Publication:
A systematic review of rolling bearing fault diagnoses based on deep learning and transfer learning: Taxonomy, overview, application, open challenges, weaknesses and recommendations

Date
2023
Authors
Hakim M.
Omran A.A.B.
Ahmed A.N.
Al-Waily M.
Abdellatif A.
Journal Title
Journal ISSN
Volume Title
Publisher
Ain Shams University
Research Projects
Organizational Units
Journal Issue
Abstract
Rolling bearing fault detection is critical for improving production efficiency and lowering accident rates in complicated mechanical systems, as well as huge monitoring data, posing significant challenges to present fault diagnostic technology. Deep Learning is now an extraordinarily popular research topic in the field and a promising approach for detecting intelligent bearing faults. This paper aims to give a comprehensive overview of Deep Learning (DL) based on bearing fault diagnosis. The most widely used DL algorithms for detecting bearing faults include Convolutional Neural Network, Recurrent neural network, Autoencoder, and Generative Adversarial Network. It discusses a variety of transfer learning architectures and relevant theories while summarises, classifies, and explains several publications on the subject. The research area's applications and problems are also addressed. � 2022 THE AUTHORS
Description
Keywords
Deep learning , Fault diagnosis , Rolling bearing , Systematic review , Transfer learning , Convolutional neural networks , Fault detection , Production efficiency , Recurrent neural networks , Roller bearings , Accident rate , Bearing fault , Bearing fault detection , Bearing fault diagnosis , Deep learning , Faults diagnosis , Production efficiency , Rolling bearings , Systematic Review , Transfer learning , Failure analysis
Citation
Collections