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Please use this identifier to cite or link to this item: http://hdl.handle.net/2080/1731

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contributor.authorSahoo, A K-
contributor.authorPanda, G-
contributor.authorMajhi, B-
date.accessioned2012-07-31T05:45:49Z-
date.available2012-07-31T05:45:49Z-
date.issued2012-07-
identifier.citationThe 2012 International Conference of Computational Intelligence and Intelligent Systems London, U.K., 4-6 July 2012en
identifier.urihttp://hdl.handle.net/2080/1731-
descriptionCopyright for this paper belongs to proceeding publisheren
description.abstractPulse compression technique combines the high energy characteristic of a longer pulse width with the high resolution characteristic of a narrower pulse width. The major aspects that are considered for a pulse compression technique are signal to sidelobe ratio (SSR), noise and Doppler shift performances. The traditional algorithms like autocorrelation function (ACF), recursive least square (RLS) algorithm, multilayer perceptron (MLP), radial basis function (RBF) and recurrent neural network (RNN) have been applied for pulse compression and their performances have also been studied. This paper presents a new approach for pulse compression using recurrent radial Basis function (RRBF) neural network. 13 and 35-bit Barker codes are taken as input to RRBF network for pulse compression and the results are compared with MLP, RNN and RBF network based pulse compression schemes. The analysis of simulation results reveals that RRBF yields higher SSR, improved noise performance, better Doppler tolerance and hence more robust for pulse radar detection compared to the other techniques.en
format.extent166841 bytes-
format.mimetypeapplication/pdf-
language.isoen-
subjectPulse compressionen
subjectSSRen
subjectDoppler shiften
subjectRRBFen
subjectBarker codeen
titleA Technique for Pulse RADAR Detection Using RRBF Neural Networken
typeArticleen
Appears in Collections:Conference Papers

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