Clustering-Based Assessment of Residential Consumers from Hourly-Metered Data

This paper addresses the methodology for determining suitable groups of residential consumers, based on time series of their hourly energy consumption and contractual data. Salient aspects are the discussion on the importance of the data representation in terms of data normalisation, choice of the appropriate features to be used as inputs in clustering procedures, and computation of clustering validity indicators. The analysis is carried out on real hourly-metered electricity consumption data of 10,000 residential consumers. We discuss the main insights obtained with the application of conventional approaches based on time series data handled with different distance metrics (e.g., Euclidean distance and dynamic time warping) and alternative approaches exploring data transformations, among which the CONsumption DUration Curve Time Series (CONDUCTS) methodology proposed by the authors.

[1]  Gianfranco Chicco,et al.  Overview and performance assessment of the clustering methods for electrical load pattern grouping , 2012 .

[2]  Pablo Montero,et al.  TSclust: An R Package for Time Series Clustering , 2014 .

[3]  R Core Team,et al.  R: A language and environment for statistical computing. , 2014 .

[4]  Peter Grindrod,et al.  Analysis and Clustering of Residential Customers Energy Behavioral Demand Using Smart Meter Data , 2016, IEEE Transactions on Smart Grid.

[5]  Tania Cerquitelli,et al.  Discovering electricity consumption over time for residential consumers through cluster analysis , 2018, 2018 International Conference on Development and Application Systems (DAS).

[6]  Daniele Apiletti,et al.  METATECH: METeorological Data Analysis for Thermal Energy CHaracterization by Means of Self-Learning Transparent Models , 2018 .

[7]  Ameet Talwalkar,et al.  MLlib: Machine Learning in Apache Spark , 2015, J. Mach. Learn. Res..

[8]  Sanjay Lall,et al.  Shape-Based Approach to Household Electric Load Curve Clustering and Prediction , 2017, IEEE Transactions on Smart Grid.

[9]  P. Rousseeuw Silhouettes: a graphical aid to the interpretation and validation of cluster analysis , 1987 .

[10]  Daniel T. Larose,et al.  Discovering Knowledge in Data: An Introduction to Data Mining , 2005 .

[11]  Ram Rajagopal,et al.  Household Energy Consumption Segmentation Using Hourly Data , 2014, IEEE Transactions on Smart Grid.

[12]  W. Fichtner,et al.  Electricity load profiles in Europe: The importance of household segmentation , 2014 .

[13]  Toni Giorgino,et al.  Computing and Visualizing Dynamic Time Warping Alignments in R: The dtw Package , 2009 .

[14]  Mohammed H. Albadi,et al.  A summary of demand response in electricity markets , 2008 .

[15]  Omid Motlagh,et al.  Analysis of household electricity consumption behaviours: Impact of domestic electricity generation , 2015, Appl. Math. Comput..