Fault Voiceprint Signal Diagnosis Method of Power Transformer Based on Mixup Data Enhancement
Abstract
:1. Introduction
2. Voiceprint Signal Preprocessing and Classifier
2.1. Voiceprint Time Spectrum
2.2. Mel Time Spectrum
2.3. Mixup Data Enhancement
2.4. CNN
3. Voiceprint Signal Diagnosis Process
4. Experiments and Results
4.1. Source of Experimental Data
4.2. Experimental Result
5. Conclusions
- The operating environment of a power transformer is complex and prone to various faults. Since some faults are prone to low probability and few samples exist, it is necessary to enhance and expand the fault set with insufficient samples to make the diagnosis model have good generalization performance. Simple basic data enhancement methods such as flipping and color matching have certain defects when processing spectral images. The dataset enhanced by mixup can increase the robustness of the learning model.
- Compared with the voiceprint time-frequency map, in the Mel time-frequency map, it is easier to distinguish the frequency change of the frequency voiceprint signal. It can greatly reduce the data size of the sample and facilitate the feature extraction of the subsequent depth learning algorithm.
- Mel time-frequency diagram of a power transformer enhanced by mixup data has a good effect when using the CNN algorithm for classification diagnosis. It improved the generalization ability of the model and the diagnostic accuracy is up to 99%. Compared with other similar deep learning algorithms, it has good diagnostic performance for power-transformer fault voiceprint signals.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Network Layer | Number and Size of Convolution Kernels | Step | Network Layer Output |
---|---|---|---|
Convolution layer 1 | 32@3 × 3 | 1 | 32@171 × 170 |
Pool layer 1 | 3 × 3 | 3 | 32@57 × 56 |
Convolution layer 2 | 64@3 × 3 | 1 | 64@55 × 54 |
Pool layer 2 | 3 × 3 | 3 | 64@18 × 18 |
Convolution layer 3 | 128@3 × 3 | 1 | 128@16 × 16 |
Pool layer 3 | 3 × 3 | 3 | 128@5 × 5 |
Full connection layer 1 | 128 | 128 | |
Full connection layer 2 | 4 | 4 |
Fault Number | Fault Type | Training Set | Test Set |
---|---|---|---|
0 | normal | 450 | 150 |
1 | Short-circuit impulse | 450 | 150 |
2 | partial discharge | 450 | 150 |
3 | DC bias | 450 | 150 |
λ | Accuracy/% | Precision/% | Recall/% | F1/% |
---|---|---|---|---|
0 | 96.5 | 96.8 | 96.5 | 96.6 |
0.1 | 97.7 | 97.8 | 97.7 | 97.7 |
0.2 | 98.1 | 99.0 | 98.1 | 98.5 |
0.3 | 98.1 | 98.3 | 98.1 | 98.2 |
0.4 | 98.3 | 99.1 | 98.3 | 98.7 |
0.5 | 99.7 | 99.8 | 99.7 | 99.7 |
0.6 | 99.1 | 99.2 | 99.1 | 99.1 |
0.7 | 98.1 | 99.0 | 98.1 | 98.5 |
0.8 | 97.5 | 97.8 | 97.5 | 97.7 |
0.9 | 97.1 | 97.2 | 97.1 | 97.1 |
1.0 | 96.5 | 97.0 | 96.5 | 96.7 |
random | 98.1 | 98.3 | 98.1 | 98.2 |
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Wan, S.; Dong, F.; Zhang, X.; Wu, W.; Li, J. Fault Voiceprint Signal Diagnosis Method of Power Transformer Based on Mixup Data Enhancement. Sensors 2023, 23, 3341. https://doi.org/10.3390/s23063341
Wan S, Dong F, Zhang X, Wu W, Li J. Fault Voiceprint Signal Diagnosis Method of Power Transformer Based on Mixup Data Enhancement. Sensors. 2023; 23(6):3341. https://doi.org/10.3390/s23063341
Chicago/Turabian StyleWan, Shuting, Fan Dong, Xiong Zhang, Wenbo Wu, and Jialu Li. 2023. "Fault Voiceprint Signal Diagnosis Method of Power Transformer Based on Mixup Data Enhancement" Sensors 23, no. 6: 3341. https://doi.org/10.3390/s23063341
APA StyleWan, S., Dong, F., Zhang, X., Wu, W., & Li, J. (2023). Fault Voiceprint Signal Diagnosis Method of Power Transformer Based on Mixup Data Enhancement. Sensors, 23(6), 3341. https://doi.org/10.3390/s23063341