Research on Fault Diagnosis of Rolling Bearings Based on Variational Mode Decomposition Improved by the Niche Genetic Algorithm
Abstract
:1. Introduction
- (1)
- The NGA is introduced into the VMD to optimize the selection of the mode number K and penalty factor α.
- (2)
- Compared to VMD and EMD, the effectiveness and accuracy of the NGA-VMD is verified.
- (3)
- The NGA-VMD and PSO-SVM are combined into an effective fault-diagnosis method.
2. Theoretical Basis
2.1. Variational Modal Decomposition
2.2. NGA-VMD Algorithm
3. Simulation Signal Analysis
4. Diagnostic Process
- (1)
- Collect and load the operating data of each state of the rolling bearing;
- (2)
- Use the NGA-VMD algorithm to optimize the collected rolling-bearing experimental data to obtain the optimal combination of influencing parameters, and realize the collected signals by decomposition to obtain K modal components, where is k = 1, 2,⋯, K
- (3)
- Calculate the entropy value containing uk, to construct the corresponding energy eigenvector T; construct the value of T as follows:
- (4)
- Input the obtained T value into the PSO-SVM as an input vector and complete the fault type identification and classification of the rolling bearing through the PSO-SVM.
5. Application Case Analysis
6. Conclusions
- (1)
- This paper proposes the NGA-VMD algorithm to reduce the influence of the two key parameters (α, K) of the VMD algorithm. The two affected parameters are optimized for the VMD algorithm to implement signal processing more effectively and accurately. The NGA-VMD algorithm, as a new signal processing method, greatly reduces the interference of human factors on the processing results, has better noise robustness and data processing efficiency, and can better highlight the local characteristics of the original sample data.
- (2)
- Simulation and analysis of experimental results show that relative to VMD and EMD, the NGA-VMD algorithm can achieve rapid adaptive signal decomposition, avoid the occurrence of over or under decomposition, and greatly reduce the interference of human factors. Under the same experimental conditions, the NGA-VMD algorithm performs modal decomposition, and the average correct recognition rate of faults is 99.17%, with the average correct recognition rates of GOA-VMD, VMD, and EMD algorithms being 97.5%, 94.17%, and 87.5%, respectively. The NGA-VMD algorithm takes 95.8 s, which is 7.62% faster than GOA-VMD, 49.9% faster than VMD, and 79.5% faster than EMD.
- (3)
- The NGA introduced in this paper realized the optimization of the VMD algorithm, combined with PSO-SVM to accurately complete the fault identification and classification of rolling bearings, and obtained a good diagnostic effect. It provides a more practical solution for the analysis and treatment of other types of mechanical faults and is worth further in-depth research.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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Middle Diameter of Bearing | Diameter of the Roller | Contact Angle | Number of Rollers |
---|---|---|---|
38.5 mm | 8 mm | 0° | 9 |
Rotational Speed | Diameter of Fault Point | Sampling Frequency | Initial Number of Sampling Point |
---|---|---|---|
1797 r/min | 0.1778 mm | 12 kHz | 2048 |
Sampling Points | Average Entropy |
---|---|
512 | 0.863 |
1024 | 0.851 |
2048 | 0.644 |
4086 | 0.631 |
8192 | 0.620 |
State | Local Minimum Entropy | (K, α) |
---|---|---|
NOR | 0.5602 | (4, 860) |
IRF | 0.5998 | (7, 1000) |
ORF | 0.5473 | (9, 1200) |
REF | 0.5728 | (5, 600) |
State | Sample | T | ||||||||
---|---|---|---|---|---|---|---|---|---|---|
E1 | E2 | E3 | E4 | E5 | E6 | E7 | E8 | E9 | ||
NOR | 1 | 0.2159 | 0.3151 | 0.2621 | 0.2319 | — | — | — | — | — |
2 | 0.2239 | 0.3381 | 0.2113 | 0.2245 | — | — | — | — | — | |
IRF | 1 | 0.1023 | 0.1802 | 0.2634 | 0.3011 | 0.3689 | 0.3731 | 0.3623 | — | — |
2 | 0.1076 | 0.1864 | 0.2788 | 0.2193 | 0.3514 | 0.3677 | 0.3799 | — | — | |
ORF | 1 | 0.1143 | 0.2001 | 0.3114 | 0.2987 | 0.4567 | 0.4312 | 0.4501 | 0.3644 | 0.3127 |
2 | 0.1533 | 0.2409 | 0.3002 | 0.3233 | 0.4763 | 0.4772 | 0.3986 | 0.3876 | 0.3321 | |
REF | 1 | 0.1556 | 0.2192 | 0.4018 | 0.4871 | 0.1984 | — | — | — | — |
2 | 0.1848 | 0.2997 | 0.3851 | 0.4639 | 0.1869 | — | — | — | — |
State | NOR | IRF | ORF | REF | Average Accuracy | Running Time/s | ||
---|---|---|---|---|---|---|---|---|
Number of samples | 30 | 30 | 30 | 30 | 99.17% | 95.8 | ||
Signal processing | NGA-VMD | NOR | 30 | 0 | 0 | 0 | ||
IRF | 0 | 30 | 0 | 1 | ||||
ORF | 0 | 0 | 30 | 0 | ||||
REF | 0 | 0 | 0 | 29 | ||||
Classification accuracy | 100% | 100% | 100% | 96.67% | ||||
GOA-VMD | NOR | 30 | 0 | 0 | 0 | 97.50% | 103.1 | |
IRF | 0 | 29 | 1 | 1 | ||||
ORF | 0 | 0 | 29 | 0 | ||||
REF | 0 | 1 | 0 | 29 | ||||
Classification accuracy | 100% | 96.67% | 96.67% | 96.67% | ||||
VMD | NOR | 30 | 0 | 0 | 0 | 94.17% | 143.6 | |
IRF | 0 | 29 | 0 | 0 | ||||
ORF | 0 | 1 | 28 | 4 | ||||
REF | 0 | 0 | 2 | 26 | ||||
Classification accuracy | 100% | 96.67% | 93.33% | 86.67% | ||||
EMD | NOR | 30 | 0 | 0 | 0 | 87.50% | 171.9 | |
IRF | 0 | 26 | 2 | 3 | ||||
ORF | 0 | 4 | 25 | 2 | ||||
REF | 0 | 0 | 3 | 24 | ||||
Classification accuracy | 100% | 86.67% | 83.33% | 80.00% |
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Shi, R.; Wang, B.; Wang, Z.; Liu, J.; Feng, X.; Dong, L. Research on Fault Diagnosis of Rolling Bearings Based on Variational Mode Decomposition Improved by the Niche Genetic Algorithm. Entropy 2022, 24, 825. https://doi.org/10.3390/e24060825
Shi R, Wang B, Wang Z, Liu J, Feng X, Dong L. Research on Fault Diagnosis of Rolling Bearings Based on Variational Mode Decomposition Improved by the Niche Genetic Algorithm. Entropy. 2022; 24(6):825. https://doi.org/10.3390/e24060825
Chicago/Turabian StyleShi, Ruimin, Bukang Wang, Zongyan Wang, Jiquan Liu, Xinyu Feng, and Lei Dong. 2022. "Research on Fault Diagnosis of Rolling Bearings Based on Variational Mode Decomposition Improved by the Niche Genetic Algorithm" Entropy 24, no. 6: 825. https://doi.org/10.3390/e24060825
APA StyleShi, R., Wang, B., Wang, Z., Liu, J., Feng, X., & Dong, L. (2022). Research on Fault Diagnosis of Rolling Bearings Based on Variational Mode Decomposition Improved by the Niche Genetic Algorithm. Entropy, 24(6), 825. https://doi.org/10.3390/e24060825