Explore
Signal Processing and Artificial Intelligence Technology for High-End Equipment Fault Diagnosis
Bingyan Chen (editor) and Yao Cheng (editor)
2025
0 Ungluers have
Faved this Work
Login to Fave
This Reprint presents the latest research progress of signal processing and artificial intelligence technologies for fault diagnosis of high-end mechanical equipment. It contains 13 original research papers, covering advanced dynamics modeling and mechanism analysis methods, novel signal processing and artificial intelligence methods for machine fault diagnosis using various sensing technologies, and their multi-field applications. These papers mainly report research outcomes in mechanical engineering and its interdisciplinary fields, covering different themes including fault mechanism analysis; structural health monitoring; fault diagnosis and remaining useful life prediction of rotating machinery; high-end mechanical equipment in different industrial fields including the railway, wind energy, machinery manufacturing, and aerospace industries; and different sensing technologies including vibration, temperature, thermal imaging, electrical signals, and force or torque. The Reprint highlights how different sensing technologies could be integrated with advanced signal processing and artificial intelligence technologies for fault diagnosis of industrial mechanical systems. The research results of these interdisciplinary applications will contribute to better understanding of the mechanisms of machine fault diagnosis and remaining useful life prediction, and the application of these advanced monitoring and diagnostic technologies will improve the safety and reliability of mechanical systems in various industrial fields.
This book is included in DOAB.
Why read this book? Have your say.
You must be logged in to comment.
Rights Information
Are you the author or publisher of this work? If so, you can claim it as yours by registering as an Unglue.it rights holder.Downloads
This work has been downloaded 0 times via unglue.it ebook links.
- 0 - pdf (CC BY) at mdpi.com.
Keywords
- abnormal vibration
- aero-engine
- aero-engines
- anomaly detection
- assembly phase angle
- attention mechanism
- auto-encoder
- autoencoder
- autogram
- axle box bearing
- bandpass filtering
- bearing fault diagnosis
- characteristic frequency
- condition monitoring
- convolutional neural network
- coupling fault diagnosis
- Data fusion
- decision-level fusion
- deep learning
- defect detection
- dual-layer self-attention
- dual-rotor system
- dynamic modeling
- dynamic time warping
- fault detection
- fault diagnosis
- graph convolutional networks
- hydrodynamic bearing
- industrial collaborative robot
- infrared thermography
- life prediction
- LSTM
- monitoring and diagnosis
- multi-scale convolution
- multi-scale graph convolutional networks
- multi-sensor information fusion
- multi-task learning
- Neural Network
- nonlinear dynamic coefficients
- object localization
- oil film instability
- online monitoring
- optimal demodulation frequency band
- resonant frequencies
- rolling bearing
- rolling mill
- rotor unbalance
- self-attention mechanism
- temperature sensor
- traction converter
- trajectory change
- transformer
- variational Bayesian inference
- Vibration amplitude
- vibration response
- wind turbine blade
- YOLO
Links
DOI: 10.3390/books978-3-7258-4962-8Editions
