Intelligent CNN-based Fault Diagnosis of Rotating Machinery with Small Fault Samples

Guoqiang Li, Chong Chen, Zhenguo Song, Jun Wu, C. Deng, Zuoyi Chen
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Abstract

Up to now, convolution neural network (CNN) has been widely applied in fault diagnosis of rotating machinery. The CNN-based diagnostic methods often with the help of the fault data to implement the optimization. However, in real industrial applications, it is difficult and costly to obtain the fault data. In this paper, a ResNet-based diagnostic method combined a designed data transformation combination is proposed to achieve the fault diagnosis under small fault samples. Specifically, several data transformation of image are selected to deal with the small samples, where the parameter of the transformation is determined by the mutual information between the inputted sample and the corresponding transformed sample. Meanwhile, these obtained transformations are used as the input layer of the ResNet. Then, a fault diagnosis model is established by the constructed ResNet, and which is trained only by using small samples. Noting that the introduced data transformation is randomly used for the training samples to increase the complexity of the inputted samples in the training process for alleviating the overfitting risk. The bearing fault dataset is used to evaluated the effectiveness of the proposed method. From the experimental result, it is found the proposed has the capability to implement the effective fault diagnosis under small samples, and achieve a higher diagnostic performance than other existing methods.
基于cnn的旋转机械小故障样本智能诊断
卷积神经网络(CNN)在旋转机械故障诊断中得到了广泛的应用。基于cnn的诊断方法往往借助于故障数据来实现优化。然而,在实际工业应用中,故障数据的获取困难且成本高。本文提出了一种基于resnet的故障诊断方法,结合设计的数据变换组合,实现小故障样本下的故障诊断。具体来说,对小样本图像进行多次数据变换,变换参数由输入样本与相应变换样本之间的互信息决定。同时,将得到的变换作为ResNet的输入层。然后,利用构造的ResNet建立故障诊断模型,该模型只需要使用小样本进行训练。注意对训练样本随机使用引入的数据变换,以增加训练过程中输入样本的复杂性,减轻过拟合风险。利用轴承故障数据集对所提方法的有效性进行了评价。实验结果表明,该方法能够在小样本条件下实现有效的故障诊断,并取得了比现有方法更高的诊断性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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