Turbo EP-based Equalization: a Filter-Type Implementation
Irene Santos, Juan Jos\'e Murillo-Fuentes, Eva Arias-de-Reyna, and, Pablo M. Olmos

TL;DR
This paper introduces a filter-type equalizer using expectation propagation to enhance turbo equalization performance efficiently, especially for high-order modulations and large channels, with quadratic complexity constraints.
Contribution
It presents a novel EP-based filter-type LMMSE turbo equalizer that improves accuracy and reduces complexity compared to previous EP methods.
Findings
Significant performance improvement over previous EP-based turbo equalizers.
Enhanced accuracy in a posteriori probability estimation.
Maintains quadratic complexity in filter length.
Abstract
This manuscript has been submitted to Transactions on Communications on September 7, 2017; revised on January 10, 2018 and March 27, 2018; and accepted on April 25, 2018 We propose a novel filter-type equalizer to improve the solution of the linear minimum-mean squared-error (LMMSE) turbo equalizer, with computational complexity constrained to be quadratic in the filter length. When high-order modulations and/or large memory channels are used the optimal BCJR equalizer is unavailable, due to its computational complexity. In this scenario, the filter-type LMMSE turbo equalization exhibits a good performance compared to other approximations. In this paper, we show that this solution can be significantly improved by using expectation propagation (EP) in the estimation of the a posteriori probabilities. First, it yields a more accurate estimation of the extrinsic distribution to be sent…
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