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http://dx.doi.org/10.5391/IJFIS.2002.2.3.174

Blind Neural Equalizer using Higher-Order Statistics  

Lee, Jung-Sik (School of Electronic& Information Eng., Kunsan National University)
Publication Information
International Journal of Fuzzy Logic and Intelligent Systems / v.2, no.3, 2002 , pp. 174-178 More about this Journal
Abstract
This paper discusses a blind equalization technique for FIR channel system, that might be minimum phase or not, in digital communication. The proposed techniques consist of two parts. One is to estimate the original channel coefficients based on fourth-order cumulants of the channel output, the other is to employ RBF neural network to model an inverse system fur the original channel. Here, the estimated channel is used as a reference system to train the RBF. The proposed RBF equalizer provides fast and easy teaming, due to the structural efficiency and excellent recognition-capability of R3F neural network. Throughout the simulation studies, it was found that the proposed blind RBF equalizer performed favorably better than the blind MLP equalizer, while requiring the relatively smaller computation steps in tranining.
Keywords
Neural network; RBF; Blind equalizer; HOS(higher-order-statistics);
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1 Benveniste, A., Goursat, and G. Ruget, 'Robust Identification of a Nonminimum Phase System: Blind Adjustment of a Linear Equalizer in Data Communications,' IEEE Trans. Automat. Contr., vol. AC-25, pp. 385-398, Jun. 1980
2 Benveniste, A., and M. Goursat, 'Blind Equalizers,' IEEE Trans. Commun., vol. C0M-32, pp. 871-883, Aug. 1984
3 F. B. Ueng and Y. T.Su, 'Adaptive Blind Equalization Using Second and Higher Order Statistics, 'IEEE J. Select. Areas Commun., vol. 13, pp. 132-140, Jan. 1995   DOI   ScienceOn
4 Chen, S., G. J. Gibson, and C. F. N. Cowan, and P. M. Grant, 'Adaptive Equalization of Finite Non-Linear Channels Using Multilayer Perceptrons,' Signal Processing, vol. 20, pp. 107-119, 1990   DOI   ScienceOn
5 Gibson G. J., S. Siu, and C. F. N. Cowan, 'Application of Multilayer Perceptrons as Adaptive Channel Equalizers,' ICASSP, Glasgow, Scotland, pp. 1183-1186, 1989
6 Lee, J., C. D. Beach, N. Tepedelenlioglu, 'Channel Equalization using Radial Basis Function Network.' ICASSP, Atlanta, Georgia, vol. 3, pp.1719-1722, 1996
7 S. Mo and B. Shafai, 'Blind Equalization Using Higher Order Cumulants and Neural Network, 'IEEE Trans. Signal Processing, vol. 42, pp. 3209-3217, Nov. 1994   DOI   ScienceOn
8 Mendel, J. M., 'Tutrial on Higher-Order Statistics (Spectra) in Signal Processing and System Theory: Theoretical Results and Some Applications,' Proceedings, IEEE, 79, pp. 278-305, Mar. 1991
9 J. Lee, C. Beach, and N. Tepedelenlioglu 'A Practical Radial Basis Function Equalizer' IEEE Trans. on Neural Networks, pp. 450-455, Mar. 1999
10 Sato, Y. 'A Method of Self-Recovering Equalization for Multilevel Amplitude-Modulation Systems,' IEEE Trans. Commun., vol. C0M-23, pp.679-682, Jun. 1975
11 Chen, S., B. Mulgrew, P. M. Grant, 'A Clustering Technique for Digital Communications Channel Equalization Using Radial Basis Function Networks,' IEEE Trans. Neural Networks, vol. 4, pp. 570-579, Sep. 1993   DOI   ScienceOn
12 Chen, S., C. F. N. Cowan, and P. M. Grant, 'Orthogonal Least Squares Leaming Algorithm for Radial Basis Function Networks,' IEEE Trans. Neural Networks, vol. 2, pp. 302-309, Mar. 1991   DOI   ScienceOn