住宅用电需求分布的聚类框架

Mayank Jain, T. Alskaif, Soumyabrata Dev
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引用次数: 8

摘要

由于大规模部署智能计量基础设施,住宅电力需求概况数据的可用性使得对电力消耗模式进行更准确的分析成为可能。本文分析了位于荷兰阿姆斯特丹市的个体家庭的电力需求概况。定义了一个综合的聚类框架,根据住户的用电模式对住户进行分类。该框架包括两个主要步骤,即输入电力消耗数据的降维步骤,然后是降维子空间的无监督聚类算法。虽然文献中用于上述聚类任务的任何算法都可以用于相应的步骤,但更重要的问题是,对于给定的数据集和聚类任务,推断哪种特定的算法组合是最好的。本文通过提出一种新的客观验证策略来解决这个问题,然后通过执行主观验证来交叉验证其建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Clustering Framework for Residential Electric Demand Profiles
The availability of residential electric demand profiles data, enabled by the large-scale deployment of smart metering infrastructure, has made it possible to perform more accurate analysis of electricity consumption patterns. This paper analyses the electric demand profiles of individual households located in the city Amsterdam, the Netherlands. A comprehensive clustering framework is defined to classify households based on their electricity consumption pattern. This framework consists of two main steps, namely a dimensionality reduction step of input electricity consumption data, followed by an unsupervised clustering algorithm of the reduced subspace. While any algorithm, which has been used in the literature for the aforementioned clustering task, can be used for the corresponding step, the more important question is to deduce which particular combination of algorithms is the best for a given dataset and a clustering task. This question is addressed in this paper by proposing a novel objective validation strategy, whose recommendations are then cross-verified by performing subjective validation.
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