Application of Extreme Learning Machine in Fault Classification of Power Transformer

HTML  XML Download Download as PDF (Size: 1004KB)  PP. 2837-2845  
DOI: 10.4236/cs.2016.710242    1,805 Downloads   3,045 Views  Citations

ABSTRACT

Reliability of power system is very essential for every nation to generate and transmit power without interruption. Power transformer is one of the most significant electrical apparatus and hence it must be kept in good health. Identification and classification of faults in power transformer is a major research area. Conventional method of fault classification in transformer uses gas concentrations data and interprets them using international standards. These standards are not able to classify the faults correctly under certain conditions. To overcome this limitation, several soft computing tools namely artificial neural network (ANN), Support Vector Machine (SVM) etc. are used to automate the process of classification of faults in transformers. However, there is a scope exists to improve the classification accuracy. Hence, this research work focuses to design Extreme Learning Machine (ELM) method for classifying fault very accurately using enthalpy of dissolved gas content in transformer oil as an input feature. The ELM method is tested with two databases: one based on IEC TC10 database (DB1) and the other one based on data collected from utilities in India (DB2). The application of ELM to Power Transformer fault classification based on enthalpy as input feature outperforms over the conventional classification based on gas concentration as input feature.

Share and Cite:

Venkatasami, A. and Latha, P. (2016) Application of Extreme Learning Machine in Fault Classification of Power Transformer. Circuits and Systems, 7, 2837-2845. doi: 10.4236/cs.2016.710242.

Copyright © 2024 by authors and Scientific Research Publishing Inc.

Creative Commons License

This work and the related PDF file are licensed under a Creative Commons Attribution 4.0 International License.