Performance Degradation Assessment of Rolling Element Bearings Based on an Index Combining SVD and Information Exergy
Abstract
:1. Introduction
2. Information Exergy
2.1. Generalized Information Entropy
2.2. Information Exergy
3. Information Exergy Index for Degradation Assessment
3.1. Information Exergy Index Combining SVD and Information Exergy
3.2. Degradation Assessment Based on the Proposed Information Exergy Index
4. Experimental Validation of Information Exergy Index
4.1. Experiment Description
4.2. Experimental Results and Analysis
4.2.1. Inner Raceway Degradation Assessment
4.2.2. Rolling Element Degradation Assessment
5. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
References
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Step 1 | Condition monitoring signals of multiple instants and multiple sensors are preprocessed for calculation of generalized information entropy, such as fast Fourier transform (FFT). |
Step 2 | Specific generalized information entropy such as spectral information entropy of multi-instant and multi-sensor condition monitoring signals is calculated. |
Step 3 | Information exergy matrix is constructed using the specific generalized information entropies of multiple instants and multiple sensors. |
Step 4 | Information exergy index is extracted by SVD of the above information exergy matrix and singular value truncating. |
Step 5 | Empirical relationship between information exergy index and degradation severity is established by clustering information exergy indices with known degradation severities. |
Step 6 | Degradation severity is assessed by the established empirical relationship when new information exergy index is input. |
Index | Normal | 7 Mils Fault | 14 Mils Fault | 21 Mils Fault |
---|---|---|---|---|
SEx | 2.9817(0.0060) * | 3.6606(0.0137) * | 4.0467(0.0034) * | 3.9153(0.0080) * |
Mv | 0 | 0.2536(0.0845) | 0.3987(0.0208) * | 0.3432(0.0361) * |
Std | 0 | 0.0170(0.1480) * | 0.0392(0.0487) * | 0.0810(0.0772) * |
Pr | 0 | 0.3607(0.0812) * | 0.5659(0.0207) * | 0.5598(0.0259) * |
Index | Normal | 7 Mils Fault | 14 Mils Fault | 21 Mils Fault |
---|---|---|---|---|
SEx | 2.9817(0.0040) * | 3.5170(0.0047) * | 3.5826(0.0094) * | 3.4769(0.0112) * |
Mv | 0 | 0.1901(0.0569) * | 0.2147(0.0981) * | 0.1838(0.1247) * |
Std | 0 | 0.0161(0.0749) * | 0.0221(0.1448) * | 0.0113(0.3443) * |
Pr | 0 | 0.2697(0.0555) * | 0.3200(0.0770) * | 0.2648(0.1249) * |
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Zhang, B.; Zhang, L.; Xu, J.; Wang, P. Performance Degradation Assessment of Rolling Element Bearings Based on an Index Combining SVD and Information Exergy. Entropy 2014, 16, 5400-5415. https://doi.org/10.3390/e16105400
Zhang B, Zhang L, Xu J, Wang P. Performance Degradation Assessment of Rolling Element Bearings Based on an Index Combining SVD and Information Exergy. Entropy. 2014; 16(10):5400-5415. https://doi.org/10.3390/e16105400
Chicago/Turabian StyleZhang, Bin, Lijun Zhang, Jinwu Xu, and Pingfeng Wang. 2014. "Performance Degradation Assessment of Rolling Element Bearings Based on an Index Combining SVD and Information Exergy" Entropy 16, no. 10: 5400-5415. https://doi.org/10.3390/e16105400
APA StyleZhang, B., Zhang, L., Xu, J., & Wang, P. (2014). Performance Degradation Assessment of Rolling Element Bearings Based on an Index Combining SVD and Information Exergy. Entropy, 16(10), 5400-5415. https://doi.org/10.3390/e16105400