| Literature DB >> 33266868 |
Nibaldo Rodriguez1, Pablo Alvarez1, Lida Barba2, Guillermo Cabrera-Guerrero1.
Abstract
Discriminative feature extraction and rolling element bearing failure diagnostics are very important to ensure the reliability of rotating machines. Therefore, in this paper, we propose multi-scale wavelet Shannon entropy as a discriminative fault feature to improve the diagnosis accuracy of bearing fault under variable work conditions. To compute the multi-scale wavelet entropy, we consider integrating stationary wavelet packet transform with both dispersion (SWPDE) and permutation (SWPPE) entropies. The multi-scale entropy features extracted by our proposed methods are then passed on to the kernel extreme learning machine (KELM) classifier to diagnose bearing failure types with different severities. In the end, both the SWPDE-KELM and the SWPPE-KELM methods are evaluated on two bearing vibration signal databases. We compare these two feature extraction methods to a recently proposed method called stationary wavelet packet singular value entropy (SWPSVE). Based on our results, we can say that the diagnosis accuracy obtained by the SWPDE-KELM method is slightly better than the SWPPE-KELM method and they both significantly outperform the SWPSVE-KELM method.Entities:
Keywords: Kernel Extreme Learning Machine; multi-scale entropy; stationary wavelet transform
Year: 2019 PMID: 33266868 PMCID: PMC7514634 DOI: 10.3390/e21020152
Source DB: PubMed Journal: Entropy (Basel) ISSN: 1099-4300 Impact factor: 2.524
Figure 1Experimental Setup [56].
Structure of bearing datasets.
| Fault Types | Speed (r/min) | Load (hp) | Fault Diameter (mils) | Samples Numbers | Class Label | Class Label |
|---|---|---|---|---|---|---|
| NB | 1797–1730 | 0–3 | 0 | 240 | 1 | 1 |
| ORF | 1797–1730 | 0–3 | 7 | 240 | 2 | 2 |
| 14 | 240 | 3 | 3 | |||
| 21 | 240 | 4 | 4 | |||
| IRF | 1797–1730 | 0–3 | 7 | 240 | 5 | 5 |
| 14 | 240 | 6 | 6 | |||
| 21 | 240 | 7 | 7 | |||
| 28 | 240 | 8 | – | |||
| BF | 1797–1730 | 0–3 | 7 | 240 | 9 | 8 |
| 14 | 240 | 10 | 9 | |||
| 21 | 240 | 11 | 10 | |||
| 28 | 240 | 12 | – |
drive-end bearing; fan-end bearing.
Figure 2Diagnosis Accuracy (a) and F-score (b) values obtained by the SWPDE-KELM diagnosis with 5-Fold-CV during testing phase for drive end bearing.
Entropy’s parameter for drive-end bearing.
| Method | Embedding ( | Classes ( | Avg. Accuracy |
|---|---|---|---|
| 3-level SWPDE | 2 | 5 | 100 |
| 6 | 100 | ||
| 7 | 100 | ||
| 8 | 100 | ||
| 4-level SWPPE | 4 | —— | 99.97 |
| 5 | 99.97 | ||
| 6 | 100 | ||
| 7 | 100 |
Figure 3Diagnosis Accuracy (a) and F-score (b) values obtained by the SWPPE-KELM diagnosis with 5-Fold-CV during testing phase for drive end bearing.
Figure 4Diagnosis Accuracy (a) and F-score (b) values obtained by the SWPSVE-KELM diagnosis with 5-Fold-CV during testing phase for drive end bearing.
Figure 5Diagnosis Accuracy (a) and F-score (b) values obtained by the SWPDE-KELM diagnosis with 5-Fold-CV during testing phase for fan-end bearing.
Entropy’s parameter for Fan-end Bearing.
| Method | Embedding ( | Clases ( | Avg. Accuracy |
|---|---|---|---|
| 3-level SWPDE | 2 | 5 | 100 |
| 6 | 100 | ||
| 7 | 100 | ||
| 8 | 100 | ||
| 4-level SWPPE | 4 | —— | 99.93 |
| 5 | 99.97 | ||
| 6 | 100 | ||
| 7 | 100 |
Figure 6Diagnosis Accuracy (a) and F-score (b) values obtained by the SWPPE-KELM diagnosis with 5-Fold-CV during testing phase for fan-end bearing.
Figure 7Diagnosis Accuracy (a) and F-score (b) values obtained by the SWPSVE-KELM diagnosis with 5-Fold-CV during testing phase for fan-end bearing.
Comparison between the proposed method and some previous work for bearing fault diagnosis.
| Reference | Feature Extraction | Classification Method | Classes Number | Average Accuracy (%) |
|---|---|---|---|---|
| Brkovic et al. [ | Wavelet energy entropy | Quadratic Classifier | 4 | 100 |
| Li et al. [ | MPE from LMD | SVM with Binary Tree | 4 | 100 |
| Zheng et al. [ | FE from LCD | ANFIS | 7 | 100 |
| Yan et al. [ | IED-PE from IVMD | KNN | 8 | 98.38 |
| [ | Singular entropy from stationary wavelet | KELM | 10 | 100 |
| Mao et al. [ | Fourier amplitude | Deep-ELM | 10 | 100 |
| Yan and Jia [ | Multi-domain features with Laplace score | SVM with PSO | 12 | 100 |
| This work | DE and PE from stationary wavelet | KELM | 12 | 100 |