Optimized Adaptive Local Iterative Filtering Algorithm Based on Permutation Entropy for Rolling Bearing Fault Diagnosis
Abstract
:1. Introduction
2. The Theory of the Proposed Method
2.1. The Theory of Adaptive Local Iterative Filtering
Algorithm 1 Adaptive local iterative filtering algorithm |
ALIF Algorithm IMF = ALIF(f) |
IMF = { } While the number of extrema of do While the stopping criterion is not satisfied do Compute the filter length for End while End while |
- (1)
- and for
- (2)
- (1)
- , for any
- (2)
- , for any
2.2. Adaptive Local Iterative Filtering Based on Particle Swarm Optimization
2.3. The Desired Component Selection Base on PE
3. Numerical Simulation Analysis
4. Experimental Study
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Inner Race Frequency (Hz) | Outer Race Frequency (Hz) | Rolling Element Frequency (Hz) |
---|---|---|
180 | 135 | 80 |
(Hz) | (Hz) | (Hz) | ||||||
---|---|---|---|---|---|---|---|---|
3 | 20 | 20 | 2048 | 800 | 0.01 | 1 | 0 | 0 |
IMF Order | 1 | 2 | 3 | 4 |
PE Value | 0.8887 | 0.7072 | 0.5184 | 0.3754 |
Bearing Type | Outside Diameter d2/mm | Ball Diameter/mm | Ball Number n | Contact Angle α |
---|---|---|---|---|
ZA2115 | 71.5 | 8.4 | 16 | 15.17 |
Group | Sample Channels | Fault Description |
---|---|---|
Group 1 | 8 | Inner race defect that occurred in bearing 3 and roller element defect occurred in bearing 4. |
Group 2 | 4 | Outer race failure that occurred in bearing 1. |
Group 3 | 4 | Outer race failure that occurred in bearing 3. |
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Lv, Y.; Zhang, Y.; Yi, C. Optimized Adaptive Local Iterative Filtering Algorithm Based on Permutation Entropy for Rolling Bearing Fault Diagnosis. Entropy 2018, 20, 920. https://doi.org/10.3390/e20120920
Lv Y, Zhang Y, Yi C. Optimized Adaptive Local Iterative Filtering Algorithm Based on Permutation Entropy for Rolling Bearing Fault Diagnosis. Entropy. 2018; 20(12):920. https://doi.org/10.3390/e20120920
Chicago/Turabian StyleLv, Yong, Yi Zhang, and Cancan Yi. 2018. "Optimized Adaptive Local Iterative Filtering Algorithm Based on Permutation Entropy for Rolling Bearing Fault Diagnosis" Entropy 20, no. 12: 920. https://doi.org/10.3390/e20120920