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Journal article

Electricity consumption clustering using smart meter data

From

Department of Management Engineering, Technical University of Denmark1

Systems Analysis, Department of Management Engineering, Technical University of Denmark2

Department of Applied Mathematics and Computer Science, Technical University of Denmark3

Dynamical Systems, Department of Applied Mathematics and Computer Science, Technical University of Denmark4

CITIES - Centre for IT-Intelligent Energy Systems, Centers, Technical University of Denmark5

Electricity smart meter consumption data is enabling utilities to analyze consumption information at unprecedented granularity. Much focus has been directed towards consumption clustering for diversifying tariffs; through modern clustering methods, cluster analyses have been performed. However, the clusters developed exhibit a large variation with resulting shadow clusters, making it impossible to truly identify the individual clusters.

Using clearly defined dwelling types, this paper will present methods to improve clustering by harvesting inherent structure from the smart meter data. This paper clusters domestic electricity consumption using smart meter data from the Danish city of Esbjerg. Methods from time series analysis and wavelets are applied to enable the K-Means clustering method to account for autocorrelation in data and thereby improve the clustering performance.

The results show the importance of data knowledge and we identify sub-clusters of consumption within the dwelling types and enable K-Means to produce satisfactory clustering by accounting for a temporal component. Furthermore our study shows that careful preprocessing of the data to account for intrinsic structure enables better clustering performance by the K-Means method.

Language: English
Publisher: MDPI AG
Year: 2018
Pages: 859
ISSN: 19961073
Types: Journal article
DOI: 10.3390/en11040859
ORCIDs: Tureczek, Alexander , Nielsen, Per Sieverts and Madsen, Henrik

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