MF
Machine Fault Diagnosis Techniques
This cluster of papers focuses on machine fault diagnosis and prognostics using methods such as Empirical Mode Decomposition, wavelet transform, and deep learning. It covers topics like condition monitoring, vibration analysis, and remaining useful life estimation for rotating machinery. The research explores the application of machine learning techniques, neural networks, and signal processing in fault detection and health management of various mechanical systems.
66,755
Publications
1,095,987
Citations
Loading papers...
Search by keywords
Filter by Type
- Article (102,236)
- Book Chapter (6,261)
- Preprint (4,401)
- Dissertation (2,819)
- Review (901)
Filter by Open Access Type
- Open Access (38,090)
- Closed Access (80,181)
Filter by Authors
- Fengshou Gu (373)
- Jose A. Antonino‐Daviu (312)
- Xuefeng Chen (290)
- Dong Wang (248)
- Ruqiang Yan (231)
Filter by Topics
- Machine Fault Diagnosis Techniques (118,271)
- Fault Detection and Control Systems (32,454)
- Gear and Bearing Dynamics Analysis (20,212)
- Engineering Diagnostics and Reliability (15,037)
- Structural Health Monitoring Techniques (13,179)