Abstract

The large amount of data collected by smart meters is a valuable resource that can be used to better understand consumer behavior and optimize electricity consumption in cities. This paper presents an unsupervised classification approach for extracting typical consumption patterns from data generated by smart electric meters. The proposed approach is based on a constrained Gaussian mixture model whose parameters vary according to the day type (weekday, Saturday or Sunday). The proposed methodology is applied to a real dataset of Irish households collected by smart meters over one year. For each cluster, the model provides three consumption profiles that depend on the day type. In the first instance, the model is applied on the electricity consumption of users during one month to extract groups of consumers who exhibit similar consumption behaviors. The clustering results are then crossed with contextual variables available for the households to show the close links between electricity consumption and household socio-economic characteristics. At the second instance, the evolution of the consumer behavior from one month to another is assessed through variations of cluster sizes over time. The results show that the consumer behavior evolves over time depending on the contextual variables such as temperature fluctuations and calendar events.

Highlights

  • The growth of urban populations requires the scaling-up of infrastructure in terms of public utilities, transport and telecommunications

  • Smart meters allow hourly or daily readings of consumption and, collect a large amount of data. These data include electricity consumption by individual residential customers and small or medium-sized enterprise (SME) customers. Analyzing such data can help in building decision-making tools for urban stakeholders to allow them to better understand the behaviors associated with electricity consumption

  • We investigate the variability of consumer behavior over time by analyzing the changes in clustering results from month to another

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Summary

Introduction

The growth of urban populations requires the scaling-up of infrastructure in terms of public utilities (including energy), transport and telecommunications. Their interactions with consumers differently to improve quality of life and to respect the environment. Within this context, cities and electricity companies are implementing many programs to equip buildings with smart meters. Smart meters allow hourly or daily readings of consumption and, collect a large amount of data These data include electricity consumption by individual residential customers and small or medium-sized enterprise (SME) customers. Analyzing such data can help in building decision-making tools for urban stakeholders (electricity companies and urban planners) to allow them to better understand the behaviors associated with electricity consumption

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