A Comprehensive Fault Diagnosis Method for Rolling Bearings Based on Refined Composite Multiscale Dispersion Entropy and Fast Ensemble Empirical Mode Decomposition
Abstract
:1. Introduction
2. Basic Theory
2.1. Fast Ensemble Empirical Mode Decomposition (FEEMD)
2.2. Dispersion Entropy and Refined Composite Multiscale Dispersion Entropy
2.2.1. Dispersion Entropy
2.2.2. Refined Composite Multiscale Dispersion Entropy (RCMDE)
2.2.3. Parameter Settings of RCMDE
2.3. Max-Relevance And Min-Redundancy (mRMR)
3. The Proposed Method
3.1. Fault Detection
3.2. Fault Classification
- (1)
- Collect the vibration signals under different working conditions of rolling bearings.
- (2)
- Divide the vibration signals into non-overlapped samples.
- (3)
- Calculate the RCMDE values of vibration signals at different scale factors. Find out a threshold based on RCMDE to judge the health status of a bearing. If it is healthy, output normal to present the working condition of the bearing. Otherwise, identify the faults of different types and severity in the next steps.
- (4)
- The fault vibration signals are decomposed into multiple IMFs by FEEMD.
- (5)
- The RCMDE values of the first several IMFs are calculated to construct the candidate feature pool.
- (6)
- The mRMR is employed to select the sensitive features from the candidate feature pool to generate the final feature vectors.
- (7)
- The final feature vectors are fed into the random forest classifier to identify different fault types and severity.
Algorithm 1. The Pseudocode of the Fault Diagnosis Algorithm |
1 Input the vibration signals of N different working conditions 2 Calculate the RCMDE values Ri of different working conditions at scale factor τmax 3 Define a threshold § 4 If Ri > § 5 Output “Normal” 6 Else 7 Decompose the fault vibration signals of L different fault working conditions into m IMFs 8 Calculate the RCMDE values of the first k IMFs at scale factor τ, (τ = 1,2, …, τmax) 9 Then, for fault working conditions, the candidate feature pool is formed with a size of E × F, (E is number of fault sample, F = k × τmax) 10 For training samples Etrain × F, training label Ltrain, select s features from ranked features by mRMR, obtain Etrain × Strain 11 For testing samples Etest × F, select s features according to ranking results of training samples, obtain Etest × Stest 12 Put Etrain × Strain, Ltrain and Etest × Stest into RF classifier 13 Obtain test label Ltest 14 Output fault working condition |
4. Experiment Results
4.1. Experimental Data
4.2. Result and Analysis
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Working Conditions | Severity (Inches) | Abbreviation | Number of Training Samples (20%) | Number of Testing Samples (80%) | Classification Label |
---|---|---|---|---|---|
Normal | None | N | 22 | 88 | 0 |
Ball fault | 0.007 | B007 | 22 | 88 | 1 |
0.014 | B014 | 22 | 88 | 2 | |
0.021 | B021 | 22 | 88 | 3 | |
Inner race fault | 0.007 | IR007 | 22 | 88 | 4 |
0.014 | IR014 | 22 | 88 | 5 | |
0.021 | IR021 | 22 | 88 | 6 | |
Outer race fault | 0.007 | OR007 | 22 | 88 | 7 |
0.014 | OR014 | 22 | 88 | 8 | |
0.021 | OR021 | 22 | 88 | 9 |
Different Methods | Accuracy (%) | ||
---|---|---|---|
Max | Min | Mean | |
The proposed method | 100 | 98.36 | 99.27 |
FEEMD-MDE and mRMR | 98.99 | 96.72 | 97.93 |
FEEMD-MPE and mRMR | 97.10 | 94.44 | 95.69 |
FEEMD-MSE and mRMR | 98.23 | 93.42 | 96.43 |
Different Methods | Accuracy (%) | ||
---|---|---|---|
Max | Min | Mean | |
FEEMD-RCMDE | 95.08 | 91.16 | 93.41 |
FEEMD-MDE | 91.16 | 87.37 | 89.58 |
FEEMD-MPE | 85.28 | 79.49 | 82.27 |
FEEMD-MSE | 82.95 | 78.79 | 80.81 |
Different Classifier | Accuracy (%) | CPU Time (s) | ||
---|---|---|---|---|
Max | Min | Mean | ||
RF | 100 | 98.36 | 99.27 | 0.29 |
ELM | 99.31 | 96.54 | 97.96 | 0.11 |
SVM | 100 | 98.75 | 99.42 | 12.90 |
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Zhang, W.; Zhou, J. A Comprehensive Fault Diagnosis Method for Rolling Bearings Based on Refined Composite Multiscale Dispersion Entropy and Fast Ensemble Empirical Mode Decomposition. Entropy 2019, 21, 680. https://doi.org/10.3390/e21070680
Zhang W, Zhou J. A Comprehensive Fault Diagnosis Method for Rolling Bearings Based on Refined Composite Multiscale Dispersion Entropy and Fast Ensemble Empirical Mode Decomposition. Entropy. 2019; 21(7):680. https://doi.org/10.3390/e21070680
Chicago/Turabian StyleZhang, Weibo, and Jianzhong Zhou. 2019. "A Comprehensive Fault Diagnosis Method for Rolling Bearings Based on Refined Composite Multiscale Dispersion Entropy and Fast Ensemble Empirical Mode Decomposition" Entropy 21, no. 7: 680. https://doi.org/10.3390/e21070680