Title :
Low Complexity Turbo-Equalization: A Clustering Approach
Author :
Kyeongyeon Kim ; Jun Won Choi ; Kozat, Suleyman S. ; Singer, Andrew C.
Author_Institution :
Samsung Electron., Suwon, South Korea
Abstract :
We introduce a low complexity approach to iterative equalization and decoding, or “turbo equalization”, which uses clustered models to better match the nonlinear relationship that exists between likelihood information from a channel decoder and the symbol estimates that arise in soft-input channel equalization. The introduced clustered turbo equalizer uses piecewise linear models to capture the nonlinear dependency of the linear minimum mean square error (MMSE) symbol estimate on the symbol likelihoods produced by the channel decoder and maintains a computational complexity that is only linear in the channel memory. By partitioning the space of likelihood information from the decoder based on either hard or soft clustering and using locally-linear adaptive equalizers within each clustered region, the performance gap between the linear MMSE turbo equalizers and low-complexity least mean square (LMS)-based linear turbo equalizers can be narrowed.
Keywords :
adaptive equalisers; computational complexity; iterative decoding; least mean squares methods; piecewise linear techniques; turbo codes; adaptive equalizers; channel decoder; channel memory; computational complexity; hard clustering; iterative decoding; iterative equalization; least mean square based linear turbo equalizers; linear MMSE turbo equalizers; linear minimum mean square error; piecewise linear models; soft clustering; soft-input channel equalization; turbo equalization; Bit error rate; Channel estimation; Clustering algorithms; Complexity theory; Decoding; Equalizers; Training; Turbo equalization; hard clustering; piecewise linear modelling; soft clustering;
Journal_Title :
Communications Letters, IEEE
DOI :
10.1109/LCOMM.2014.2316172