Study on fault diagnosis of ultra-low-speed rolling bearings based on full vector sound spectrogram

Yuanling Chen, Yaguang Jin, Qiang Wan, Yuan Liu
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Abstract

By exploring the mapping relationship between the multi-directional data and fault characteristics of bearings, a time-frequency analysis method for considering the multi-directional acoustic emission (AE) data of bearings is proposed. Firstly, using the full vector spectrum (FVS) theory, the full vector sound spectrogram of the dual-channel AE signal of a bearing is extracted to enhance the representation of the fault state using time-frequency characteristics. Then, the obtained full vector sound spectrogram is transformed into a specific size as the input feature map and a convolutional neural network (CNN) classifier model is established. Next, the Softmax classifier is used to classify the bearing faults in order to realise the intelligent fault diagnosis of an ultra-low-speed rolling bearing. The comparison of the different models shows that the average recognition accuracy using the full vector sound spectrogram CNN model can reach 95.61%, which is better than the other three methods. The feature extraction using the full vector sound spectrogram feature analysis method has a high degree of recognition for bearing faults in an ultra-low-speed state and can provide high accuracy and stability under noisy conditions.
基于全矢量声谱图的超低速滚动轴承故障诊断研究
通过探索轴承多向数据与故障特征之间的映射关系,提出了一种考虑轴承多向声发射数据的时频分析方法。首先,利用全矢量谱(FVS)理论,提取轴承双通道声发射信号的全矢量声谱图,利用时频特征增强对故障状态的表征;然后,将得到的全矢量声谱图转换为特定大小的输入特征图,并建立卷积神经网络(CNN)分类器模型。其次,利用Softmax分类器对轴承故障进行分类,实现超低速滚动轴承的智能故障诊断。不同模型的对比表明,全矢量声谱图CNN模型的平均识别准确率可达95.61%,优于其他三种方法。采用全矢量声谱图特征分析方法的特征提取对超低速状态下的轴承故障具有较高的识别度,并且在噪声条件下具有较高的精度和稳定性。
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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