住宅负荷聚集抽样时间和负荷变化的统计分析

I. A. Sajjad, G. Chicco, R. Napoli
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引用次数: 5

摘要

由于住宅用户的生活方式,住宅系统中的电力负荷高度依赖于各种类型的不确定性。对于配电系统运营商来说,提高对这些用户的总体行为的了解尤为重要,这也是为了确定住宅需求的潜在灵活性,并制定向用户提供电力的经济条款。本文讨论了收集客户数据的采样时间间隔对总电力需求特征的影响。进行了专门的统计分析,以突出不同数量的城市外住宅用户的负载变化。结果以归一化百分比负荷变化的形式表示,使用样本数量和最大需求变化来构造归一化因子。结果表明了采样时间间隔对不同用户聚集水平下的负荷变化的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A statistical analysis of sampling time and load variations for residential load aggregations
The electrical load in residential systems highly depends on various types of uncertainty due to the lifestyle of the residential customers. Enhancing the knowledge on the aggregated behavior of these customers is particularly important for the distribution system operator, also with the aim of determining the potential flexibility of the residential demand and setting up the economic terms of the electricity provision to the customers. This paper addresses the impact of the sampling time interval with which the customer data are gathered on the characteristics of the aggregated electricity demand. A dedicated statistical analysis has been carried out to highlight the load variations occurring for different numbers of aggregated extra-urban residential customers. The results are represented in the form of normalized percentage load variations, using the number of samples and the maximum demand variation to construct the normalizing factor. The results indicate how the sampling time interval affects the load variations for different levels of customer aggregation.
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