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One-dimensional fully decoupled networks for fault diagnosis of planetary gearboxes

机译:一维全解耦网络,用于行星齿轮箱故障诊断

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Planetary gearboxes are of great importance in extensive industrial fields, and various deep learning methods have been applied for fault diagnosis of planetary gearboxes. But those methods may incorrectly classify due to coupling of the norm and the angle of features, which are corresponding to intra-class variation and semantic difference respectively. In this paper, an improved decoupled network, called one-dimensional fully decoupled network (1D-FDCNet), was proposed to diagnose faults of planetary gearboxes by decoupling inner-class variance and semantic difference with decoupled operators. First, one-dimensional vibration signals of the planetary gearbox were converted into frequency spectrums by fast Fourier transform. And then, the one-dimensional decoupled network was constructed to extract features automatically from frequency spectrums. Finally, decoupled operators continued to be used in fully connected layers for strengthening semantic discrimination ability of the classifier. Due to the application of the decoupled operators, the classification performance of the proposed method was superior by comparing with the backpropagation neural network, the one-dimensional convolutional neural network and the normal decoupled network according to the trail results. The results of the experiment and the engineering application confirmed that the proposed method was more effective than other methods.
机译:行星齿轮箱在广泛的工业领域中非常重要,并且各种深度学习方法已被应用于行星齿轮箱的故障诊断。但是,由于规范和特征角度的耦合,这些方法可能会错误地进行分类,这分别对应于类内变异和语义差异。本文提出了一种改进的解耦网络,称为一维完全解耦网络(1D-FDCNet),它通过将内部类方差和语义差异与解耦算子解耦来诊断行星齿轮箱的故障。首先,通过快速傅立叶变换将行星齿轮箱的一维振动信号转换为频谱。然后,构建一维解耦网络以自动从频谱中提取特征。最后,去耦运算符继续用于全连接层,以增强分类器的语义区分能力。由于解耦算子的应用,根据跟踪结果,与反向传播神经网络,一维卷积神经网络和法向解耦网络相比,该方法的分类性能更好。实验结果和工程应用证明,该方法比其他方法更为有效。

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