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Building an occupancy model from sensor networks in office environments

机译:通过办公环境中的传感器网络构建占用模型

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The work presented here aims to answer this question: Using just binary occupancy sensors is it possible to build a behaviour occupancy model over long-term logged data? Sensor measurements are grouped to form artificial words (activities) and documents (set of activities). The goal is to infer the latent topics which are assumed to be the common routines from the observed data. An unsupervised probabilistic model, namely the Latent Dirichlet Allocation (LDA), is applied to automatically discover the latent topics (routines) in the data. Experimental results using real logged data of 24 weeks from an office building, with different number of topics, are shown. The results show the power of the LDA model in extracting relevant patterns from sensor network data.
机译:这里提出的工作旨在回答这个问题:仅使用二进制占用传感器,是否有可能在长期记录的数据上建立行为占用模型?传感器测量值被分组以形成人工词(活动)和文档(活动集)。目的是从观察到的数据中推断出潜在的主题,这些主题被认为是常见的例程。使用无监督概率模型,即潜在狄利克雷分配(LDA),可以自动发现数据中的潜在主题(例程)。显示了使用24天内来自不同主题的办公楼的真实记录数据得出的实验结果。结果表明,LDA模型在从传感器网络数据中提取相关模式方面具有强大的功能。

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