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A Statistical Approach for Unsupervised Occupancy Detection and Estimation in Smart Buildings

机译:智能建筑中无监督占用检测和估算的统计方法

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The energy usage of a building depends significantly on the number of occupants inside. Therefore, occupancy detection and estimation are crucial for efficient energy consumption planning. These two tasks have been generally tackled using supervised machine learning techniques. Unlike these previous efforts, the aforementioned tasks are carried out, in this paper, automatically in unsupervised settings using a statistical framework based on finite mixture models. The main idea is based on modeling sensor features as a weighted sum of probability density functions. Unlike previous approaches in mixture modeling literatures that have generally considered Gaussian distributions, we consider scaled Dirichlet distribution that has shown recently great flexibility and efficiency in various challenging applications. In particular, we propose a novel algorithm to learn finite scaled Dirichlet mixture models via an entropy-based variational Bayesian inference approach. The results of the proposed framework are analyzed taking into account comparable methods in order to validate its efficiency.
机译:建筑物的能源用法取决于内部乘员的数量。因此,占用检测和估计对于有效能耗规划至关重要。这两项任务通常使用监督机器学习技术解决。与这些以前的努力不同,在本文中,使用基于有限混合模型的统计框架自动在无监督的设置中自动执行上述任务。主要思想基于对概率密度函数的加权之和建模传感器特征。与通常考虑高斯分布的混合建模文献中的先前方法不同,我们考虑缩放的Dirichlet分布,这些分布在各种具有挑战性应用中显示出最近的灵活性和效率。特别地,我们提出了一种新颖的算法来通过基于熵的变分贝叶斯推理方法学习有限缩放的Dirichlet混合模型。考虑到可比方法,分析了拟议框架的结果,以验证其效率。

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