Annals of Emerging Technologies in Computing | |
A Novel Hybrid Signal Decomposition Technique for Transfer Learning Based Industrial Fault Diagnosis | |
article | |
Ruhi, Zurana Mehrin1  Jahan, Sigma2  Uddin, Jia3  | |
[1] Saarland University;Dalhousie University;Woosong University | |
关键词: Deep learning; Intelligent fault diagnosis; Signal decomposition techniques; Transfer learning; | |
DOI : 10.33166/AETiC.2021.04.004 | |
学科分类:电子与电气工程 | |
来源: International Association for Educators and Researchers (IAER) | |
【 摘 要 】
In the fourth industrial revolution, data-driven intelligent fault diagnosis for industrial purposes serves a crucial role. In contemporary times, although deep learning is a popular approach for fault diagnosis, it requires massive amounts of labelled samples for training, which is arduous to come by in the real world. Our contribution to introduce a novel comprehensive intelligent fault detection model using the Case Western Reserve University dataset is divided into two steps. Firstly, a new hybrid signal decomposition methodology is developed comprising Empirical Mode Decomposition and Variational Mode Decomposition to leverage signal information from both processes for effective feature extraction. Secondly, transfer learning with DenseNet121 is employed to alleviate the constraints of deep learning models. Finally, our proposed novel technique surpassed not only previous outcomes but also generated state-of-the-art outcomes represented via the F1 score.
【 授权许可】
CC BY
【 预 览 】
Files | Size | Format | View |
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RO202306300002674ZK.pdf | 1531KB | download |