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 JSIP  Vol.5 No.4 , November 2014
An Approximated Expression for the Residual ISI Obtained by Blind Adaptive Equalizer and Biased Input Signals
Abstract: Recently, two expressions (for the noiseless and noisy case) were proposed for the residual inter-symbol interference (ISI) obtained by blind adaptive equalizers, where the error of the equalized output signal may be expressed as a polynomial function of order 3. However, those expressions are not applicable for biased input signals. In this paper, a closed-form approximated expression is proposed for the residual ISI applicable for the noisy and biased input case. This new proposed expression is valid for blind adaptive equalizers, where the error of the equalized output signal may be expressed as a polynomial function of order 3. The new proposed expression depends on the equalizer’s tap length, input signal statistics, channel power, SNR, step-size parameter and on the input signal’s bias. Simulation results indicate a high correlation between the simulated results and those obtained from our new proposed expression.
Cite this paper: Panizel, N. and Pinchas, M. (2014) An Approximated Expression for the Residual ISI Obtained by Blind Adaptive Equalizer and Biased Input Signals. Journal of Signal and Information Processing, 5, 155-178. doi: 10.4236/jsip.2014.54018.
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