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Intelligent fault diagnosis method of planetary gearboxes based on convolution neural network and discrete wavelet transform

机译:基于卷积神经网络和离散小波变换的行星齿轮箱智能故障诊断方法

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Considering the planetary gearbox vibration signals show highly non-stationary and non-linear behavior because of wind turbines (WTs) often working under time-varying running conditions, we propose an effective and reliable method based on convolution neural network (CNN) and discrete wavelet transformation (DWT) to identify the fault conditions of planetary gearboxes. Firstly, the discrete wavelet transformation is used with the goal of presenting more salient and comprehensive time-frequency distributed representation. Secondly, the deep hierarchical structure of CNN constructed by the alternating convolution layers and subsample layers is trained using a forward transmitting rule of greedy training layer by layer and translates the low-level features of input to the high-level features in order to identify the internal characteristic. Finally, a top classifier Softmax is added at uppermost layer of CNN and the backpropagation process is conducted to fine-tune the parameters of CNN, establishing the mapping relation among the feature space and the fault space. Thus, feature extraction process and fault recognition are incorporated into a general-purpose learning procedure. The experimental results of the fault diagnosis for the planetary gearbox demonstrated the effectiveness and feasibility of the proposed method. (C) 2018 Elsevier B.V. All rights reserved.
机译:考虑到行星齿轮箱振动信号显示出高度静止和非线性行为,因为风力涡轮机(WTS)经常在时变运行条件下工作,我们提出了一种基于卷积神经网络(CNN)和离散小波的有效可靠的方法转型(DWT)识别行星齿轮箱的故障条件。首先,离散小波变换用于呈现更加突出和综合时频分布式表示的目的。其次,由交替卷积层和子样层构成的CNN的深层次结构使用层的前向发送规则进行训练,并将输入的低电平特征转换为高级功能,以便识别内部特征。最后,在CNN的最上层添加顶部分类器SoftMax,并进行背部衰减过程以微调CNN的参数,建立特征空间和故障空间之间的映射关系。因此,特征提取过程和故障识别被结合到通用学习过程中。行星齿轮箱故障诊断的实验结果证明了该方法的有效性和可行性。 (c)2018 Elsevier B.v.保留所有权利。

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