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A Machine-Learning Based Nonintrusive Smart Home Appliance Status Recognition

机译:基于机器学习的非流体智能家用电器状态识别

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In a smart home, the nonintrusive load monitoring recognition scheme normally achieves high appliance recognition performance in the case where the appliance signals have widely varying power levels and signature characteristics. However, it becomes more difficult to recognize appliances with equal or very close power specifications, often with almost identical signature characteristics. In literature, complex methods based on transient event detection and multiple classifiers that operate on different hand crafted features of the signal have been proposed to tackle this issue. In this paper, we propose a deep learning approach that dispenses with the complex transient event detection and hand crafting of signal features to provide high performance recognition of close tolerance appliances. The appliance classification is premised on the deep multilayer perceptron having three appliance signal parameters as input to increase the number of trainable samples and hence accuracy. In the case where we have limited data, we implement a transfer learning-based appliance classification strategy. With the view of obtaining an appropriate high performing disaggregation deep learning network for the said problem, we explore individually three deep learning disaggregation algorithms based on the multiple parallel structure convolutional neural networks, the recurrent neural network with parallel dense layers for a shared input, and the hybrid convolutional recurrent neural network. We disaggregate a total of three signal parameters per appliance in each case. To evaluate the performance of the proposed method, some simulations and comparisons have been carried out, and the results show that the proposed method can achieve promising performance.
机译:在智能家中,非识别负载监视识别方案通常在设备信号具有广泛变化的功率水平和签名特性的情况下实现高电平的设备识别性能。然而,识别具有相同或非常密切的功率规格的设备变得更加困难,通常具有几乎相同的签名特性。在文献中,已经提出了基于瞬态事件检测的复杂方法和在信号的不同手工制作特征上运行的多个分类器来解决这个问题。在本文中,我们提出了一种深入的学习方法,该方法可利用复杂的瞬态事件检测和手动制备信号特征,以提供高性能识别紧密容忍设备。设备分类位于具有三个器具信号参数的深层多层的Perceptron上,作为输入,以增加培训样本的数量并因此的精度。在我们有限的数据的情况下,我们实施基于转移的学习的家电分类策略。随着获得所述问题的适当高性能的深度学习网络的观点,我们基于多个并行结构卷积神经网络的单独三个深度学习分类算法,其具有与共享输入的并联致密层的经常性神经网络,以及混合卷积经常性神经网络。我们在每种情况下分解了每个设备的三个信号参数。为了评估所提出的方法的性能,已经进行了一些模拟和比较,结果表明,该方法可以实现有前途的性能。

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