使用BLE信标和功率表的办公室多占用检测

A. R. Pratama, A. Lazovik, Marco Aiello
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引用次数: 5

摘要

室内占用提供了人类在封闭空间的占用信息,最明显的是办公和住宅建筑。这些信息有助于减少不必要的能源使用,例如在未占用空间的消耗或由于不必要的活跃设备而造成的能源浪费。我们提出了一个使用简单的办公室传感器的办公室占用检测的实证实验。我们选择通用的电表和手机。首先,我们将手机接收到的信标信号分类为房间位置。假设工作空间映射可用,以方便在房间位置和用户工作空间的占用状态之间进行映射。其次,我们利用共享办公室中与乘员相关的设备(即监视器)的总用电量推断出个人的占用状态。与为每个设备或用户部署一个功率计相比,后一种解决方案有助于降低成本和降低入侵程度。我们在一个工作环境中进行了实验,包括两间共享办公室、一间个人办公室和一个由五名志愿者组成的社交角落。根据获取的数据,实现了基于机器学习、优化和概率方法的三种技术,并对其性能进行了比较。结果表明,基于信标的定位和占用对5名志愿者中的3名效果最好,达到95% F-measure。进一步的研究表明,当使用决策树分类时,基于总功耗的占用推断对四名志愿者表现良好,达到90%以上的F-measure。我们在两种模式融合上的努力为所有五名志愿者提供了积极的结果,f值从92%到99%不等。
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Office Multi-Occupancy Detection using BLE Beacons and Power Meters
Indoor occupancy provides information about human occupation in the closed space, most notably, office and residential buildings. This information is useful in dwindling unnecessary energy usage, such as consumption in unoccupied spaces or energy-wasting due to unnecessarily active appliances. We present an empirical experiment on office occupancy detection using simple office sensors. We choose generic power meters and mobile phones. First, we classify beacon signals received by mobile phones into a room location. A workspace map is assumed to be available to facilitate the mapping between room locations and the occupancy state of users' workspace. Second, we infer the individual occupancy state utilizing the aggregated electricity consumption of occupant-related devices (i.e., monitors) in shared offices. The later solution helps to keep costs and intrusiveness level low compared to deploying a power meter for each device or user. We experiment in an work environment with two shared offices, a personal office, and a social corner involving five volunteers. Given the acquired data, three techniques based on machine learning, optimization, and probabilistic approach are implemented and compared to evaluate their performance. The results indicate that localization and occupancy based on beaconing works best for three of the five volunteers, reaching 95% F-measure. Further findings shows that occupancy inference based on the aggregated power consumption performs well for the four volunteers when using Decision Tree classification, reaching more than 90% F-measure. Our effort on the fusion of two modalities gives a positive result for all five volunteers, ranging from 92% to 99% F-measure.
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