Fault Diagnosis of Rolling Bearing with Imbalanced Small Sample Scenarios

Yang Guan, Zong Meng, De-gang Sun
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Abstract

Rolling bearing is one of the main components of rotating machinery, timely and accurate fault diagnosis plays an important role in the reliability and safety of modern industrial systems. Under practical working conditions, normal data is abundant and the fault data is rare, the recognition rate of the minority class is low when the neural network is used to deal with these imbalanced datasets. Regarding the above-mentioned problems, a deep convolution fault diagnosis model based on ensemble learning voting method is proposed in this paper. First of all, the one-dimensional vibration signal was segmented through a sliding window for data enhancement. In the second place, the characteristics of the signals were extracted using deep convolutional neural networks. Finally, classification was carried out through the voting method of ensemble learning to realize fault diagnosis. The fault diagnosis models were tested on two different datasets and different imbalance ratios, and the experimental results show that the proposed method can be well applied in imbalanced datasets, which has higher fault recognition accuracy and faster operation.
小样本不平衡滚动轴承故障诊断
滚动轴承是旋转机械的主要部件之一,及时准确的故障诊断对现代工业系统的可靠性和安全性起着重要的作用。在实际工作条件下,正常数据较多,故障数据较少,使用神经网络处理这些不平衡数据集时,对少数类的识别率较低。针对上述问题,本文提出了一种基于集成学习投票法的深度卷积故障诊断模型。首先,通过滑动窗口对一维振动信号进行分割,增强数据;其次,利用深度卷积神经网络提取信号的特征。最后,通过集成学习的投票方法进行分类,实现故障诊断。在两种不同的数据集和不同的不平衡率下对故障诊断模型进行了测试,实验结果表明,该方法可以很好地应用于不平衡数据集,具有更高的故障识别精度和更快的运行速度。
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