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Real-time building occupancy sensing using neural-network based sensor network

机译:使用基于神经网络的传感器网络实时建筑物占用感测

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摘要

Current occupancy sensing technologies may limit the effectiveness of buildings controls, due to a number of issues ranging from unreliable data, sensor drift, privacy concerns, and insufficient commissioning. More effective control of Heating, Ventilation and Air-conditioning (HVAC) systems may be possible using a smart and adaptive sensing network for occupancy detection, capable of turning off services out of hours, and not over-ventilating, thus enabling energy savings, and not under-ventilating during occupied periods, giving comfort and health benefits. A low-cost and non-intrusive sensor network was deployed in an open-plan office, combining information such as sound level, case temperature, carbon-dioxide (Co2) and motion, to estimate occupancy numbers, while an infrared camera was implemented to establish ground truth occupancy levels. Symmetrical uncertainty analysis was used for feature selection, and a genetic based search to evaluate an optimal sensor combination. Selected multi-sensory features were fused using a neural network. From initial results, estimation accuracy reaching up to 75% for occupied periods was achieved. The proposed system offers promising opportunities for improved comfort control and energy efficiency in buildings.
机译:由于数据不可靠,传感器漂移,隐私问题和调试不足等诸多问题,当前的占用感测技术可能会限制建筑物控制的有效性。使用智能的自适应感测网络进行占用检测,可以更有效地控制供暖,通风和空调(HVAC)系统,该网络能够关闭服务时间,并且不会过度通风,从而节省了能源,并且在居住期间不要通风不足,从而带来舒适和健康的好处。在开放式办公室中部署了一个低成本且非侵入式的传感器网络,该网络结合了声音水平,外壳温度,二氧化碳(Co 2 )和运动等信息,以估算占用人数,同时实施了红外摄像头来确定地面实况占用水平。对称不确定性分析用于特征选择,基于遗传的搜索用于评估最佳传感器组合。使用神经网络融合选定的多感官特征。从最初的结果来看,已达到占用时间的估计精度高达75%。拟议的系统为改善建筑物的舒适度控制和能源效率提供了有希望的机会。

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