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Occupancy detection of residential buildings using smart meter data: A large-scale study

机译:使用智能电表数据进行住宅建筑物的占用检测:大规模研究

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Advanced Metering Infrastructures (AMIs) are installed to gather localized and frequently acquired energy consumption data. Despite many potential benefits, the installation of such meters has resulted in growing privacy concerns amongst the public. By analyzing the electricity consumption behavior of more than 5000 households over an 18-month period and deploying a wide array of machine learning methods, this paper examines whether high-frequency meter data are sufficient to predict the home-occupancy status of households not only in the present but also in the future. The authors believe that this is the first study at such a scale on this issue. The study proposes a genetic programming approach for feature engineering when training the models. The results reveal a high predictive power for smart meter data in establishing the present and future occupancy status of households. Also, the analysis of the demographic data suggests that households known to be least concerned with privacy are the ones who are more vulnerable to smart meter privacy implications. (C) 2018 Elsevier B.V. All rights reserved.
机译:安装了高级计量基础架构(AMI),以收集本地化的和经常获取的能耗数据。尽管有许多潜在的好处,但是安装这种仪表已经引起了公众日益关注的隐私问题。通过分析18个月内超过5000户家庭的用电量行为并采用多种机器学习方法,本文研究了高频电表数据是否足以预测家庭的住户状况,而不仅仅是现在和将来。作者认为,这是对这一问题进行如此大规模的首次研究。该研究提出了一种在训练模型时用于特征工程的遗传编程方法。结果表明,智能电表数据在确定家庭当前和将来的居住状态方面具有很高的预测能力。同样,对人口数据的分析表明,已知最不关注隐私的家庭是更容易受到智能电表隐私影响的家庭。 (C)2018 Elsevier B.V.保留所有权利。

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