Abstract

Energy efficiency is one of the most important current challenges, and its impact at a global level is considerable. To solve current challenges, it is critical that consumers are able to control their energy consumption. In this paper, we propose using a time series of window-based entropy to detect anomalies in the electricity consumption of a household when the pattern of consumption behavior exhibits a change. We compare the accuracy of this approach with two machine learning approaches, random forest and neural networks, and with a statistical approach, the ARIMA model. We study whether these approaches detect the same anomalous periods. These different techniques have been evaluated using a real dataset obtained from different households with different consumption profiles from the Madrid Region. The entropy-based algorithm detects more days classified as anomalous according to context information compared to the other algorithms. This approach has the advantages that it does not require a training period and that it adapts dynamically to changes, except in vacation periods when consumption drops drastically and requires some time for adapting to the new situation.

Highlights

  • IntroductionThe interest of people and governments in the energy sector has increased

  • In recent years, the interest of people and governments in the energy sector has increased

  • With the random forest (RF) and long short-term memory (LSTM) models, the first step was to divide the dataset into a training part and a test part—the training part from September 2017 to March 2019 and the test part until March 2020

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Summary

Introduction

The interest of people and governments in the energy sector has increased. The integration of new technologies with power grids has driven a transformation of the energy sector towards a decentralized smart grid. The transition towards the use of smart grids has made it easier to obtain consumption data at different scales. The analysis of this data can have different purposes such as predicting consumption, obtaining consumption patterns, or detecting anomalies, and from this analysis, recommendation systems can be implemented [2]. A household’s electricity consumption is influenced by external variables, such as season, weather, etc., and by internal variables, such as the routines and habits of the dwellers

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