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том 18 издание 3 страницы 517-529

Fault identification for power transformer based on dissolved gas in oil data using sparse convolutional neural networks

Тип публикацииJournal Article
Дата публикации2023-12-24
scimago Q2
wos Q2
white level БС1
SJR0.748
CiteScore5.5
Impact factor2.6
ISSN17518687, 17518695
Electrical and Electronic Engineering
Energy Engineering and Power Technology
Control and Systems Engineering
Краткое описание

This paper addressed the challenges associated with the complexity, numerous parameters, computational resource demands, and slow processing speed of transformer fault identification models based on deep learning technologies. Sparse convolutional neural network (CNN) approach is proposed for identifying faults related to dissolved gases in oil. Leveraging an improved Gramian angular field, one‐dimensional fault samples are converted into two‐dimensional feature images and data augmentation is implemented to meet the input requirements of deep learning models. Building upon visual geometry group (VGG)19 and residual networks (ResNet)50 networks for fault diagnosis, sparsity techniques are introduced through pruning, the fusion of convolution layers and batch normalization layers, and parameter quantization. Numerical experiments and performance evaluations on dissolved gas in transformer oil fault data demonstrate that the proposed method effectively reduced model complexity, minimized parameter count, conserved computational resources, and improved processing speed while maintaining a considerable level of fault identification accuracy. This made it applicable to edge computing platforms characterized by small form factors and low power consumption in the power industry.

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Lecture Notes in Electrical Engineering
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International Journal of Circuit Theory and Applications
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Information (Switzerland)
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Electric Power Systems Research
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ГОСТ |
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Liu Z. et al. Fault identification for power transformer based on dissolved gas in oil data using sparse convolutional neural networks // IET Generation, Transmission and Distribution. 2023. Vol. 18. No. 3. pp. 517-529.
ГОСТ со всеми авторами (до 50) Скопировать
Liu Z., He W., Liu H., Luo L., Zhang D., Niu B. Fault identification for power transformer based on dissolved gas in oil data using sparse convolutional neural networks // IET Generation, Transmission and Distribution. 2023. Vol. 18. No. 3. pp. 517-529.
RIS |
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TY - JOUR
DO - 10.1049/gtd2.13090
UR - https://doi.org/10.1049/gtd2.13090
TI - Fault identification for power transformer based on dissolved gas in oil data using sparse convolutional neural networks
T2 - IET Generation, Transmission and Distribution
AU - Liu, Zhijian
AU - He, Wei
AU - Liu, Hang
AU - Luo, Linglin
AU - Zhang, Dechun
AU - Niu, Ben
PY - 2023
DA - 2023/12/24
PB - Institution of Engineering and Technology (IET)
SP - 517-529
IS - 3
VL - 18
SN - 1751-8687
SN - 1751-8695
ER -
BibTex |
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BibTex (до 50 авторов) Скопировать
@article{2023_Liu,
author = {Zhijian Liu and Wei He and Hang Liu and Linglin Luo and Dechun Zhang and Ben Niu},
title = {Fault identification for power transformer based on dissolved gas in oil data using sparse convolutional neural networks},
journal = {IET Generation, Transmission and Distribution},
year = {2023},
volume = {18},
publisher = {Institution of Engineering and Technology (IET)},
month = {dec},
url = {https://doi.org/10.1049/gtd2.13090},
number = {3},
pages = {517--529},
doi = {10.1049/gtd2.13090}
}
MLA
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Liu, Zhijian, et al. “Fault identification for power transformer based on dissolved gas in oil data using sparse convolutional neural networks.” IET Generation, Transmission and Distribution, vol. 18, no. 3, Dec. 2023, pp. 517-529. https://doi.org/10.1049/gtd2.13090.
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