Clustering analysis of the electrical load in european countries

A. K. Tanwar, E. Crisostomi, P. Ferraro, Marco Raugi, M. Tucci, G. Giunta
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引用次数: 13

Abstract

In this paper we used clustering algorithms to compare the typical load profiles of different European countries in different day of the weeks. We find out that better results are obtained if the clustering is not performed directly on the data, but on some features extracted from the data. Clustering results can be exploited by energy providers to tailor more attractive time-varying tariffs for their customers. In particular, despite the relevant differences among the several compared countries, we obtained the interesting result of identifying a single feature that is able to distinguish weekdays from holidays and pre-holidays in all the examined countries.
欧洲国家电力负荷的聚类分析
在本文中,我们使用聚类算法来比较不同欧洲国家在一周中不同日子的典型负荷概况。我们发现,如果不直接对数据进行聚类,而是对从数据中提取的一些特征进行聚类,可以获得更好的聚类结果。能源供应商可以利用聚类结果为其客户量身定制更具吸引力的时变电价。特别是,尽管几个比较国家之间存在相关差异,但我们获得了一个有趣的结果,即在所有被调查的国家中,识别出一个能够区分工作日、节假日和节假日前的单一特征。
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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