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Under What Condition Do We Get Improved Equalization Performance in the Residual ISI with Non-Biased Input Signals Compared with the Biased Version

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DOI: 10.4236/jsip.2015.62008    2,995 Downloads   3,352 Views   Citations
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Monika Pinchas

Affiliation(s)

Department of Electrical and Electronic Engineering, Ariel University, Ariel, Israel.

ABSTRACT

Recently, closed-form approximated expressions were obtained for the residual Inter Symbol Interference (ISI) obtained by blind adaptive equalizers for the biased as well as for the non-biased input case in a noisy environment. But, up to now it is unclear under what condition improved equalization performance is obtained in the residual ISI point of view with the non-biased case compared with the biased version. In this paper, we present for the real and two independent quadrature carrier case a closed-form approximated expression for the difference in the residual ISI obtained by blind adaptive equalizers with biased input signals compared with the non-biased case. Based on this expression, we show under what condition improved equalization performance is obtained from the residual ISI point of view for the non-biased case compared with the biased version.

KEYWORDS

Residual ISI, Blind Equalization, Blind Deconvolution

Cite this paper

Pinchas, M. (2015) Under What Condition Do We Get Improved Equalization Performance in the Residual ISI with Non-Biased Input Signals Compared with the Biased Version. Journal of Signal and Information Processing, 6, 79-91. doi: 10.4236/jsip.2015.62008.

Conflicts of Interest

The authors declare no conflicts of interest.

References

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