Deep Transfer Learning for Bearing Fault Diagnosis using CWT Time–Frequency Images and Convolutional Neural Networks

被引:0
作者
Said Djaballah
Kamel Meftah
Khaled Khelil
Mounir Sayadi
机构
[1] University of Biskra,LGEM Laboratory
[2] University of Batna 2,Faculty of Technology
[3] University of Souk Ahras,LEER Laboratory, Faculty of Science and Technology
[4] University of Tunis,SIME Laboratory
[5] ENSIT,undefined
来源
Journal of Failure Analysis and Prevention | 2023年 / 23卷
关键词
Deep learning; Convolution neural network (CNN); Bearing fault diagnosis; Transfer learning; Fine tuning;
D O I
暂无
中图分类号
学科分类号
摘要
Deep transfer learning has evolved into a powerful method for defect identification, particularly in mechanical systems that lack sufficient training data. Nonetheless, domain divergence and absence of overlap between the source and target domains might result in negative transfer. This study examines the partial knowledge transfer, for bearing fault diagnosis, by freezing layers in varying proportions to take advantage of both freezing and fine-tuning strategies. To assess the proposed strategy, three distinct pre-trained models are used, namely ResNet-50, GoogLeNet, and SqueezeNet. Each network is trained using three different optimizers: root mean square propagation, adaptive moment estimation, and stochastic gradient descent with momentum. The suggested technique performance is evaluated in terms of fault classification accuracy, specificity, precision, and training time. The classification results obtained using the CWRU datasets show that the proposed technique reduces training time while enhancing diagnostic accuracy, hence improving bearing defect diagnosis performance.
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页码:1046 / 1058
页数:12
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