓦到17.2/19.2千瓦[1],是单个家庭平均消费量的3到17/19倍。到2045年,南加州爱迪生公司(SCE)地区的电动汽车普及率将平均增长34倍(GWh)[2]。为了制定数据驱动的公用事业电动汽车并网战略,需要充分了解电动汽车客户的充电行为。分解电动汽车负荷的能力,或者将电动汽车负荷从家庭负荷中分离出来的能力,在支持企业预测和分配计划、制定分配标准以及对公用事业一般费率情况的资本请求辩护方面非常有用。电动汽车遥测和单独计量的电动汽车负荷并不总是适用于公用事业。在本文中,我们提出了一种轻量级的高效电动汽车分解方法,该方法使用先进仪表基础设施(AMI)仪表的实际功率测量具有若干优势,并演示了该算法和大规模(约62,000个客户)的公用事业应用,并展示了结果如何支持公用事业公司制定可靠,负担得起和安全的电动汽车集成策略的战略需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Non-intrusive Electric-vehicle Load Disaggregation Algorithm for a Data-driven EV Integration Strategy
Electric vehicle (EV) charger demand has increased from 1.44 kW to between 3.3 kW and 17.2/19.2 kW [1] in the past 10 years – a 3 to 17/19 times the average consumption from a single home. By 2045 EV penetration will on average grow by 34 times (GWh) from today in Southern California Edison’s (SCE) territory [2]. To develop a data-driven utility EV grid integration strategy, EV customer charging behaviors need to be well understood. The ability to disaggregate EV loads, or segregate EV loads from household loads, is very useful in supporting enterprise forecasting and distribution planning, developing distribution standards, and capital request justification for a utility general rate case. EV telemetry and individual metered EV loads are not always available to the utility. In this paper, we present a lightweight efficient EV disaggregation methodology, with several advantages using real power measurements from advanced meter infrastructure (AMI) meters and demonstrated the algorithm and utility applications at scale (approximately 62,000 customers), and showed how the results can support utilities’ strategic need to develop a reliable, affordable, and safe EV integration strategy.
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