Occupancy estimation for smart buildings by an auto-regressive hidden Markov model

Bing Ai, Zhaoyan Fan, R. Gao
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引用次数: 64

Abstract

One of the primary energy consumers in buildings are the Heating, Ventilation, and Air-Conditioning (HVAC) systems, which usually operate on a fixed schedule, i.e., running from early morning until late evening during the weekdays. This fixed operation schedule does not take the dynamics of occupancy level in the building into consideration, therefore may lead to waste of energy. An estimate of the number of occupants in the building with time can contribute to improving the control policy of the building's HVAC system by reducing energy consumption. In this paper, the auto-regressive hidden Markov model (ARHMM), is investigated to estimate the number of occupants in a research laboratory in a building using a wireless sensor network deployed. The network is composed of stand-alone sensing nodes with wireless data transmission capability, a base station that collects data from the sensing nodes, and a server to analyze the data from the base station. Experimental results and numerical simulation demonstrate that the ARHMM is more effective in estimating the number of occupants in the laboratory than the HMM algorithm, especially when the occupancy level fluctuates frequently.
基于自回归隐马尔可夫模型的智能建筑占用估计
建筑物的主要能源消耗者之一是供暖、通风和空调(HVAC)系统,这些系统通常按固定的时间表运行,即在工作日从清晨运行到深夜。这种固定的运行时间表并没有考虑到建筑物内占用率的动态变化,因此可能导致能源的浪费。随着时间的推移,对建筑物中居住者数量的估计可以通过减少能源消耗来改善建筑物HVAC系统的控制政策。本文研究了自回归隐马尔可夫模型(ARHMM),利用部署的无线传感器网络来估计研究实验室建筑物的居住者人数。该网络由具有无线数据传输能力的独立传感节点、从传感节点收集数据的基站和分析来自基站的数据的服务器组成。实验和数值模拟结果表明,特别是在占用率波动频繁的情况下,ARHMM算法比HMM算法更有效地估计了实验室的占用人数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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