A pareto archive evolutionary strategy based radial basis function neural network training algorithm for failure rate prediction in overhead feeders
Author(s) -
Grant Cochenour,
Jerad Simon,
Sanjoy Das,
Anil Pahwa,
Surasish Nag
Publication year - 2005
Publication title -
citeseer x (the pennsylvania state university)
Language(s) - English
Resource type - Conference proceedings
ISBN - 1-59593-010-8
DOI - 10.1145/1068009.1068360
Subject(s) - overhead (engineering) , computer science , artificial neural network , pareto principle , radial basis function , evolutionary algorithm , perceptron , adaptive neuro fuzzy inference system , algorithm , inference , artificial intelligence , pareto distribution , fuzzy logic , machine learning , mathematical optimization , fuzzy control system , mathematics , statistics , operating system
This paper outlines a radial basis function neural network approach to predict the failures in overhead distribution lines of power delivery systems. The RBF networks are trained using historical data. The network sizes and errors are simultaneously minimized using the Pareto Archive Evolutionary Strategy algorithm. Mutation of the network is carried out by invoking an orthogonal least square procedure. The performance of the proposed method was compared to a fuzzy inference approach and with multilayered perceptrons. The results suggest that this approach outperforms the other techniques for the prediction of failure rates.
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