| Literature DB >> 30642081 |
Lin Lin1, Bin Wang2, Jiajin Qi3, Lingling Chen4, Nantian Huang5.
Abstract
The reliability and performance of high-voltage circuit breakers (HVCBs) will directly affect the safety and stability of the power system itself, and mechanical failures of HVCBs are one of the important factors affecting the reliability of circuit breakers. Moreover, the existing fault diagnosis methods for circuit breakers are complex and inefficient in feature extraction. To improve the efficiency of feature extraction, a novel mechanical fault feature selection and diagnosis approach for high-voltage circuit breakers, using features extracted without signal processing is proposed. Firstly, the vibration signal of the HVCBs' operating system, which collects the amplitudes of signals from normal vibration signals, is segmented by a time scale, and obviously changed. Adopting the ensemble learning method, features were extracted from each part of the divided signal, and used for constructing a vector. The Gini importance of features is obtained by random forest (RF), and the feature is ranked by the features' importance index. After that, sequential forward selection (SFS) is applied to determine the optimal subset, while the regularized Fisher's criterion (RFC) is used to analyze the classification ability. Then, the optimal subset is input to the hierarchical hybrid classifier, and based on a one-class support vector machine (OCSVM) and RF for fault diagnosis, the state is accurately recognized by OCSVM. The known fault types are identified using RF, and the identification results are calibrated with OCSVM of a particular fault type. The experimental proves that the new method has high feature extraction efficiency and recognition accuracy by the measured HVCBs vibration signal, while the unknown fault type data of the untrained samples is effectively identified.Entities:
Keywords: high voltage circuit breaker; one-class support vector machine; random forest
Year: 2019 PMID: 30642081 PMCID: PMC6358747 DOI: 10.3390/s19020288
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Diagnosis process of the hybrid classifier.
Figure 2Vibration signal acquisition system.
Figure 3Measured vibration signals and the time domain segmentation unit: (a) The normal condition; (b) The iron core stagnation; (c) The screw loosening condition; (d) The poor lubrication condition.
Formula of features.
| Feature | Formula | Feature | Formula |
|---|---|---|---|
| Mean value |
| Standard deviation |
|
| Variance |
| Skewness |
|
| Kurtosis |
| Peak-to-peak value |
|
| Square root of amplitude |
| Mean amplitude |
|
| Peak value |
| Shape factor |
|
| Crest factor |
| Impulse factor |
|
| Margin factor |
| Shannon entropy |
|
| Renyi entropy |
| Tsallis entropy |
|
| Root-mean-square value |
|
Distribution of features.
| Feature | Feature Number (Ts) | Feature Number (Tp) | Feature | Feature Number (Ts) | Feature Number (Tp) |
|---|---|---|---|---|---|
| Mean value | F1–F29 | F1–F9 | Standard deviation | F30–F58 | F10–F18 |
| Variance | F59–F87 | F19–F27 | Skewness | F88–F116 | F28–F36 |
| Kurtosis | F117–F145 | F37–F45 | Peak-to-peak value | F146–F174 | F46–F54 |
| Square root of amplitude | F175–F203 | F55–F63 | Mean amplitude | F204–F232 | F64–F72 |
| Peak value | F233–F261 | F73–F81 | Shape factor | F262–F290 | F82–F90 |
| Crest factor | F291–F319 | F91–F99 | Impulse facto | F320–F348 | F100–F108 |
| Margin factor | F349–F377 | F109–F117 | Shannon entropy | F378–F406 | F118–F126 |
| Renyi entropy | F407–F435 | F127–F135 | Tsallis entropy | F436–F464 | F136–F144 |
| Root-mean-square value | F465–F493 | F145–F153 |
Figure 4The time domain segmentation of EMD, LMD, and EEMD: (a) IMFs decomposed by EMD method; (b) PFs decomposed by the LMD method; (c) IMFs decomposed by the EEMD method.
State recognition results.
| Test | 9 Segments | 29 Segments | ||||||||
|---|---|---|---|---|---|---|---|---|---|---|
| C1 | C2 | C3 | Di | Ac (%) | C1 | C2 | C3 | Di | Ac (%) | |
| C1 | 10 | 0 | 0 | 153 | 100 | 10 | 0 | 0 | 493 | 100 |
| C2 | 0 | 10 | 0 | 153 | 100 | 0 | 10 | 0 | 439 | 100 |
| C3 | 0 | 0 | 10 | 153 | 100 | 0 | 0 | 10 | 439 | 100 |
| EMD-C1 | 10 | 0 | 0 | 1530 | 100 | 10 | 0 | 0 | 4930 | 100 |
| EMD-C2 | 1 | 9 | 0 | 1530 | 90 | 0 | 10 | 0 | 4390 | 100 |
| EMD-C3 | 0 | 0 | 10 | 1530 | 100 | 1 | 0 | 9 | 4390 | 90 |
| LMD-C1 | 10 | 0 | 0 | 1071 | 100 | 10 | 0 | 0 | 3451 | 100 |
| LMD-C2 | 0 | 10 | 0 | 1071 | 100 | 0 | 9 | 1 | 3451 | 90 |
| LMD-C3 | 1 | 0 | 9 | 11 | 90 | 0 | 0 | 10 | 3451 | 100 |
| EEMD-C1 | 10 | 0 | 0 | 1377 | 100 | 10 | 0 | 0 | 4437 | 100 |
| EEMD-C2 | 0 | 10 | 0 | 1377 | 100 | 0 | 10 | 0 | 4437 | 100 |
| EEMD-C3 | 0 | 2 | 8 | 1377 | 80 | 0 | 1 | 9 | 4437 | 90 |
Figure 5Time statistics of the feature extraction.
Figure 6Gini importance: (a) Gini importance of 29 segments in time domain segmentation; (b) Gini importance of nine segments in time domain segmentation.
Figure 7Feature distribution between high and low Gini importance: (a) 29 segments with the highest Gini importance; (b) 29 segments with the lowest Gini importance; (c) nine segments with the highest Gini importance; (d) nine segments with the lowest Gini importance.
Figure 8J and classification accuracy of different feature sets: (a) 29 segments of time domain segmentation; (b) nine segments of time domain segmentation.
The best subset of features.
| Feature Number | Feature Description |
|---|---|
| F450 | Mean amplitude of 27 segments |
| F62 | Peak value of four segments |
| F2 | Standard deviation of one segment |
| F236 | Renyi entropy of 14 segments |
| F262 | Square root of the amplitude of 16 segments |
| F48 | Shannon entropy of three segments |
| F191 | Skewness of 12 segments |
| F4 | Skewness of one segment |
| F438 | Margin factor of 26 segments |
| F408 | Root-mean-square value of 24 segments |
| F65 | Shannon entropy of four segments |
| F234 | Margin factor of 14 segments |
Diagnosis result of the patterns not contained in the training samples, using random forest (RF) and support vector machine (SVM).
| Test | RF | SVM | ||||||||
|---|---|---|---|---|---|---|---|---|---|---|
| C0 | C1 | C2 | C3 | Ac | C0 | C1 | C2 | C3 | Ac | |
| C0 | 10 | 0 | 0 | 0 | 100 | 10 | 0 | 0 | 0 | 100 |
| C1 | 0 | 10 | 0 | 0 | 100 | 0 | 10 | 0 | 0 | 100 |
| C2 | 0 | 0 | 10 | 0 | 100 | 0 | 0 | 10 | 0 | 100 |
| C3 | 1 | 4 | 5 | 0 | 0 | 10 | 0 | 0 | 0 | 0 |
Diagnosis result of the patterns not contained in the training samples using the O-R and O-R-O.
| Test | O-R | O-R-O | ||||||||
|---|---|---|---|---|---|---|---|---|---|---|
| C0 | C1 | C2 | C3 | Ac | C0 | C1 | C2 | C3 | Ac | |
| C0 | 10 | 0 | 0 | 0 | 100 | 10 | 0 | 0 | 0 | 100 |
| C1 | 0 | 10 | 0 | 0 | 100 | 0 | 10 | 0 | 0 | 100 |
| C2 | 0 | 0 | 10 | 0 | 100 | 0 | 0 | 10 | 0 | 100 |
| C3 | 0 | 4 | 6 | 0 | 0 | 0 | 0 | 0 | 10 | 100 |