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Electrical Signal Source Separation Via Nonnegative Tensor Factorization Using On Site Measurements in a Smart Home

机译:使用智能家居中的现场测量通过非负张量分解实现电信号源分离

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Measuring the electrical consumption of individual appliances in a household has recently received renewed interest in the area of energy efficiency research and sustainable development. The unambiguous acquisition of information by a single monitoring point of the whole house's electrical signal is known as energy disaggregation or nonintrusive load monitoring. A novel way to look into the issue of energy disaggregation is to interpret it as a single-channel source separation problem. To this end, we analyze the performance of source modeling based on multiway arrays and the corresponding decomposition or tensor factorization. First, with the proviso that a tensor composed of the data for the several devices in the house is given, nonnegative tensor factorization is performed in order to extract the most relevant components. Second, the outcome is later embedded in the test step, where only the measured consumption over the whole home is available. Finally, the disaggregated data by the device is obtained by factorizing the associated matrix considering the learned models. In this paper, we compare this method with a recent approach based on sparse coding. The results are obtained using real-world data from household electrical consumption measurements. The analysis of the comparison results illustrates the relevance of the multiway array-based approach in terms of accurate disaggregation, as further endorsed by the statistical analysis performed.
机译:最近,测量家庭中单个电器的耗电量在能效研究和可持续发展领域引起了新的兴趣。通过整个房屋的电信号的单个监视点明确地获取信息被称为能量分解或非侵入式负载监视。研究能量分解问题的一种新颖方法是将其解释为单通道源分离问题。为此,我们分析了基于多路数组和相应分解或张量分解的源建模的性能。首先,前提是给出由房屋中多个设备的数据组成的张量,然后进行非负张量分解以提取最相关的分量。其次,结果将随后嵌入测试步骤中,在该步骤中,只有整个房屋的测量消耗量可用。最终,考虑学习模型,通过分解关联矩阵获得设备的分解数据。在本文中,我们将该方法与基于稀疏编码的最新方法进行了比较。这些结果是使用来自家庭用电量测量的真实数据获得的。对比较结果的分析说明了基于多路阵列的方法在准确分解方面的相关性,这一点已得到执行的统计分析的进一步认可。

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