Back to Search Start Over

Transformer Faults Classification Based on Convolution Neural Network

Authors :
A. Elmohallawy, Maha
Hassan, Amir Yassin
F. Abdel-Gawad, Amal
I. Selem, Sameh
A. Elmohallawy, Maha
Hassan, Amir Yassin
F. Abdel-Gawad, Amal
I. Selem, Sameh
Source :
International journal of electrical and computer engineering systems; ISSN 1847-6996 (Print); ISSN 1847-7003 (Online); Volume 14; Issue 9
Publication Year :
2023

Abstract

This paper studies the latest advances made in Deep Learning (DL) methods utilized for transformer inrush and fault currents classification. Inrush and fault currents at different operating conditions, initial flux and fault type are simulated. This paper presents a technique for the classification of power transformer faults which is based on a DL method called convolutional neural network (CNN) and compares it with traditional artificial neural network (ANN) and other techniques. The inrush and fault current signals of the transformer are simulated within MATLAB by using Fourier analyzers that provides the 2nd harmonic signal. The 2nd harmonic peak and variance statistic values of input signals of the three phases of transformer are used at different operating conditions. The resulted values are aggregated into a dataset to be used as an input for the CNN model, then training and testing the CNN model is performed. Consequently, it is obvious that the CNN algorithm achieves a better performance compared to other algorithms. This study helps with easy discrimination between normal signals and faulty signals and to determine the type of the fault to clear it easily.

Details

Database :
OAIster
Journal :
International journal of electrical and computer engineering systems; ISSN 1847-6996 (Print); ISSN 1847-7003 (Online); Volume 14; Issue 9
Notes :
application/pdf, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1410371190
Document Type :
Electronic Resource