An Integrated Model for Transformer Fault Diagnosis to Improve Sample Classification near Decision Boundary of Support Vector Machine
Abstract
:1. Introduction
2. A Fault Diagnosis Approach Based on GAPSVM Integrated with Expert Experience
2.1. Optimization of Transformer DGA Features Based on GA and SVM
2.1.1. Gas Features Dissolved in Oil
2.1.2. DGA Feature Selection Based on GA Combined with SVM
2.1.3. Nonlinear Support Vector Machine
2.1.4. Probabilistic SVM
2.2. GAPSVM Integrated with FTR Model
2.2.1. Fuzzy Three-Ratio Model
2.2.2. Analysis of PSVM and the Combination Method of GAPSVM and FTR
- If pi > 0.5, the SVM has high confidence that the sample belongs to the corresponding fault type.
- If pi ≤ 0.5, the sample is near the decision boundary of the SVM which carries out the classification of the fault in this situation. SVM has low confidence to classify the samples, and misclassification usually occurs in this situation.
- The sample is more likely to be divided into the class with higher probability.
3. Result Analysis
3.1. Fault Sample Data Source and Data Preprocessing
3.2. DGA Feature Optimization Result Analysis
3.3. Analysis of the Output of GAPSVM
3.3.1. Threshold Optimization of the Integrated Model
3.3.2. Analysis of Accuracy of GAPSVM
3.4. Comparisons with Other Diagnosis Methods
3.5. Model Evaluation
3.6. Model Validation Using Practical Dataset
4. Conclusions
- The ODF is selected from 36 DGA features by the GA and SVM, and the average testing accuracy of GASVM is 82.96%, which is higher than that of the IEC three-ratio feature (75.41%) and DGA full data (57.53%). The ODF is more suitable as the input feature of the power transformer fault diagnosis model.
- The AI and expert experience combined model is established based on the IEC TC 10 dataset, and the average testing accuracy is 86.80% after 10-time computation, which is higher than kNN (64.00%), BPNN (81.60%), GASVM (82.00%), the method in [18] (83.60%), and the method in [19] (84.4%). Specifically, this model avoids misclassification efficiently when a sample is near the decision boundary of GAPSVM. Moreover, when 30 groups of DGA data from the State Grid Co. of China are diagnosed by the proposed model trained by 118 groups of IEC TC 10 DGA data, diagnostic accuracy is 86.67%. Additionally, the validity and generalization are verified by measure indexes of classification.
- A total of 15 real cases with missing values are tested by six methods. GAPSVM integrated with the FTR model correctly diagnosed the fault types of the 13 cases, which proves that AI-based algorithms integrated with expert experience have great robustness.
Author Contributions
Funding
Conflicts of Interest
References
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No | DGA Feature | No | DGA Feature | No | DGA Feature |
---|---|---|---|---|---|
1 | H2 | 13 | H2/CO | 25 | C2H2/CO2 |
2 | CH4 | 14 | H2/CO2 | 26 | C2H2/TH |
3 | C2H2 | 15 | H2/TH | 27 | C2H4/C2H6 |
4 | C2H4 | 16 | CH4/C2H2 | 28 | C2H4/CO |
5 | C2H6 | 17 | CH4/C2H4 | 29 | C2H4/CO2 |
6 | CO | 18 | CH4/C2H6 | 30 | C2H4/TH |
7 | CO2 | 19 | CH4/CO | 31 | C2H6/CO |
8 | TH | 20 | CH4/CO2 | 32 | C2H6/CO2 |
9 | H2/CH4 | 21 | CH4/TH | 33 | C2H6/TH |
10 | H2/C2H2 | 22 | C2H2/C2H4 | 34 | CO/CO2 |
11 | H2/C2H4 | 23 | C2H2/C2H6 | 35 | CO/TH |
12 | H2/C2H6 | 24 | C2H2/CO | 36 | CO2/TH |
Parameters | Settings |
---|---|
Maximum iteration | 200 |
Population size | 100 |
Crossover probability | 0.9 |
Mutation probability | 0.01 |
Range of C | [0, 200] |
Range of σ | [0, 100] |
Ranges of Gas Ratios | Codes of Different Gas Ratios | ||
---|---|---|---|
C2H2/C2H4 | CH4/H2 | C2H4/C2H6 | |
<0.1 | 0 | 1 | 0 |
0.1–1 | 1 | 0 | 0 |
1–3 | 1 | 2 | 1 |
>3 | 2 | 2 | 2 |
No | Fault Type | Code of the Ratios | ||
---|---|---|---|---|
C2H2/C2H4 | CH4/H2 | C2H4/C2H6 | ||
1 | Discharge of low energy density | 1 or 2 | 0 | 1 or 2 |
2 | Discharge of high energy density | 1 | 0 | 2 |
3 | Thermal fault of low temperature < 300 °C | 0 | 0 or 2 | 1 or 2 |
4 | Thermal fault of high temperature ≥ 300 °C | 0 | 2 | 1 or 2 |
5 | No fault | 0 | 0 | 0 |
Fault Type | LE-D | HE-D | LM-T | H-T | N-C |
---|---|---|---|---|---|
Sample quantity | 23 | 45 | 10 | 14 | 26 |
DGA Feature | 1 | 2 | 3 |
---|---|---|---|
DGA ratios | H2/CH4 | H2/C2H4 | H2/C2H6 |
H2/C2H6 | H2/C2H6 | CH4/C2H2 | |
H2/TH | H2/TH | CH4/C2H6 | |
CH4/C2H2 | CH4/CO | C2H2/C2H4 | |
CH4/C2H6 | CH4/CO2 | C2H2/CO | |
C2H2/C2H4 | C2H2/C2H4 | C2H4/TH | |
C2H4/TH | C2H2/C2H6 | C2H6/TH | |
C2H6/TH | CO/CO2 | CO/CO2 | |
CO/CO2 | C2H4/TH | -- | |
-- | C2H6/TH | -- | |
CV accuracy | 89.83% | 88.98% | 88.14% |
Features | Average Accuracy (%) | Computing Time (s) | ||
---|---|---|---|---|
Training | Testing | Training | Testing | |
DGA full data | 89.71 | 57.53 | 37.1847 | 2.19 × 10−4 |
Three-ratio feature | 91.25 | 75.41 | 36.6727 | 1.44 × 10−4 |
ODF | 94.84 | 82.96 | 37.7412 | 2.65 × 10−4 |
Max Probability | Training Accuracy | Testing Accuracy | |
---|---|---|---|
>0.5 | Max | 100% | 88.64% |
Min | 97.08% | 82.96% | |
Mean | 97.53% | 86.85% | |
≤0.5 | Max | 92.00% | 85.71% |
Min | 85.00% | 50.00% | |
Mean | 89.83% | 56.72% |
Diagnosis Method | Testing Accuracy (%) |
---|---|
kNN | 64.00 |
BPNN | 81.60 |
GASVM | 82.00 |
Method in [18] | 83.60 |
Method in [19] | 84.40 |
This Paper | 86.80 |
Fault Type | LE-D | HE-D | LM-T | H-T | N-C |
---|---|---|---|---|---|
True samples | 6 | 6 | 5 | 5 | 7 |
Predicted samples | 6 | 6 | 7 | 6 | 4 |
Predicted by the Proposed Model | ||||||
---|---|---|---|---|---|---|
LE-D | HE-D | LM-T | H-T | N-C | ||
Actual | LE-D | 6 | 0 | 0 | 0 | 0 |
HE-D | 0 | 7 | 0 | 0 | 0 | |
LM-T | 0 | 0 | 4 | 1 | 0 | |
H-T | 0 | 0 | 0 | 5 | 0 | |
N-C | 0 | 1 | 2 | 0 | 4 |
Actual Fault | H2 | CH4 | C2H2 | C2H4 | C2H6 | CO | CO2 | TH | Diagnostic Result |
---|---|---|---|---|---|---|---|---|---|
LE-D | 78 | 20 | 28 | 13 | 11 | / | 784 | 72 | LE-D |
95 | 10 | 39 | 11 | / | 122 | 467 | 60 | LE-D | |
8 | / | 101 | 43 | / | 192 | 4067 | 144 | LE-D | |
HE-D | 7020 | 1850 | 4410 | 2960 | / | 2140 | 1000 | 9220 | HE-D |
120 | 31 | 94 | 66 | / | 48 | 271 | 191 | HE-D | |
5100 | 1430 | 1010 | 1140 | / | 117 | 197 | 3580 | HE-D | |
LM-T | 48 | 610 | / | 10 | 29 | 1900 | 970 | 649 | HE-D |
12 | 18 | / | 4 | 4 | 559 | 1710 | 26 | LM-T | |
66 | 60 | / | 7 | 2 | 76 | 90 | 69 | LM-T | |
H-T | 8800 | 64,064 | / | 95,650 | 72,128 | 290 | 90,300 | 231,842 | H-T |
1100 | 1600 | 26 | 2010 | 221 | / | 1430 | 3857 | H-T | |
1860 | 4980 | 1600 | 10,700 | / | 158 | 1300 | 17,280 | LM-T | |
N-C | 134 | 134 | / | 45 | 157 | 1008 | 10,528 | 336 | H-T |
/ | 225 | 3 | 110 | 225 | 785 | 4500 | 563 | N-C | |
200 | 3 | / | 200 | 50 | 1000 | 20,000 | 253 | N-C |
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Zhang, Y.; Wang, Y.; Fan, X.; Zhang, W.; Zhuo, R.; Hao, J.; Shi, Z. An Integrated Model for Transformer Fault Diagnosis to Improve Sample Classification near Decision Boundary of Support Vector Machine. Energies 2020, 13, 6678. https://doi.org/10.3390/en13246678
Zhang Y, Wang Y, Fan X, Zhang W, Zhuo R, Hao J, Shi Z. An Integrated Model for Transformer Fault Diagnosis to Improve Sample Classification near Decision Boundary of Support Vector Machine. Energies. 2020; 13(24):6678. https://doi.org/10.3390/en13246678
Chicago/Turabian StyleZhang, Yiyi, Yuxuan Wang, Xianhao Fan, Wei Zhang, Ran Zhuo, Jian Hao, and Zhen Shi. 2020. "An Integrated Model for Transformer Fault Diagnosis to Improve Sample Classification near Decision Boundary of Support Vector Machine" Energies 13, no. 24: 6678. https://doi.org/10.3390/en13246678
APA StyleZhang, Y., Wang, Y., Fan, X., Zhang, W., Zhuo, R., Hao, J., & Shi, Z. (2020). An Integrated Model for Transformer Fault Diagnosis to Improve Sample Classification near Decision Boundary of Support Vector Machine. Energies, 13(24), 6678. https://doi.org/10.3390/en13246678