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Opportunistic occupancy-count estimation using sensor fusion: A case study

机译:使用传感器融合的机会主义占用计数估计:一个案例研究

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摘要

Estimation of occupancy counts in commercial and institutional buildings enables enhanced energy-use management and workspace allocation. This paper presents the analysis of cost-effective, opportunistic data streams from an academic office building to develop occupancy-count estimations for HVAC control purposes. Implicit occupancy sensing via sensor fusion is conducted using available data from Wi-Fi access points, CO2 sensors, PIR motion detectors, and plug and light electricity load meters, with over 200 h of concurrent ground truth occupancy counts. Multiple linear regression and artificial neural network model formalisms are employed to blend these individual data streams in an exhaustive number of combinations. The findings suggest that multiple linear regression models are the superior model formalism when model transferability between floors is of high value in the case study building. Wi-Fi enabled device counts are shown to have high utility for occupancy-count estimations with a mean R-2 of 80.1-83.0% compared to ground truth counts during occupied hours. Aggregated electrical load data are shown to be of higher utility than separately submetered plug and lighting load data.
机译:商业和机构建筑物的入住计数估计能够提高能源使用管理和工作空间分配。本文提出了从学术署办公楼的成本效益,机会数据流分析,以开发HVAC控制目的的占用计数估计。通过传感器融合的隐式占用感应使用来自Wi-Fi接入点,CO2传感器,PIR运动探测器和插头和轻电量的可用数据进行,并具有超过200小时的同时的地面真相占用计数。使用多元线性回归和人工神经网络模型形式主义将这些单独的数据流混合在详尽的组合中。调查结果表明,当楼层之间的模型可转换性在案例研究建筑中,多元线性回归模型是卓越的模型形式主义。与占用时间内的地面真理计数相比,Wi-Fi使能的设备计数显示有占用计数估计的占用计数估计的占用计数估计值为80.1-83.0%。聚合的电负载数据显示出比单独提交的插头和照明负载数据更高的实用程序。

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