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dc.contributor.authorSatapathy, J K-
dc.contributor.authorSubhashini, K R-
dc.identifier.citation2009 Innovative Technologies in Intelligent Systems and Industrial Applications, CITISIA 2009 ,2009, Article number 5224249, Pages 11-16en
dc.description.abstractThis paper presents a new approach to equalization of communication channels using RBF Neural Networks as a classifier. Abundant research has been done in using Neural Network for the problem of channel equalization. The classical gradient based methods suffer from the problem of getting trapped in local minima. And the stochastic methods which can give a global optimum solution need long computational times. In this paper a novel method in which the task of an equalizer is decentralized by using a FIR filter for studying the channel characteristics and RBF Neural Network for classifying the received data. In the results it can be observed that this method of equalization provides optimum performance, which can be obtained using Tabu Search. Also, since we are using FIR filter, training will be very faster and LMS algorithm is computationally very simple.en
dc.format.extent719811 bytes-
dc.subjectdigital communication systemen
dc.subjectneural networken
dc.titleA Highly Efficient Channel Equalizer for Digital Communication System in Neural Network Paradigmen
Appears in Collections:Conference Papers

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