Convolutional Neural Network-Based Pattern Recognition of Partial Discharge in High-Speed Electric-Multiple-Unit Cable Termination
Abstract
:1. Introduction
- Characteristic parameters of terminal discharge signals in high-speed EMU cables are not extracted; instead, the four types of discharge signals are directly used as input to the model, achieving high accuracy.
- The impact of different training datasets on the classification performance of the terminal discharge signal recognition model for high-speed EMUs is compared and analyzed. The proposed CNN-based model is demonstrated to flexibly meet the varying requirements for processing time and accuracy across different scenarios.
- The proposed recognition model for terminal discharge signals in high-speed EMU cables is compared with two existing NN-based models, and it is verified that the CNN-based model exhibits superior recognition effectiveness.
2. Experimental Data Acquisition
2.1. PD Test Platform
2.2. Four Typical Defect PD Models
- Tip discharge model: This model employs a steel needle with a curvature radius of 5 μm and uses ethylene–propylene–diene monomer (EPDM) rubber film as the insulating medium, with a diameter of 120 mm and a thickness of 3 mm. A ground electrode with a diameter of 80 mm is connected below the rubber film, and the steel needle is linked to a high-voltage electrode. The tip is inserted into the film to a depth of approximately 1 mm.
- Surface discharge model: In this model, the insulating medium consists of an EPDM rubber film with a diameter of 60 mm, structured as a double layer, and has a total thickness of 6 mm. Below this, a ground electrode with a diameter of 80 mm is connected, and a copper disk with a diameter of 30 mm is positioned between the insulating medium and the high-voltage electrode.
- Air gap discharge model: In this model, the insulating medium is again EPDM rubber film, with a diameter of 60 mm and a thickness of 3 mm. To simulate an air gap discharge, a circular hole with a diameter of 1 mm is created within the insulating medium. A copper disk is placed between the high-voltage electrode and the insulating medium. To avoid surface discharge interference, the high-voltage electrode in the air gap discharge model is sealed with epoxy resin.
- Suspension discharge model: In this model, the insulating medium is EPDM rubber with a diameter of 120 mm and a thickness of 3 mm, and the high electric electrode is a copper disk with a diameter of 30 mm. There is a certain gap between the high electrode and the insulating medium, and a copper sheet with a thickness of 1 mm is placed in the gap as a suspended metal particle to simulate the suspended electrode.
2.3. High-Frequency Pulse Signals of PD with Four Typical Defects
3. Design of Cable Discharge Classification Model
3.1. CNN
3.2. PD Data for Training and Verification
3.3. Classification Steps
- Signal acquisition: A test platform is built, and cable terminal models with four types of defects are created. The HFCT is used to measure the PD signals of the cable terminals.
- Dataset construction: Four different types of discharge signals are collected, and a single signal is extracted. For each of the four signals, 251 sampling points are selected, resulting in 400 sets of data for each type. Out of these 1600 datasets, 1200 are randomly chosen to construct the training dataset, while the remaining 400 sets are designated as the test dataset.
- Data normalization: To simplify the data complexity, disparate data in the set are processed. This step facilitates faster gradient descent, aiding in finding the optimal solution and enhancing the model’s accuracy and convergence speed. The dataset from step 2 is normalized using the following expression.
- CNN training and classification: The normalized dataset from step 3 serves as the input to the constructed CNN-based model. After processing through two convolutional layers, two pooling layers, and one fully connected layer, the classification results are produced.
4. Results Analysis
4.1. Influence of Different Optimizers
4.2. Influence of Different Training Data Amounts
4.3. Comparison of CNN with Other Classification Models
5. Conclusions
- Compared with SGDM and RMSprop optimizers, the Adam optimizer shows lower loss and higher classification accuracy in CNN-based classification model training, and the training effect is more stable.
- It is found that increasing the amount of training data can enhance the robustness of the model and improve the classification accuracy but at the cost of increasing the training time.
- Compared with the BPNN-based and RBFNN-based classification models, the CNN-based classification model proposed in this paper shows higher classification accuracy and can identify four different types of defects more accurately.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Detection Method | Major Advantage | Major Defect | Main Applicable Scopes |
---|---|---|---|
Pulse current method | High sensitivity | Limited anti-interference capability | Offline measurement |
Chemical detection method | Strong anti-interference | Challenges in online gas component extraction | Oil filling equipment |
Radio frequency detection method | High sensitivity without affecting equipment operation | Limited anti-interference capability | Online measurement |
Infrared imaging | High sensitivity | Incomplete detection | Electrical equipment |
Flash spotting | Strong resistance to electromagnetic interference | Expensive | Laboratory research |
High-frequency pulse current method | High sensitivity; easy to install | Susceptible to ground commutation | High voltage cables and electrical equipment |
Ultrasonic method | Strong resistance to electromagnetic interference | Average sensitivity | Electrical primary equipment |
Ultra-high frequency method | High sensitivity | Limitations in quantifying | Electrical equipment such as transformers |
Predicted | 0 | 1 | |
---|---|---|---|
Actual | |||
0 | |||
1 |
Discharge Type | Adam | RMSprop | SGDM | |||
---|---|---|---|---|---|---|
Precision (%) | Accuracy (%) | Precision (%) | Accuracy (%) | Precision (%) | Accuracy (%) | |
Surface Discharge | 100 | 95.8 | 100 | 94.5 | 100 | 95 |
Tip Discharge | 92.5 | 84.4 | 90.1 | |||
Suspended Discharge | 100 | 98.1 | 100 | |||
Air Gap Discharge | 91.2 | 96.3 | 90.1 |
Training Data Volume | Surface Discharge | Tip Discharge | Suspended Discharge | Air Gap Discharge | Accuracy |
---|---|---|---|---|---|
20% | 74.2% | 63.4% | 85.6% | 71.4% | 73.6% |
40% | 95.4% | 79.9% | 96.7% | 81.8% | 88.5% |
60% | 99.2% | 90.2% | 99.6% | 89.8% | 94.7% |
80% | 100% | 95.8% | 100% | 93.8% | 97.4% |
90% | 100% | 97.9% | 100% | 96.8% | 98.7% |
Discharge Type | CNN | RBFNN | BPNN | |||
---|---|---|---|---|---|---|
Precision (%) | Accuracy (%) | Precision (%) | Accuracy (%) | Precision (%) | Accuracy (%) | |
Surface Discharge | 100 | 95.8 | 80.2 | 91.2 | 91.6 | 94.8 |
Tip Discharge | 92.5 | 89.7 | 97 | |||
Suspended Discharge | 100 | 96.8 | 93 | |||
Air Gap Discharge | 91.2 | 98.2 | 97.8 |
Discharge Type | CNN | RBFNN | BPNN | |||
---|---|---|---|---|---|---|
Recall (%) | F1-Score (%) | Recall (%) | F1-Score (%) | Recall (%) | F1-Score (%) | |
Surface Discharge | 100 | 100 | 100 | 89 | 93.3 | 92.4 |
Tip Discharge | 90.8 | 91.6 | 85 | 87.3 | 97 | 97 |
Suspended Discharge | 100 | 100 | 95.6 | 96.2 | 91.1 | 92 |
Air Gap Discharge | 92.7 | 92 | 86.7 | 92.1 | 97.3 | 97.5 |
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Sun, C.; Wu, G.; Pan, G.; Zhang, T.; Li, J.; Jiao, S.; Liu, Y.-C.; Chen, K.; Liu, K.; Xin, D.; et al. Convolutional Neural Network-Based Pattern Recognition of Partial Discharge in High-Speed Electric-Multiple-Unit Cable Termination. Sensors 2024, 24, 2660. https://doi.org/10.3390/s24082660
Sun C, Wu G, Pan G, Zhang T, Li J, Jiao S, Liu Y-C, Chen K, Liu K, Xin D, et al. Convolutional Neural Network-Based Pattern Recognition of Partial Discharge in High-Speed Electric-Multiple-Unit Cable Termination. Sensors. 2024; 24(8):2660. https://doi.org/10.3390/s24082660
Chicago/Turabian StyleSun, Chuanming, Guangning Wu, Guixiang Pan, Tingyu Zhang, Jiali Li, Shibo Jiao, Yong-Chao Liu, Kui Chen, Kai Liu, Dongli Xin, and et al. 2024. "Convolutional Neural Network-Based Pattern Recognition of Partial Discharge in High-Speed Electric-Multiple-Unit Cable Termination" Sensors 24, no. 8: 2660. https://doi.org/10.3390/s24082660
APA StyleSun, C., Wu, G., Pan, G., Zhang, T., Li, J., Jiao, S., Liu, Y.-C., Chen, K., Liu, K., Xin, D., & Gao, G. (2024). Convolutional Neural Network-Based Pattern Recognition of Partial Discharge in High-Speed Electric-Multiple-Unit Cable Termination. Sensors, 24(8), 2660. https://doi.org/10.3390/s24082660