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Transfer Learning for Rotary Machine Fault Diagnosis and Prognosis [Mīkstie vāki]

(Professor and phd Supervisor, Xian Jiaotong University, China), (School of Instrument Science and Engineering, Southeast University, China)
  • Formāts: Paperback / softback, 312 pages, height x width: 229x152 mm, weight: 500 g, 100 illustrations (50 in full color); Illustrations
  • Izdošanas datums: 15-Nov-2023
  • Izdevniecība: Elsevier - Health Sciences Division
  • ISBN-10: 0323999891
  • ISBN-13: 9780323999892
  • Mīkstie vāki
  • Cena: 204,27 €
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  • Formāts: Paperback / softback, 312 pages, height x width: 229x152 mm, weight: 500 g, 100 illustrations (50 in full color); Illustrations
  • Izdošanas datums: 15-Nov-2023
  • Izdevniecība: Elsevier - Health Sciences Division
  • ISBN-10: 0323999891
  • ISBN-13: 9780323999892
Transfer Learning for Rotary Machine Fault Diagnosis and Prognosis introduces the theory and latest applications of transfer learning on rotary machine fault diagnosis and prognosis. Transfer learning-based rotary machine fault diagnosis is a relatively new subject, and this innovative book synthesizes recent advances from academia and industry to provide systematic guidance. Basic principles are described before key questions are answered, including the applicability of transfer learning to rotary machine fault diagnosis and prognosis, technical details of models, and an introduction to deep transfer learning. Case studies for every method are provided, helping readers apply the techniques described in their own work.
  • Offers case studies for each transfer learning algorithm
  • Optimizes the transfer learning models to solve specific engineering problems
  • Describes the roles of transfer components, transfer fields, and transfer order in intelligent machine diagnosis and prognosis
1. Introduction to machine fault diagnosis and prognosis
2. The basic principle of transfer learning-based mechanical fault diagnosis and prognosis
3. Fault diagnosis models based on sample transfer components
4. Fault diagnosis models based on feature transfer components
5. Fault diagnosis models based on cross time fields transfer
6. Fault diagnosis models based on cross channel fields transfer
7. Fault diagnosis models based on cross machine fields transfer
8. Prognosis models driven by transfer orders
9. Fault diagnosis and prognosis driven by deep transfer learning
10. Summary
Ruqiang Yan is a Professor and phd supervisor at Xian Jiaotong University, China. His main research interests include machine learning with emphasis on deep learning, transfer learning and their applications, data analytics, multi-domain signal processing, non-linear time-series analysis, structural health monitoring, and diagnosis and prognosis. He serves as the associate editor-in-chief in of IEEE Transactions on Instrumentation and Measurement. Dr. Yan has published over 10 Journal Papers related to transfer learning-based machine fault diagnosis and prognosis. He was the Principal Investigator of a project titled ” Transfer Learning Based Rotating Machine Fault Diagnosis and Remaining Useful Life Prediction”, sponsored by the National Natural Science Foundation of China Fei Shen is pursuing his PhD degree at the School of Instrument Science and Engineering, Southeast University, China. His main research interest is machine fault diagnosis based on transfer learning. Because of his excellent academic achievements and outstanding performance in this researches, Fei Shen was nominated as one of the Top Ten Postgraduate Students in SEU” in May 2018. As one of most principal authors, he published the review paper” Knowledge transfer for rotary machine fault diagnosis” which was widely welcomed by researchers in this field.