Recent advances in the application of deep learning for fault diagnosis of rotating machinery using vibration signals
Date
2022-10-09Journal
Artificial Intelligence ReviewType
Article
Metadata
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10.1007/s10462-022-10293-3Abstract
Vibration measurement and monitoring are essential in a wide variety of applications. Vibration measurements are critical for diagnosing industrial machinery malfunctions because they provide information about the condition of the rotating equipment. Vibration analysis is considered the most effective method for predictive maintenance because it is used to troubleshoot instantaneous faults as well as periodic maintenance. Numerous studies conducted in this vein have been published in a variety of outlets. This review documents data-driven and recently published deep learning techniques for vibration-based condition monitoring. Numerous studies were obtained from two reputable indexing databases, Web of Science and Scopus. Following a thorough review, 59 studies were selected for synthesis. The selected studies are then systematically discussed to provide researchers with an in-depth view of deep learning-based fault diagnosis methods based on vibration signals. Additionally, a few remarks regarding future research directions are made, including graph-based neural networks, physics-informed ML, and a transformer convolutional network-based fault diagnosis method. © 2022, The Author(s).Sponsors
Ulsan National Institute of Science and TechnologyIdentifier to cite or link to this item
http://hdl.handle.net/10713/20022ae974a485f413a2113503eed53cd6c53
10.1007/s10462-022-10293-3