Analysis of Levenberg-Marquardt and Scaled Conjugate gradient training algorithms for artificial neural network based LS and MMSE estimated channel equalizers

Multilayer perceptron (MLP) based artificial neural network (ANN) equalizers, deploying back propagation (BP) training algorithm, have been profusely used for equalization earlier. However this algorithm suffers from slow convergence rate, depending on the size of network. In this paper, Levenberg-Marquardt and Scaled Conjugate algorithms are proposed to train an MLP based ANN for least square (LS) and minimum mean square (MMSE) estimated channel coefficients using MPSK and MQAM modulation techniques. The key analytical performance measures are comprehended in terms of three parameters i.e regression, validation and training state. Based on the regression parameter, Scaled Conjugate method outpaces Levenberg-Marquardt and on the basis of Mean Squared Error (MSE), it is seen that the Levenberg-Marquardt has better accuracy than Scaled Conjugate.

[1]  Sinem Coleri Ergen,et al.  Channel estimation techniques based on pilot arrangement in OFDM systems , 2002, IEEE Trans. Broadcast..

[2]  M. Meyer,et al.  Multilayer perceptron based decision feedback equalisers for channels with intersymbol interference , 1993 .

[3]  Simon Haykin,et al.  Neural Networks: A Comprehensive Foundation , 1998 .

[4]  I.M. Qureshi,et al.  Blind equalization and estimation of channel using artificial neural networks , 2004, 8th International Multitopic Conference, 2004. Proceedings of INMIC 2004..

[5]  S. Qureshi,et al.  Adaptive equalization , 1982, Proceedings of the IEEE.

[6]  J.C. Patra,et al.  Nonlinear channel equalization with QAM signal using Chebyshev artificial neural network , 2005, Proceedings. 2005 IEEE International Joint Conference on Neural Networks, 2005..

[7]  Jerry M. Mendel,et al.  Identification of nonminimum phase systems using higher order statistics , 1989, IEEE Trans. Acoust. Speech Signal Process..

[8]  Muhammad Ibn Ibrahimy,et al.  Design and Optimization of Levenberg-Marquardt based Neural Network Classifier for EMG Signals to Identify Hand Motions , 2013 .

[9]  Yih-Lon Lin,et al.  Preliminary Study on Wilcoxon Learning Machines , 2008, IEEE Transactions on Neural Networks.

[10]  Eric Moulines,et al.  Subspace methods for the blind identification of multichannel FIR filters , 1995, IEEE Trans. Signal Process..

[11]  R. W. Lucky,et al.  Techniques for adaptive equalization of digital communication systems , 1966 .

[12]  Ben-Zion Bobrovsky,et al.  A Novel HOS Approach for Blind Channel Equalization , 2007, IEEE Transactions on Wireless Communications.

[13]  Ridha Bouallegue,et al.  Channel Estimation Study for Block - Pilot Insertion in OFDM Systems under Slowly Time Varying Conditions , 2012, ArXiv.

[14]  I. M. Qureshi,et al.  New Hybrid HOS-SOS Approach for Blind . . . , 2005 .

[15]  Hui Liu,et al.  Closed-form blind symbol estimation in digital communications , 1995, IEEE Trans. Signal Process..

[16]  S. Haykin,et al.  Adaptive Filter Theory , 1986 .

[17]  Hua Yu,et al.  The MMSE Channel Estimation Based on DFT for OFDM System , 2009, 2009 5th International Conference on Wireless Communications, Networking and Mobile Computing.

[18]  Tommy W. S. Chow,et al.  Blind equalization of a noisy channel by linear neural network , 1999, IEEE Trans. Neural Networks.