利用动态占用模式改进智能建筑的存在检测

C. Papatsimpa, J. Linnartz
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引用次数: 4

摘要

存在检测用于基于占用的控制,以动态调整智能建筑中的能源相关设备。然而,实际应用通常受到传感器高不可靠性的影响。在我们之前的工作中,我们提出了一种隐马尔可夫模型(HMM),用于融合来自多个源的信息,以更好地估计用户状态(存在/不存在)。我们现在扩展了这个模型,并根据一天中的时间利用占用概率的时间依赖性信息。人们通常有一个典型的工作时间表,也就是说,办公室里的人每天几乎在同一时间到达和离开。在这种方法中,我们使用我们对办公室占用概况的先验知识来开发一个时间相关(非同质)HMM。从我们的实验来看,该算法也显示出改进的性能,在现实世界的测试设置中,用户在场和传感器误差可能不完全符合我们的理想模型假设。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Dynamic Occupancy Patterns for Improved Presence Detection in Intelligent Buildings
Presence detection is used in occupancy-based control to dynamically adjust energy-related appliances in smart buildings. Yet, practical applications typically suffer from high sensor unreliability. In our previous work, we suggested a Hidden Markov Model (HMM) for fusing information from multiple sources to better estimate the user state (presence/absence). We now extend this model and exploit information on the time-dependency of the probability of occupancy according to the time of the day. People generally have a typical working schedule, that is, occupants in an office arrive and leave every day at almost the same time. In this approach, we use our prior knowledge on office occupancy profiles to develop a time-dependent (in-homogeneous) HMM. Judging from our experiments, the algorithm shows improved performance, also, in a real-world test set-up where user presence and sensors error may not exactly follow our idealized model assumptions.
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