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Building energy and comfort management through occupant behaviour pattern detection based on a large-scale environmental sensor network

机译:通过基于大规模环境传感器网络的乘员行为模式检测来构建建筑物的能源和舒适度

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Detection of occupant presence has been used extensively in built environments for applications such as demand-controlled ventilation and security. However, the ability to discern the actual number of people in a room is beyond the scope of most current sensing techniques. To address this issue, a complex environmental sensor network is deployed in the Robert L. Preger Intelligent Workplace (IW) at Carnegie Mellon University. The results indicate that there are significant correlations between measured environmental conditions and occupancy status. It is shown that an average of 83% accuracy on the occupancy number detection was achieved by Gaussian Mixture Model based Hidden Markov Models during testing periods. To illustrate the consequent energy impact based on the occupant behaviour detection (i.e. number and duration of occupancy) in the space, an EnergyPlus model of the IW with an assumed standard variable air volume (VAV) system is created. Simulations are conducted to compare the energy consumption consequences between a prescribed occupancy schedule according to the ASHRAE 90.1 base case with the predicted occupancy behaviour. The results show that energy saving of 18.5% can be achieved in the IW while maintaining indoor thermal comfort.
机译:在建筑环境中,对乘员存在的检测已广泛用于需求控制的通风和安全性等应用。但是,识别房间中实际人数的能力超出了大多数当前传感技术的范围。为了解决此问题,卡内基梅隆大学的Robert L. Preger智能工作场所(IW)中部署了一个复杂的环境传感器网络。结果表明,测得的环境条件与占用状态之间存在显着的相关性。结果表明,在测试期间,基于高斯混合模型的隐马尔可夫模型可实现平均83%的占用率检测。为了说明基于空间中乘员行为检测(即乘员的数量和持续时间)的结果能源影响,创建了具有假定标准可变风量(VAV)系统的IW的EnergyPlus模型。进行了模拟,以比较根据ASHRAE 90.1基本案例的预定使用时间表与预计的使用行为之间的能耗后果。结果表明,在保持室内热舒适性的同时,IW可以实现节能18.5%。

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