通过检测建筑物各区域的进出事件来估计人员分布

Hengtao Wang, Q. Jia, Yu Lei, Qianchuan Zhao, X. Guan
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引用次数: 10

摘要

为了建筑的节能和安全,各个区域的居住人数信息是非常重要的。本文通过对建筑物进出事件的检测,对建筑物各区域的入住人数进行了估计。本文首先在马尔可夫链假设下对问题进行表述,在对模型进行理论分析的基础上,提出了一种可分布实现的乘员分布估计方法。该方法通过实时检测各区域的进出事件来进行人员统计,并利用各区域内人员进出事件的先验信息来减小估计误差,提高了建筑物内人员分布估计的准确性。包括仿真和现场测试在内的数值实验验证了该方法的有效性。
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Estimation of occupant distribution by detecting the entrance and leaving events of zones in building
For energy saving and security in building, the information of occupant number of each zone is very important. This paper works on the estimation of the occupant number of zones in building by detecting the entrance and leaving events. In this paper, we first formulate the problem under an assumption of Markov Chain, and basing on the theoretical analysis of the model, we propose a method of occupant distribution estimation, which can be implemented distributively. The method counts occupant by detecting the entrance and leaving events of zones in real time and uses the prior information of the occupant's entrance and leaving events in each zone to reduce the estimation error, which increases the accuracy of the estimation of occupant distribution in building. Numerical experiments including simulation and field test demonstrate the performance of the method.
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