The Mkurtogram: A Novel Method to Select the Optimal Frequency Band in the AC Domain for Railway Wheelset Bearings Fault Diagnosis
Abstract
:Featured Application
Abstract
1. Introduction
2. The Proposed Approach for Fault Diagnosis of Wheelset Bearing
2.1. Maximal Overlap Discrete Wavelet Packet Transform
2.2. The Noise Reduction Signature of AC Process
2.3. The Regular Distribution of the Periodic Peaks after AC Process
2.4. The Advantages of the Mkurt in Extracting Repetitive Transients
2.5. The Implementation of the Proposed Method
3. Simulation and Experimental Verification
3.1. Case 1: A Numerical Experiment with Multiple Interferences
3.2. Case 2: A High-Speed Locomotive Wheelset Bearing Fault Signal under Variable Load Conditions
3.3. Case 3: A Freight Locomotive Wheelset Bearing Signal with Compound Faults
4. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Spaces | Roller Diameter | Pitch Diameter | Contact Angle | Roller Number |
---|---|---|---|---|
FAG F-80781109 | 26.5 mm | 185 mm | 10 deg | 17 |
Bearing Spaces | Roller Diameter | Pitch Diameter | Contact Angle | Roller Number |
---|---|---|---|---|
197,726 | 24.74 mm | 176.29 mm | 8.833 deg | 20 |
fr | fo | fi | frb |
---|---|---|---|
7.75 Hz | 66.75 Hz | 88.25 Hz | 27.08 Hz |
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Liu, W.; Yang, S.; Li, Q.; Liu, Y.; Hao, R.; Gu, X. The Mkurtogram: A Novel Method to Select the Optimal Frequency Band in the AC Domain for Railway Wheelset Bearings Fault Diagnosis. Appl. Sci. 2021, 11, 9. https://doi.org/10.3390/app11010009
Liu W, Yang S, Li Q, Liu Y, Hao R, Gu X. The Mkurtogram: A Novel Method to Select the Optimal Frequency Band in the AC Domain for Railway Wheelset Bearings Fault Diagnosis. Applied Sciences. 2021; 11(1):9. https://doi.org/10.3390/app11010009
Chicago/Turabian StyleLiu, Wenpeng, Shaopu Yang, Qiang Li, Yongqiang Liu, Rujiang Hao, and Xiaohui Gu. 2021. "The Mkurtogram: A Novel Method to Select the Optimal Frequency Band in the AC Domain for Railway Wheelset Bearings Fault Diagnosis" Applied Sciences 11, no. 1: 9. https://doi.org/10.3390/app11010009
APA StyleLiu, W., Yang, S., Li, Q., Liu, Y., Hao, R., & Gu, X. (2021). The Mkurtogram: A Novel Method to Select the Optimal Frequency Band in the AC Domain for Railway Wheelset Bearings Fault Diagnosis. Applied Sciences, 11(1), 9. https://doi.org/10.3390/app11010009