Litcius/Paper detail

Variational autoencoders for anomaly detection in the behaviour of the elderly using electricity consumption data

Daniel González, Miguel Á. Patricio, Antonio Berlanga, José M. Molina

2021Expert Systems29 citationsDOIOpen Access PDF

Abstract

Abstract According to the World Health Organization, between and , the proportion of the world's population over will double, from to . In absolute numbers, this age group will increase from million to billion in the course of half a century. It is a reality that most of them prefer to live alone, so it is necessary to look for mechanisms and tools that will help them to improve their autonomy. Although in recent years, we have been living in a veritable explosion of domotic systems that facilitate people's daily lives, it is also true that there are not many tools specifically aimed at this sector of the population. The aim of this paper is to present a potential solution to the monitoring of activity of daily living in the least intrusive way for people. In this case, anomalous patterns of daily activities will be detected by analysing the daily consumption of household appliances. People who live alone usually have a pattern of daily behaviour in the use of household appliances (coffee machine, microwave, television, etc.). A neuronal model is proposed for the detection of abnormal behaviour based on an autoencoder architecture. This solution will be compared with a variational autoencoder to analyse the improvements that can be obtained. The well‐known dataset called UK‐DALE will be used to validate the proposal.

Topics & Concepts

AutoencoderConsumption (sociology)Computer scienceAutonomyAnomaly detectionPopulationActivities of daily livingArtificial intelligenceElectricityComputer securityDeep learningEnvironmental healthPsychologyMedicineSociologyEngineeringElectrical engineeringPsychiatryPolitical scienceLawSocial scienceAnomaly Detection Techniques and ApplicationsContext-Aware Activity Recognition SystemsTime Series Analysis and Forecasting