DocumentCode :
718150
Title :
Identification of metal particles in transformer oil using partial discharge signals
Author :
Firuzi, Keyvan ; Parvin, Vahid ; Vakilian, Mehdi
Author_Institution :
Sharif Univ. of Technol., Tehran, Iran
fYear :
2015
fDate :
10-14 May 2015
Firstpage :
1602
Lastpage :
1606
Abstract :
In this paper, the partial discharge current signals (pulses), along with pattern recognition methods for the assessment and diagnosis of PD (partial discharge) source of metal particles in the oil tank of the transformer is used. Three defect models, i.e. a fixed metal particle, a free metal particle and a sharp metal particle is used for modeling all types of metal particles in the oil tank of a transformer. Also, corona discharge in air (as an unavoidable disturbance) is considered in a separate class of sources for partial discharge. After extracting the single PD pulse, FFT, DWT and PCA feature extraction methods are used to classify the various defects. SVM Classification, as a nonlinear and non-parametric methods of machine learning algorithms, is used for classification of PD single pulse signals recorded when the fault model is examined. By using FFT and PCA feature extraction methods with SVM classifier, more than 99% accuracy obtained in process of discovering the origin of the partial discharge pulses.
Keywords :
corona; discrete wavelet transforms; fast Fourier transforms; feature extraction; partial discharges; power engineering computing; power transformer insulation; principal component analysis; signal classification; support vector machines; transformer oil; DWT; FFT; PCA feature extraction methods; PD single pulse signal classification; SVM classification; corona discharge; fixed metal particle; free metal particle; machine learning algorithms; metal particles; metal particles identification; nonparametric methods; partial discharge current signals; pattern recognition methods; sharp metal particle; transformer oil tank; Electrical engineering; DWT; PCA Feature Extraction; Partial discharge; SVM Classifier;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Electrical Engineering (ICEE), 2015 23rd Iranian Conference on
Conference_Location :
Tehran
Print_ISBN :
978-1-4799-1971-0
Type :
conf
DOI :
10.1109/IranianCEE.2015.7146475
Filename :
7146475
Link To Document :
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