Bearing fault diagnosis based on wavelet adaptive threshold filtering and multi-channel fusion cross-attention neural network.

IF 1.3 4区 工程技术 Q3 INSTRUMENTS & INSTRUMENTATION
Yunji Zhao, Sicheng Wei, Xiaozhuo Xu
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引用次数: 0

Abstract

In industrial applications, it is difficult to extract the fault feature directly when the rolling bearing works under strong background noise. In addition, single-channel vibration sensor data pose limitations in providing a comprehensive representation of bearing fault features; how to effectively fuse data of each channel and extract features is a challenge. To solve the above-mentioned problems, a fault diagnosis method based on wavelet adaptive threshold filtering and multi-channel fusion cross-attention neural network is proposed in this paper. First, the multi-scale discrete wavelet transform is applied to obtain the wavelet coefficients of each channel. Adaptive threshold filtering is conducted to filter out noise and extract symbolic features. The threshold updates with the training of the network. Then, the wavelet coefficients are reconstructed and the channel attention is performed to further extract the symbolic features of the fault signal. Finally, the multi-channel fault signals are fused by a cross-attention module. This module can fully extract the features of each channel and fuse multi-channel data. To improve the generalization ability of the network, residual connections are added. To verify the effectiveness of the proposed method, experiments are carried out on the rolling bearing datasets of Case Western Reserve University and Xi'an Jiaotong University. In addition, the gas turbine main bearing dataset is also applied to prove the reliability of this method.

基于小波自适应阈值滤波和多通道融合交叉注意神经网络的轴承故障诊断
在工业应用中,当滚动轴承在强背景噪声下工作时,很难直接提取故障特征。此外,单通道振动传感器数据在全面呈现轴承故障特征方面存在局限性,如何有效融合各通道数据并提取特征是一个难题。为解决上述问题,本文提出了一种基于小波自适应阈值滤波和多通道融合交叉注意神经网络的故障诊断方法。首先,应用多尺度离散小波变换获得各通道的小波系数。然后进行自适应阈值滤波,以滤除噪声并提取符号特征。阈值随着网络的训练而更新。然后,重建小波系数,并对通道进行关注,进一步提取故障信号的符号特征。最后,通过交叉注意模块融合多通道故障信号。该模块可以充分提取每个通道的特征,并对多通道数据进行融合。为了提高网络的泛化能力,还添加了残差连接。为了验证所提方法的有效性,我们在凯斯西储大学和西安交通大学的滚动轴承数据集上进行了实验。此外,还应用了燃气轮机主轴承数据集来证明该方法的可靠性。
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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来源期刊
Review of Scientific Instruments
Review of Scientific Instruments 工程技术-物理:应用
CiteScore
3.00
自引率
12.50%
发文量
758
审稿时长
2.6 months
期刊介绍: Review of Scientific Instruments, is committed to the publication of advances in scientific instruments, apparatuses, and techniques. RSI seeks to meet the needs of engineers and scientists in physics, chemistry, and the life sciences.
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