Abstract

Smart meters with automatic meter reading functionalities are becoming popular across the world. As a result, load measurements at various sampling frequencies are now available. Several methods have been proposed to infer device usage characteristics from household load measurements. However, many techniques are based on highly intensive computations that incur heavy computational costs; moreover, they often rely on private household information. In this paper, we propose a technique for the detection of appliance utilization patterns using low-computational-cost algorithms that do not require any information about households. Appliance utilization patterns are identified only from the system status behavior, represented by large system status datasets, by using dimensionality reduction and clustering algorithms. Principal component analysis, k-means, and the elbow method are used to define the clusters, and the minimum spanning tree is used to visualize the results that show the appearance of utilization patterns. Self organizing maps are used to create a system status classifier. We applied our techniques to two public datasets from two different countries, the United Kingdom (UK-DALE) and the US (REDD), with different usage patterns. The proposed clustering techniques enable effective demand-side management, while the system status classifier can detect appliance malfunctions only through system status analyses.

Highlights

  • The use of residential appliances is directly affected by the daily and weekly routines of people who live in the house

  • We show that the method for training Self Organizing Maps opens a wide range of analysis opportunities for the system status, starting from malfunction and fault detection

  • We have proposed a technique for the detection of appliance utilization patterns

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Summary

Introduction

The use of residential appliances is directly affected by the daily and weekly routines of people who live in the house. Remote work, and lockdowns have led to more people staying at home and have changed individual and aggregate daily consumption profiles. Personal routines are not easy to change, especially when it refers to what people do inside their homes; automated solutions might be beneficial to manage the electric load demand [2,3]. From this perspective, it is clear that studying patterns of consumption is very important at present

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