Underdetermined Blind Source Separation with Variational Mode Decomposition for Compound Roller Bearing Fault Signals
Abstract
:1. Introduction
2. Underdetermined Blind Source Separation
- (1)
- source signals are statistically independent of each other;
- (2)
- hybrid matrix is a matrix with full column rank;
- (3)
- noise signals are statistically independent of each other and are irrelevant to the original signals.
- (4)
- The number of source signals () is less than or equal to the number of observed signals ().
3. Variational Mode Decomposition
4. Independent Component Analysis
- Step 1.
- Step 2.
- Step 3.
- Step 4.
- Step 5.
5. Proposed Method
6. Experimental Results
6.1. Simulation
6.2. Experimental Setup
6.3. Diagnosis by Traditional Envelope Spectrum Analysis
- (1)
- The theoretical frequency is calculated based on the assumption of a pure rolling motion. However, in practice, some sliding motion may occur.
- (2)
- In practice, some installation error will appear in the roller bearing.
6.4. Diagnosis by the Proposed Method
6.5. Comparison of the Proposed Method with the EEMD Method
7. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
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Fault Characteristic Frequency | |||
---|---|---|---|
500 rpm | 900 rpm | 1300 rpm | |
Outer-race | 33.2 Hz | 59.8 Hz | 86.3 Hz |
rollers | 39.3 Hz | 71.8 Hz | 102.3 Hz |
Operating Time | |||
---|---|---|---|
Sampling Points | 5000 | 10,000 | 500,000 |
EEMD-ICA method | 12.8 s | 27.6 s | 150.7 s |
The propose method | 3.3 s | 5.7 s | 10.2 s |
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Tang, G.; Luo, G.; Zhang, W.; Yang, C.; Wang, H. Underdetermined Blind Source Separation with Variational Mode Decomposition for Compound Roller Bearing Fault Signals. Sensors 2016, 16, 897. https://doi.org/10.3390/s16060897
Tang G, Luo G, Zhang W, Yang C, Wang H. Underdetermined Blind Source Separation with Variational Mode Decomposition for Compound Roller Bearing Fault Signals. Sensors. 2016; 16(6):897. https://doi.org/10.3390/s16060897
Chicago/Turabian StyleTang, Gang, Ganggang Luo, Weihua Zhang, Caijin Yang, and Huaqing Wang. 2016. "Underdetermined Blind Source Separation with Variational Mode Decomposition for Compound Roller Bearing Fault Signals" Sensors 16, no. 6: 897. https://doi.org/10.3390/s16060897