Occupancy detection and prediction from electricity consumption data in smart homes: application to a Portuguese case-study

IF 2.1 Q2 CONSTRUCTION & BUILDING TECHNOLOGY Intelligent Buildings International Pub Date : 2021-10-08 DOI:10.1080/17508975.2021.1985418
D. Pereira, Rui Castro, P. Adão
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Abstract

ABSTRACT This research proposes an investigation on the problem of detecting and predicting occupancy by using solely readily available electricity consumption data, obtained from smart metres. The following research questions are defined: (1) Is it possible to predict occupancy by using solely electricity consumption data?; (2) Is it possible to use a single classification model to monitor occupancy in multiple households? The findings show that an occupancy detection accuracy of up to 92% can be achieved by using solely electricity consumption data. The problem of generalizing the classification model, i.e. using a single classification model to monitor occupancy in multiple households, is also addressed. It is found that an occupancy detection accuracy of up to 83% is achievable in this case. Regarding occupancy prediction, occupancy in multiple households with an accuracy of up to 75% is obtained, by using solely electricity consumption data. For both occupancy monitoring and prediction, it is found that households with a low level of occupancy can benefit more from these systems.
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智能家居用电数据的入住率检测和预测:在葡萄牙案例研究中的应用
摘要:本研究提出了一个调查的问题,检测和预测占用仅使用现成的电力消耗数据,从智能电表获得。定义了以下研究问题:(1)是否可以仅用用电量数据来预测入住率?(2)是否可以使用单一分类模型来监测多个住户的入住率?研究结果表明,仅使用用电量数据就可以实现高达92%的占用率检测准确率。本文还讨论了推广分类模型的问题,即使用单一分类模型来监测多个家庭的占用情况。研究发现,在这种情况下,占用率检测准确率可达83%。在入住率预测方面,仅使用用电量数据就可以获得多户入住率,准确率高达75%。对于入住率监测和预测,发现入住率低的家庭从这些系统中获益更多。
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来源期刊
Intelligent Buildings International
Intelligent Buildings International CONSTRUCTION & BUILDING TECHNOLOGY-
CiteScore
4.60
自引率
4.30%
发文量
8
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