4.6 Article

Signal-to-Image: Rolling Bearing Fault Diagnosis Using ResNet Family Deep-Learning Models

期刊

PROCESSES
卷 11, 期 5, 页码 -

出版社

MDPI
DOI: 10.3390/pr11051527

关键词

rolling bearing; fault diagnosis; deep learning; continuous wavelet transform

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Rolling element bearings (REBs) are the most common cause of machine breakdowns. Traditional fault diagnosis methods rely on feature extraction and signal processing, which can be affected by the complexity of patterns and the need for expert knowledge. This paper proposes a novel signal-to-image method using continuous wavelet transform (CWT), which enhances feature extraction and eliminates the need for manual extraction.
Rolling element bearings (REBs) are the most frequent cause of machine breakdowns. Traditional methods for fault diagnosis in rolling bearings rely on feature extraction and signal processing techniques. However, these methods can be affected by the complexity of the underlying patterns and the need for expert knowledge during signal analysis. This paper proposes a novel signal-to-image method in which the raw signal data are transformed into 2D images using continuous wavelet transform (CWT). This transformation enhances the features extracted from the raw data, allowing for further analysis and interpretation. Transformed images of both normal and faulty rolling bearings from the Case Western Reserve University (CWRU) dataset were used with deep-learning models from the ResNet family. They can automatically learn and identify patterns in raw vibration signals after continuous wavelet transform is used, eliminating the need for manual feature extraction. To further improve the training results, squeeze-and-excitation networks (SENets) were added to improve the process. By comparing results obtained from several models, we found that SE-ResNet152 has the best performance for REB fault diagnosis.

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