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Error Analysis of Customer Baseline Load (CBL) Calculation Methods for Residential Customers

机译:住宅客户的客户基准负荷(CBL)计算方法的误差分析

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摘要

Federal Energy Regulatory Commission (FERC) 745 order has created an environment that allows demand response owners to sell their load reduction in the wholesale market. One of the main challenges that independent system operators and utilities face is developing customer baseline load (CBL) calculation methods that work satisfactorily in this new environment. Consequently, it is critical that these methods need to be evaluated from the error performance's perspective. In this paper, error analysis of CBL calculation methods for residential customers is carried out theoretically and empirically. To perform theoretical analysis, the utility function of customers is analyzed to determine the existence of the economic incentives for gaming and inefficient consumption as well as studying the impact of inaccuracy on the social welfare loss. Furthermore, to perform the empirical analysis, well-established CBL calculation methods, HighXofY (New York ISO, well known as NYISO), LowXofY, MidXofY, exponential moving average (New England ISO, well known as ISONE), and regression are first introduced and, then, utilized to calculate the CBL. A dataset consisting of 262 residential customers is used for this analysis. In addition, the error analysis is performed using accuracy and bias metrics. To reach a valid conclusion about the overall performance of CBL methods, an economic analysis of a hypothetical peak time rebate (PTR) program is carried out. According to the results of the case study, the utility pays at least half of its revenue as a rebate solely due to inaccuracy of CBL methods. In addition, it is demonstrated that PTR creates inefficiencies in the residential sector because of the failure of CBL calculation methods to accurately predict the customers' load profile on the event day.
机译:联邦能源管理委员会(FERC)745号命令创造了一种环境,允许需求响应所有者在批发市场上出售其减少的负荷。独立系统运营商和公用事业公司面临的主要挑战之一是开发可在这种新环境中令人满意地工作的客户基准负荷(CBL)计算方法。因此,至关重要的是,必须从错误性能的角度评估这些方法。本文从理论和经验上对居民用户的CBL计算方法进行了误差分析。为了进行理论分析,分析了客户的效用函数,以确定是否存在赌博和低效消费的经济诱因,并研究了不准确性对社会福利损失的影响。此外,为了进行经验分析,首先介绍了完善的CBL计算方法,HighXofY(纽约ISO,众所周知的NYISO),LowXofY,MidXofY,指数移动平均线(New England ISO,众所周知的ISONE)和回归。然后,用于计算CBL。包含262个住宅客户的数据集用于此分析。此外,使用准确性和偏差指标执行错误分析。为了得出有关CBL方法总体性能的有效结论,对假设的高峰时间折扣(PTR)程序进行了经济分析。根据案例研究的结果,公用事业公司仅由于CBL方法的不准确性而将其收入的至少一半作为回扣支付。此外,事实证明,由于CBL计算方法无法在活动当天准确预测客户的负荷状况,因此PTR在住宅部门造成了效率低下。

著录项

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  • 作者单位

    Energy Production and Infrastructure Center and the Department of Electrical and Computer Engineering, University of North Carolina at Charlotte, Charlotte, NC, USA;

    Energy Production and Infrastructure Center and the Department of Electrical and Computer Engineering, University of North Carolina at Charlotte, Charlotte, NC, USA;

    Department of Electrical Engineering and Computer Science, University of Tennessee at Knoxville, Knoxville, TN, USA;

    Belk College of Business, University of North Carolina at Charlotte, Charlotte, NC, USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Error analysis; Additives; Load management; Economics; Electronic mail; Atmospheric measurements;

    机译:误差分析;添加剂;负荷管理;经济;电子邮件;大气测量;
  • 入库时间 2022-08-18 01:24:01

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