用于室内占用检测的低成本粗空气颗粒物传感

Kevin Weekly, D. Rim, Lin Zhang, A. Bayen, W. Nazaroff, C. Spanos
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引用次数: 3

摘要

在节能智能建筑中,占用检测和定位是一个越来越受关注的领域,因为照明和通风等服务可以针对单个占用者,而不是整个房间或楼层。此外,越来越多的环境传感器被添加到智能建筑中,以确保建筑提供的服务质量。空气净化器等消费设备对颗粒物(PM)传感器的需求就是一个例子,制造业的进步使传感器比实验室设备便宜得多。除了其最初的预期用途,空气质量,他们也可以用于占用监测。本文提出的工作建议使用低成本的(<;8美元)的PM传感器,通过感知粗颗粒(≥2.5 μm)的再悬浮来推断走廊内居住者的局部运动。为了从廉价的传感器中获得有意义的值,我们对它们进行了实验室级仪器校准。校正后,我们在一个经常使用的办公区的人行走廊内进行了7.8小时的粗颗粒物测量实验。与相机获得的地面真实数据相比,我们表明PM传感器读数与人类活动相关,从而使统计方法能够从另一个中推断出一个。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Low-cost coarse airborne particulate matter sensing for indoor occupancy detection
In the energy-efficient smart building, occupancy detection and localization is an area of increasing interest, as services, such as lighting and ventilation, could be targeted towards individual occupants instead of an entire room or floor. Also, an increasing quantity and diversity of environmental sensors are being added to smart buildings to ensure the quality of services provided by the building. The need for particulate matter (PM) sensors in consumer devices such as air purifiers, is an example where manufacturing advances have made the sensors much less expensive than laboratory equipment. Beyond their original intended use, air quality, they can also be used for occupancy monitoring. The work presented in this article proposes to use a low-cost (<; 8 USD) PM sensor to infer the local movement of occupants in a corridor by sensing the resuspension of coarse (≥ 2.5 μm) particles. To obtain meaningful values from the inexpensive sensors, we have calibrated them against a laboratory-grade instrument. After calibration, we conducted a 7.8 hour experiment measuring coarse PM within a pedestrian corridor of a heavily-used office area. Comparing against ground truth data obtained by a camera, we show that the PM sensor readings are correlated with human activity, thus enabling statistical methods to infer one from the other.
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