Please use this identifier to cite or link to this item: https://dspace.univ-ouargla.dz/jspui/handle/123456789/2490
Title: Continuous-time Zhang Neural Networks for AR Spectral Estimator
Authors: Abderrazak Benchabane, Abdelhak Bennia, and Fella Charif
Keywords: Spectral Estimation
Zhang neural network
based neural network
Gradient
AR model
Issue Date: 19-Dec-2013
Abstract: In this paper, we present an Auto-Regressive (AR) spectral estimator using a special kind of recurrent neural network proposed by Zhang called Continuous-time Zhang Neural Network (CZNN) to solve a system of linear equations. This neural network is characterized by an implicit dynamics and designed by defining a vector-valued error function instead of the usual scalar-valued norm-based error function used in the Gradient based Neural Networks (GNN). The output of the CZNN is the estimated AR coefficients so that the spectrum of the signal can be directly obtained in terms of the AR coefficients. For comparative purposes, the GNN model is also employed for AR parameters estimation.
Description: The INTERNATIONAL CONFERENCE ON ELECTRONICS & OIL: FROM THEORY TO APPLICATIONS March 05-06, 2013, Ouargla, Algeria
URI: http://hdl.handle.net/123456789/2490
ISSN: waf
Appears in Collections:3. Faculté des sciences appliquées

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