Citation:
Moure-Garrido, M., Campo, C., & Garcia-Rubio, C. (2022). Entropy-Based Anomaly Detection in Household Electricity Consumption. In Energies, 15(5), 1837-1858
xmlui.dri2xhtml.METS-1.0.item-contributor-funder:
Comunidad de Madrid Ministerio de Ciencia, Innovación y Universidades (España) Universidad Carlos III de Madrid
Sponsor:
This work was supported by the Spanish Government under the research project
“Enhancing Communication Protocols with Machine Learning while Protecting Sensitive Data (COMPROMISE)”
(PID2020-113795RB-C32 MCIN/AEI/10.13039/501100011033) and the project MAGOS
(TEC2017-84197-C4-1-R), and by the Comunidad de Madrid (Spain) under the projects: CYNAMON
(P2018/TCS-4566), co-financed by the European Structural Funds (ESF and FEDER), and the Multiannual
Agreement with UC3M in the line of Excellence of University Professors (EPUC3M21), in the
context of the V PRICIT (Regional Programme of Research and Technological Innovation).
Project:
Gobierno de España. TEC2017-84197-C4-1-R Gobierno de España. PID2020-113795RB-C32 MCIN/AEI/10.13039/501100011033 Comunidad de Madrid. P2018/TCS-4566 Universidad Carlos III de Madrid. EPUC3M21
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 tiEnergy 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.[+][-]