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Modeling and predicting occupancy profile in office space with a Wi-Fi probe-based Dynamic Markov Time-Window Inference approach

机译:使用基于Wi-Fi探针的动态马尔可夫时间窗推断方法对办公室空间中的占用情况进行建模和预测

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摘要

Demand-based HVAC control methods in buildings show great energy saving potential when accurate occupancy information is available. Appropriate service based on actual occupant demand could prevent unnecessary energy waste caused by system overcooling or overheating. Therefore, various occupancy detection approaches had attracted increasing attentions in recent years. Among them, Wi-Fi based detection approaches have been thoroughly discussed since Wi-Fi access points (APs) and wireless devices are ubiquitously used in modern buildings. Compared with traditional request and response based occupancy assessment, the newly developed Wi-Fi probe technology can actively scan Wi-Fi enabled devices even if they are not connected to the network. However, Wi-Fi probe detection still subjects to significant errors due to unstable signal and unpredictable occupant behavior. This study stresses the time-series and stochastic characteristics of detected signals and proposes a novel Dynamic Markov Time-Window Inference (DMTWI) model to predict reliable occupancy. The conventional Auto Regressive Moving Average (ARMA) model and Support Vector Regression (SVR) model are also examined and compared with the proposed approach. Also, an on-site experiment was conducted to validate the proposed model, and the results reveal that the prediction accuracy is over 80% when x-accuracy tolerance is less than 4 for weekdays, 3 for holidays, and 2 for weekend days. (C) 2017 Elsevier Ltd. All rights reserved.
机译:当可获得准确的占用信息时,建筑物中基于需求的HVAC控制方法将显示出巨大的节能潜力。根据实际乘员需求提供适当的服务可以防止由于系统过冷或过热而造成不必要的能源浪费。因此,近年来,各种占用检测方法引起了越来越多的关注。其中,由于Wi-Fi接入点(AP)和无线设备已广泛用于现代建筑中,因此已经彻底讨论了基于Wi-Fi的检测方法。与传统的基于请求和响应的占用率评估相比,新开发的Wi-Fi探针技术即使未连接到网络,也可以主动扫描启用Wi-Fi的设备。但是,由于信号不稳定和乘员行为无法预测,Wi-Fi探针检测仍然会遭受重大错误。这项研究强调了检测到的信号的时间序列和随机特性,并提出了一种新颖的动态马尔可夫时间窗推断(DMTWI)模型来预测可靠的占用率。还检查了常规的自回归移动平均(ARMA)模型和支持向量回归(SVR)模型,并将其与提出的方法进行了比较。此外,进行了现场实验以验证所提出的模型,结果表明,当x精度公差在工作日小于4,在假日为3,在周末为2时,预测准确性超过80%。 (C)2017 Elsevier Ltd.保留所有权利。

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