A methodology to analyze conservation voltage reduction performance using field test data

H. Liu, R. Macwan, N. Alexander, Hao Zhu
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引用次数: 17

Abstract

With an ever increasing demand and depleting energy resources, there has been a growing interest in conserving energy, such as the conservation voltage reduction (CVR) program to reduce energy consumption by decreasing feeder voltage. Several utilities are conducting pilot projects on their feeder systems to determine the feasibility and actual CVR payoff. One major challenge in analyzing the CVR field test data lies in the uncertainty of the power system load and a variety of dependent factors encompassing temperature and time. This paper proposes a methodology to facilitate the CVR performance analysis at the utilities by accounting all potentially influential factors. A linear relation to model the system power demand is presented, which allows a sparse linear regression method to obtain its sensitivity parameter to voltage magnitude and accordingly to quantify the CVR payoff. All input factors can also be ranked according to their statistical influence on representing the power demand output. The proposed method is first tested and validated using synthetic CVR data simulated for a 13.8 kV distribution feeder using OpenDss. It is further tested using the field CVR test data provided by a major U.S. Midwest electric utility. Both tests demonstrated the effectiveness of the proposed method as well as the usefulness and validity of the input factor ranking.
一种利用现场试验数据分析节能降压性能的方法
随着能源需求的不断增加和能源资源的日益枯竭,人们对节能越来越感兴趣,例如通过降低馈线电压来降低能耗的节能降压(CVR)计划。一些公用事业公司正在他们的支线系统上进行试点项目,以确定可行性和实际的CVR回报。分析CVR现场测试数据的一个主要挑战在于电力系统负荷的不确定性以及包括温度和时间在内的各种相关因素。本文提出了一种方法,通过考虑所有潜在的影响因素来促进公用事业公司的CVR绩效分析。建立了系统电力需求的线性关系,利用稀疏线性回归方法获得了系统对电压幅值的敏感性参数,从而量化了CVR的收益。所有输入因素也可以根据其对代表电力需求输出的统计影响进行排序。利用OpenDss对13.8 kV配电馈线模拟的综合CVR数据对该方法进行了测试和验证。使用美国中西部一家主要电力公司提供的现场CVR测试数据对其进行了进一步测试。两个测试都证明了所提出方法的有效性以及输入因子排序的有效性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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