Deep-Learning-Based Earth Fault Detection Using Continuous Wavelet Transform and Convolutional Neural Network in Resonant Grounding Distribution Systems

Feature extraction for fault signals is critical and difficult in all kinds of fault detection schemes. A novel simple and effective method of faulty feeder detection in resonant grounding distribution systems based on the continuous wavelet transform (CWT) and convolutional neural network (CNN) is...

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Veröffentlicht in:IEEE sensors journal 2018-02, Vol.18 (3), p.1291-1300
Hauptverfasser: Guo, Mou-Fa, Zeng, Xiao-Dan, Chen, Duan-Yu, Yang, Nien-Che
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creator Guo, Mou-Fa
Zeng, Xiao-Dan
Chen, Duan-Yu
Yang, Nien-Che
description Feature extraction for fault signals is critical and difficult in all kinds of fault detection schemes. A novel simple and effective method of faulty feeder detection in resonant grounding distribution systems based on the continuous wavelet transform (CWT) and convolutional neural network (CNN) is presented in this paper. The time-frequency gray scale images are acquired by applying the CWT to the collected transient zero-sequence current signals of the faulty feeder and sound feeders. The features of the gray scale image will be extracted adaptively by the CNN, which is trained by a large number of gray scale images under various kinds of fault conditions and factors. The features extraction and the faulty feeder detection can be implemented by the trained CNN simultaneously. As a comparison, two faulty feeder detection methods based on artificial feature extraction and traditional machine learning are introduced. A practical resonant grounding distribution system is simulated in power systems computer aided design/electromagnetic transients including DC, the effectiveness and performance of the proposed faulty feeder detection method is compared and verified under different fault circumstances.
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subjects Artificial neural networks
CAD
Computer aided design
Computer simulation
Continuous wavelet transform
Continuous wavelet transforms
convolutional neural network (CNN)
Deep learning
Distribution systems
Fault detection
faulty feeder detection
Feature extraction
Feeders
Gray scale
Image acquisition
Machine learning
Neural networks
System effectiveness
Time-frequency analysis
Transient analysis
wavelet transform
Wavelet transforms
Zero sequence current
title Deep-Learning-Based Earth Fault Detection Using Continuous Wavelet Transform and Convolutional Neural Network in Resonant Grounding Distribution Systems
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