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Communication Dans Un Congrès Année : 2007

Efficient frequency-domain MMSE turbo equalization derivation and performance comparison with the time-domain counterpart

Karine Amis Cavalec
Nicolas Le Josse
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Christophe Laot

Résumé

This paper addresses a novel frequency-domain (FD) derivation of the Minimum Mean Square Error (MMSE) Turbo Equalizer for ST-BICM systems. The receiver consists of a FD MMSE Equalizer and a Time Domain (TD) decoder with iterative information exchange between the two functions. In particular, we propose a FD MMSE equalizer derivation improved from previous approaches, in that feedback and feedforward filters are directly derived in the frequency-domain. The accuracy of the proposed approach is confirmed by comparing the lower bound of the iterative equalizing process with the corresponding analytical results proposed in previous paper. Simulations over multi-path Rayleigh block fading channels show that the resulting algorithm exhibits similar performance with that of the corresponding TD MMSE equalization. The problem of finding the TD filter achieving the best compromise between minimum impulse response length and performance is considered.
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Dates et versions

hal-02121663 , version 1 (11-06-2021)

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Citer

Karine Amis Cavalec, Nicolas Le Josse, Christophe Laot. Efficient frequency-domain MMSE turbo equalization derivation and performance comparison with the time-domain counterpart. ICWMC'07 : proceedings of the third international conference on wireless and mobile communications, 4-7 mars, Guadeloupe, France, Mar 2007, Guadeloupe, France. pp.65 -, ⟨10.1109/ICWMC.2007.38⟩. ⟨hal-02121663⟩
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