journal article Open Access Apr 10, 2026

Combining Interpolation Techniques and Lightweight Convolutional Neural Networks for Partial Discharge Image Signal Identification in Transformer Bushings

Electronics Vol. 15 No. 8 pp. 1584 · MDPI AG
View at Publisher Save 10.3390/electronics15081584
Abstract
Partial discharge detection is a key technology for maintaining the normal operation of industrial power equipment. Oil-impregnated paper bushings are crucial components connecting transformers to the power grid. Insulation degradation leads to partial discharge, posing a significant threat to power system operation. Developing on-line diagnostics for partial discharge in transformer bushings and automatic identification of insulation defects can effectively protect system and personnel safety. Due to limitations of small sample sizes and lightweight networks, this study combines interpolation techniques with a lightweight convolutional neural network to improve identification accuracy. This network uses interpolation to maintain the undistorted sample signal from the initial input and reduces training defects from a small sample size. The neural network extracts partial discharge features to determine the defect type and its cause. This study uses a publicly available dataset with discharge signals from generators. Although from a different source from the discharge signals generated by oil-impregnated paper bushings, the signal distribution is similar, allowing for a fair analysis and providing a reference for evaluating discharge signals obtained from oil-impregnated paper bushings or other discharge devices. The experimental results show that the accuracy of this network improved from 97% to over 99% while maintaining low computational complexity and excellent real-time performance. Furthermore, this network was implemented and validated on existing industrial equipment.
Topics

No keywords indexed for this article. Browse by subject →

References
16
[1]
Chan, J.C., Ma, H., Saha, T.K., and Ekanayake, C. (2014, January 27–31). Stochastic noise removal on partial discharge measurement for transformer insulation diagnosis. Proceedings of the 2014 IEEE PES General Meeting|Conference & Exposition, National Harbor, MD, USA. 10.1109/pesgm.2014.6938913
[2]
Gulski "Digital analysis of partial discharges" IEEE Trans. Dielectr. Electr. Insul. (1995) 10.1109/94.469977
[3]
Feng "Simulation of Oil-Paper Sleeve Condition Assessment Based on Frequency Domain Dielectric Spectrum Analysis" Transfomer (2015)
[4]
Qin "Application of Feature Extraction Method Based on 2D-LPEWT in Cable Partial Discharge Analysis" Trans. China Electrotech. Soc. (2019)
[5]
Li, C., Peng, X., Ling, P., Liu, T., Zhou, J., and Zhang, Y. (2024, January 18–22). Phase resolved partial discharge patterns of typical defects from generator stators with different size of samples. Proceedings of the 2024 IEEE International Conference on High Voltage Engineering and Applications (ICHVE), Berlin, Germany. 10.1109/ichve61955.2024.10676087
[6]
Zhu "Feature Extraction and Classification on Partial Discharge Signals of Power Transformers Based on Improved Variational Mode Decomposition and Hilbert Transform" Trans. China Electrotech. Soc. (2017)
[7]
Zhu "Pattern Recognition of Partial Discharges in DC XLPE Cables Based on Convolutional Neural Network" Trans. China Electrotech. Soc. (2020)
[8]
Song "Partial discharge pattern recognition based on deep convolutional networks under complex data sources" High Volt. Eng. (2018)
[9]
Li "Influence of chamber structure on arc quenching in multigap system" High Volt. Appar. (2020) 10.1049/hve.2019.0064
[10]
A New Convolutional Neural Network-Based Data-Driven Fault Diagnosis Method

Long Wen, Xinyu Li, Liang Gao

IEEE Transactions on Industrial Electronics 2018 10.1109/tie.2017.2774777
[11]
Liu "The discrimination method as applied to a deteriorated porcelain insulator used in transmission lines on the basis of a convolution neural network" IEEE Trans. Dielectr. Electr. Insul. (2017) 10.1109/tdei.2017.006840
[12]
Jiang "Fault diagnosis of the bushing infrared images based on mask R-CNN and improved PCNN joint algorithm" High Volt. (2020) 10.1049/hve.2019.0249
[13]
Liu "Online recognition method of partial discharge pattern for transformer bushings based on small sample ultra-micro-CNN network" AIP Adv. (2021) 10.1063/5.0047481
[14]
Getreuer "Linear Methods for Image Interpolation" Image Process. Line (2011) 10.5201/ipol.2011.g_lmii
[15]
Henao, J.D.Z., Tamayo, H.A.T., Segura, J.A.J., Diaz, H., and Paz, A. (2026, February 16). Images of Resolved Phase Patterns of Partial Discharges in Electric Generators. Mendeley Data. Version 8. Available online: https://data.mendeley.com/datasets/xz4xhrc4yr/8.
[16]
(2026, February 16). AMD Zynq™ Evaluation Kit. Available online: https://xilinx-wiki.atlassian.net/wiki/spaces/A/pages/189530183/Zynq-7000.
Metrics
0
Citations
16
References
Details
Published
Apr 10, 2026
Vol/Issue
15(8)
Pages
1584
License
View
Funding
National Science and Technology Council (NSTC) in Taiwan Award: 114-2222-E-130-002-
Cite This Article
Yi-Pin Hsu (2026). Combining Interpolation Techniques and Lightweight Convolutional Neural Networks for Partial Discharge Image Signal Identification in Transformer Bushings. Electronics, 15(8), 1584. https://doi.org/10.3390/electronics15081584
Related

You May Also Like

Machine Learning Interpretability: A Survey on Methods and Metrics

Diogo V. Carvalho, Eduardo M. Pereira · 2019

1,384 citations

The k-means Algorithm: A Comprehensive Survey and Performance Evaluation

Mohiuddin Ahmed, Raihan Seraj · 2020

1,342 citations

Sentiment Analysis Based on Deep Learning: A Comparative Study

Nhan Cach Dang, María N. Moreno-García · 2020

550 citations