
Deep Neural Networks-Enabled Intelligent Fault Diagnosis of Mechanical Systems
CRC Press
1st Edition
Will be published approx. on 22. June 2026
Book
Paperback/Softback
206 pages
978-1-032-75724-7 (ISBN)
Description
The book aims to highlight the potential of deep learning (DL)-enabled methods in intelligent fault diagnosis (IFD), along with their benefits and contributions.
The authors first introduce basic applications of DL-enabled IFD, including auto-encoders, deep belief networks, and convolutional neural networks. Advanced topics of DL-enabled IFD are also explored, such as data augmentation, multi-sensor fusion, unsupervised deep transfer learning, neural architecture search, self-supervised learning, and reinforcement learning. Aiming to revolutionize the nature of IFD, Deep Neural Networks-Enabled Intelligent Fault Diangosis of Mechanical Systems contributes to improved efficiency, safety, and reliability of mechanical systems in various industrial domains.
The book will appeal to academic researchers, practitioners, and students in the fields of intelligent fault diagnosis, prognostics and health management, and deep learning.
The authors first introduce basic applications of DL-enabled IFD, including auto-encoders, deep belief networks, and convolutional neural networks. Advanced topics of DL-enabled IFD are also explored, such as data augmentation, multi-sensor fusion, unsupervised deep transfer learning, neural architecture search, self-supervised learning, and reinforcement learning. Aiming to revolutionize the nature of IFD, Deep Neural Networks-Enabled Intelligent Fault Diangosis of Mechanical Systems contributes to improved efficiency, safety, and reliability of mechanical systems in various industrial domains.
The book will appeal to academic researchers, practitioners, and students in the fields of intelligent fault diagnosis, prognostics and health management, and deep learning.
More details
Language
English
Place of publication
London
United Kingdom
Publishing group
Taylor & Francis Ltd
Target group
College/higher education
Professional and scholarly
Postgraduate and Professional Reference
Product notice
Paperback (trade)
Unsewn / adhesive bound
Illustrations
36 s/w Tabellen, 87 s/w Zeichnungen, 14 s/w Photographien bzw. Rasterbilder, 101 s/w Abbildungen
36 Tables, black and white; 87 Line drawings, black and white; 14 Halftones, black and white; 101 Illustrations, black and white
Dimensions
Height: 254 mm
Width: 178 mm
Thickness: 12 mm
Weight
386 gr
ISBN-13
978-1-032-75724-7 (9781032757247)
Copyright in bibliographic data and cover images is held by Nielsen Book Services Limited or by the publishers or by their respective licensors: all rights reserved.
Schweitzer Classification
Other editions
Additional editions

Ruqiang Yan | Zhibin Zhao
Deep Neural Networks-Enabled Intelligent Fault Diagnosis of Mechanical Systems
E-Book
06/2024
1st Edition
CRC Press
€115.99
Available for download

Ruqiang Yan | Zhibin Zhao
Deep Neural Networks-Enabled Intelligent Fault Diagnosis of Mechanical Systems
E-Book
06/2024
1st Edition
CRC Press
€115.99
Available for download

Ruqiang Yan | Zhibin Zhao
Deep Neural Networks-Enabled Intelligent Fault Diagnosis of Mechanical Systems
Book
06/2024
1st Edition
CRC Press
€119.90
Shipment within 10-20 days
Persons
Ruqiang Yan is a professor at the School of Mechanical Engineering, Xi'an Jiaotong University. His research interests include data analytics, AI, and energy-efficient sensing and sensor networks for the condition monitoring and health diagnosis of large-scale, complex, dynamical systems.
Zhibin Zhao is an assistant professor at the School of Mechanical Engineering, Xi'an Jiaotong University. His research interests include sparse signal processing and machine learning, especially deep learning for machine fault detection, diagnosis, and prognosis.
Zhibin Zhao is an assistant professor at the School of Mechanical Engineering, Xi'an Jiaotong University. His research interests include sparse signal processing and machine learning, especially deep learning for machine fault detection, diagnosis, and prognosis.
Content
1?Introduction and Background Part I: Basic applications of deep learning enabled Intelligent Fault Diagnosis 2?Auto-encoders for Intelligent Fault Diagnosis 3?Deep Belief Networks for Intelligent Fault Diagnosis 4?Convolutional Neural Networks for Intelligent Fault Diagnosis Part II: advanced topics of deep learning enabled Intelligent Fault Diagnosis 5?Data Augmentation for Intelligent Fault Diagnosis 6?Multi-sensor Fusion for Intelligent Fault Diagnosis 7: Unsupervised Deep Transfer Learning for Intelligent Fault Diagnosis 8: Neural Architecture Search for Intelligent Fault Diagnosis 9: Self-Supervised Learning (SSF) for Intelligent Fault Diagnosis 10: Reinforcement Learning for Intelligent Fault Diagnosis