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A Novel Dynamic Hidden Semi-Markov Model (D-HSMM) for Occupancy Pattern Detection from Sensor Data Stream

机译:一种新型动态隐藏半标率模型(D-HSMM),用于传感器数据流的占用模式检测

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Occupant presence and behaviour have a large impact on building energy performance. With the availability of low cost and affordable sensors, accurate occupancy detection by combining sensor stream data with machine learning approaches becomes possible. In this paper, we propose a novel dynamical hidden semi-Markov model (D-HSMM) which can accurately detect occupancy pattern from sensor data stream in real time. Our approach extends traditional hidden Markov (HMM) and hidden semi-Markov models (HSMM). The novelty of the proposed approach consists in 1) a new dynamic duration modelling way in which the duration is dynamically changing, instead of using fixed duration in traditional HSMM based models; 2) a new approach to state prediction (i.e. occupant presence or absence in this case) based on a weighted function with partially available observations instead of using the whole set of observations. In order to evaluate the performance of our model, we have compared our results with traditional HMM and HSMM approaches. The experimental evaluation shows that our D-HSMM model outperforms the conventional HMM and HSMM-based approaches with very high accuracy.
机译:乘员的存在和行为对建筑能源性能产生了很大影响。随着低成本和经济实惠的传感器的可用性,通过将传感器流数据与机器学习方法相结合,可以进行准确的占用检测。在本文中,我们提出了一种新型动态隐式半马尔可夫模型(D-HSMM),其可以实时地精确地检测来自传感器数据流的占用模式。我们的方法延伸了传统的隐马尔可夫(HMM)和隐藏的半马尔可夫模型(HSMM)。该方法的新颖性提出了1)一种新的动态持续时间建模方式,其中持续时间是动态变化的,而不是在基于传统的HSMM模型中使用固定持续时间; 2)基于具有部分可用观察的加权函数而不是使用整个观察的加权函数来实现新的状态预测(即,在这种情况下的占用或缺席)的新方法。为了评估我们模型的表现,我们将结果与传统的嗯和HMM方法进行了比较。实验评估表明,我们的D-HSMM模型以非常高的精度优异地优于传统的HMM和HMM的方法。

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