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Regression Models for Demand Reduction based on Cluster Analysis of Load Profiles

机译:基于负载配置文件的聚类分析的需求减少回归模型

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This paper provides new regression models for demand reduction of Demand Response programs for the purpose of ex ante evaluation of the programs and screening for recruiting customer enrollment into the programs. The proposed regression models employ load sensitivity to outside air temperature and representative load pattern derived from cluster analysis of customer baseline load as explanatory variables. The proposed models examined their performances from the viewpoint of validity of explanatory variables and fitness of regressions, using actual load profile data of Pacific Gas and Electric Company's commercial and industrial customers who participated in the 2008 Critical Peak Pricing program including Manual and Automated Demand Response.
机译:本文提供了新的回归模型,用于减少需求响应计划,以便进行计划和筛选招募客户入学进入计划的课程和筛选。所提出的回归模型采用负载敏感性与来自客户基线负载的集群分析的外部空气温度和代表性负载模式作为解释变量。拟议的模型从解释性变量的有效性和回归的适用性的角度检查了它们的性能,使用了参加了2008年关键峰定价计划的太平洋天然气和电力公司的商业和工业客户的实际负载简介数据,包括手动和自动化需求响应。

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