DocumentCode :
1543927
Title :
Impulse fault diagnosis in power transformers using self-organising map and learning vector quantisation
Author :
De, A. ; Chatterjee, N.
Author_Institution :
Dept. of Electr. Eng., Jadavpur Univ., Calcutta, India
Volume :
148
Issue :
5
fYear :
2001
fDate :
9/1/2001 12:00:00 AM
Firstpage :
397
Lastpage :
405
Abstract :
An artificial intelligence approach is proposed to an impulse fault diagnosis problem in oil-filled power transformers. The experiment focuses on the distinction between the effects caused by faults of a different nature and the different physical location of occurrences in a transformer winding. The proposed method involves an artificial neural network-based pattern recognition technique, to recognise the frequency responses of the winding admittance of a typical high-voltage transformer under healthy and different faulty conditions of winding insulation. It attempts to establish a correlation between the nature and site of the internal insulation fault and its associated frequency response. A self-organising neural network model has been employed as the basic pattern recogniser, to discover the significant patterns and to extract the hidden information from a set of frequency response patterns obtained from an EMTP model of the transformer with artificially simulated faults. A learning vector quantisation-based classification technique has been applied to efficiently classify visually indistinguishable response patterns. The method applied to a winding model of a high-voltage transformer, with tap changer winding, exhibited high diagnostic accuracy by successful detection and discrimination of faults of a different nature and site of occurrence
Keywords :
fault diagnosis; frequency response; pattern recognition; power engineering computing; power transformer testing; self-organising feature maps; transfer functions; transformer oil; vector quantisation; EMTP model; artificial intelligence approach; artificial neural network-based pattern recognition; artificially simulated faults; faulty conditions; frequency response; frequency response patterns; frequency response recognition; high diagnostic accuracy; high-voltage transformer; impulse fault diagnosis; internal insulation fault; learning vector quantisation; learning vector quantisation-based classification; oil-filled power transformers; pattern recogniser; power transformers; self-organising map; self-organising neural network model; tap changer winding; transfer function calculation; transformer winding; typical high-voltage transformer; winding admittance; winding insulation;
fLanguage :
English
Journal_Title :
Generation, Transmission and Distribution, IEE Proceedings-
Publisher :
iet
ISSN :
1350-2360
Type :
jour
DOI :
10.1049/ip-gtd:20010462
Filename :
959669
Link To Document :
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