A novel fault diagnosis model of rolling bearing under variable working conditions based on attention mechanism and domain adversarial neural network

被引:0
作者
Zhiping Liu
Peng Zhang
Yannan Yu
Mengzhen Li
Zhuo Zeng
机构
[1] Wuhan University of Technology,School of Transportation and Logistics Engineering
[2] Ministry of Education,Engineer Research Center of Logistic Technology and Equipment
来源
Journal of Mechanical Science and Technology | 2024年 / 38卷
关键词
Fault diagnosis; Variable working conditions; Attention mechanism; Domain adversarial neural network; Transfer learning;
D O I
暂无
中图分类号
学科分类号
摘要
Deep learning has been used to enhance the efficiency of rolling bearing fault diagnosis. However, the complexity of working conditions in rolling bearings, coupled with varying data distribution, often results in the failure of most deep learning models. To solve this problem, a feature extractor with an attention mechanism is constructed, which allows the model to selectively study and preserve critical features relevant to fault information during the training process. Moreover, the Wasserstein distance is employed in adversarial neural networks to calculate the distribution discrepancy between data from different domains, which can avoid disappearing gradients or vanishing problems of the model. The experimental validation are conducted using the rolling bearing datasets from CWRU and Jiangnan University (JNU). Compared with other existing models, the proposed model has better performance under variable conditions, and this demonstrates the superiority and accuracy of this model.
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页码:1101 / 1111
页数:10
相关论文
共 147 条
[1]  
Cerrada M(2018)A review on data-driven fault severity assessment in rolling bearings Mechanical Systems and Signal Processing 99 169-196
[2]  
Sánchez R-V(2021)Rolling bearing fault diagnosis based on multi-channel convolution neural network and multi-scale clipping fusion data augmentation Measurement 184 109885-4172
[3]  
Li C(2019)Mechanical fault diagnosis using convolutional neural networks and extreme learning machine Mechanical Systems and Signal Processing 133 106272-27
[4]  
Pacheco F(2020)Application of neural network algorithm in fault diagnosis of mechanical intelligence Mechanical Systems and Signal Processing 141 106625-16093
[5]  
Cabrera D(2019)Research on a fault diagnosis method of rolling bearings using variation mode decomposition and deep belief network Journal of Mechanical Science and Technology 33 4165-1389
[6]  
de Oliveira J V(2021)Fault detection and diagnosis for rotating machinery: A model based on convolutional LSTM, fast fourier and continuous wavelet transforms Computers in Industry 125 103378-628
[7]  
Vásquez R E(2015)Application of empirical mode decomposition and artificial neural network for automatic bearing fault diagnosis based on vibration signals Applied Acoustics 89 16-353
[8]  
Bai R(2022)Ensemble empirical mode decomposition energy moment entropy and enhanced long short-term memory for early fault prediction of bearing Measurement 188 110417-6192
[9]  
Xu Q(2021)Fault size diagnosis of rolling element bearing using artificial neural network and dimension theory Neural Computing and Applications 33 16079-242
[10]  
Meng Z(2023)Correction: highly accurate gear fault diagnosis based on support vector machine Journal of Vibration Engineering and Technologies 11 1389-154