Entropy-Based Metrics for Occupancy Detection Using Energy Demand

Smart Meters provide detailed energy consumption data and rich contextual information that can be utilized to assist electricity providers and consumers in understanding and managing energy use. The detection of human activity in residential households is a valuable extension for applications, such...

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Main Authors: Denis Hock, Martin Kappes, Bogdan Ghita
Format: Article
Language:English
Published: MDPI AG 2020-06-01
Series:Entropy
Subjects:
Online Access:https://www.mdpi.com/1099-4300/22/7/731
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spelling doaj-adef64b3791f47988b6f7a6dad4068d22020-11-25T03:08:36ZengMDPI AGEntropy1099-43002020-06-012273173110.3390/e22070731Entropy-Based Metrics for Occupancy Detection Using Energy DemandDenis Hock0Martin Kappes1Bogdan Ghita2Faculty of Computer Science and Engineering, University of Applied Sciences Frankfurt am Main, 60318 Frankfurt, GermanyFaculty of Computer Science and Engineering, University of Applied Sciences Frankfurt am Main, 60318 Frankfurt, GermanySchool of Engineering, Computing and Mathematics, Plymouth University, Plymouth PL4 8AA, UKSmart Meters provide detailed energy consumption data and rich contextual information that can be utilized to assist electricity providers and consumers in understanding and managing energy use. The detection of human activity in residential households is a valuable extension for applications, such as home automation, demand side management, or non-intrusive load monitoring, but it usually requires the installation of dedicated sensors. In this paper, we propose and evaluate two new metrics, namely the sliding window entropy and the interval entropy, inspired by Shannon’s entropy in order to obtain information regarding human activity from smart meter readings. We emphasise on the application of the entropy and analyse the effect of input parameters, in order to lay the foundation for future work. We compare our method to other methods, including the Page–Hinkley test and geometric moving average, which have been used for occupancy detection on the same dataset by other authors. Our experimental results, using the power measurements of the publicly available ECO dataset, indicate that the accuracy and area under the curve of our method can keep up with other well-known statistical methods, stressing the practical relevance of our approach.https://www.mdpi.com/1099-4300/22/7/731energy demandentropy applicationsprivacy
collection DOAJ
language English
format Article
sources DOAJ
author Denis Hock
Martin Kappes
Bogdan Ghita
spellingShingle Denis Hock
Martin Kappes
Bogdan Ghita
Entropy-Based Metrics for Occupancy Detection Using Energy Demand
Entropy
energy demand
entropy applications
privacy
author_facet Denis Hock
Martin Kappes
Bogdan Ghita
author_sort Denis Hock
title Entropy-Based Metrics for Occupancy Detection Using Energy Demand
title_short Entropy-Based Metrics for Occupancy Detection Using Energy Demand
title_full Entropy-Based Metrics for Occupancy Detection Using Energy Demand
title_fullStr Entropy-Based Metrics for Occupancy Detection Using Energy Demand
title_full_unstemmed Entropy-Based Metrics for Occupancy Detection Using Energy Demand
title_sort entropy-based metrics for occupancy detection using energy demand
publisher MDPI AG
series Entropy
issn 1099-4300
publishDate 2020-06-01
description Smart Meters provide detailed energy consumption data and rich contextual information that can be utilized to assist electricity providers and consumers in understanding and managing energy use. The detection of human activity in residential households is a valuable extension for applications, such as home automation, demand side management, or non-intrusive load monitoring, but it usually requires the installation of dedicated sensors. In this paper, we propose and evaluate two new metrics, namely the sliding window entropy and the interval entropy, inspired by Shannon’s entropy in order to obtain information regarding human activity from smart meter readings. We emphasise on the application of the entropy and analyse the effect of input parameters, in order to lay the foundation for future work. We compare our method to other methods, including the Page–Hinkley test and geometric moving average, which have been used for occupancy detection on the same dataset by other authors. Our experimental results, using the power measurements of the publicly available ECO dataset, indicate that the accuracy and area under the curve of our method can keep up with other well-known statistical methods, stressing the practical relevance of our approach.
topic energy demand
entropy applications
privacy
url https://www.mdpi.com/1099-4300/22/7/731
work_keys_str_mv AT denishock entropybasedmetricsforoccupancydetectionusingenergydemand
AT martinkappes entropybasedmetricsforoccupancydetectionusingenergydemand
AT bogdanghita entropybasedmetricsforoccupancydetectionusingenergydemand
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