Performance analysis of pre-trained transfer learning models for the classification of the rolling bearing faults

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Abstract

Nowadays, artificial intelligence techniques are getting popular in modern industry to diagnose the rolling bearing faults (RBFs). The RBFs occur in rotating machinery and these are common in every manufacturing industry. The diagnosis of the RBFs is highly needed to reduce the financial and production losses. Therefore, various artificial intelligence techniques such as machine and deep learning have been developed to diagnose the RBFs in the rotating machines. But, the performance of these techniques has suffered due the size of the dataset. Because, Machine learning and deep learning methods based methods are suitable for the small and large datasets respectively. Deep learning methods have also been limited to large training time. In this paper, performance of the different pre-trained models for the RBFs classification has been analysed. CWRU Dataset has been used for the performance comparison.

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APA

Sharma, P., Amhia, H., & Sharma, S. D. (2021). Performance analysis of pre-trained transfer learning models for the classification of the rolling bearing faults. In Journal of Physics: Conference Series (Vol. 2070). IOP Publishing Ltd. https://doi.org/10.1088/1742-6596/2070/1/012141

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