Author_Institution :
Dept. of Electron. & Comput. Sci., Univ. of Southampton, Southampton, UK
Abstract :
The development of evolutionary algorithms (EAs), such as genetic algorithms (GAs), repeated weighted boosting search (RWBS), particle swarm optimization (PSO), and differential evolution algorithms (DEAs), have stimulated wide interests in the communication research community. However, the quantitative performance-versus-complexity comparison of GA, RWBS, PSO, and DEA techniques applied to the joint channel estimation (CE) and turbo multiuser detection (MUD)/decoding in the context of orthogonal frequency-division multiplexing/space-division multiple-access systems is a challenging problem, which has to consider both the CE problem formulated over a continuous search space and the MUD optimization problem defined over a discrete search space. We investigate the capability of the GA, RWBS, PSO, and DEA to achieve optimal solutions at an affordable complexity in this challenging application. Our study demonstrates that the EA-assisted joint CE and turbo MUD/decoder is capable of approaching both the Cramér-Rao lower bound of the optimal CE and the bit error ratio (BER) performance of the idealized optimal maximum-likelihood (ML) turbo MUD/decoder associated with perfect channel state information, respectively, despite imposing only a fraction of the idealized turbo ML-MUD/decoder´s complexity.
Keywords :
OFDM modulation; channel estimation; error statistics; genetic algorithms; multiuser detection; particle swarm optimisation; search problems; space division multiple access; BER performance; CE problem; Cramér-Rao lower bound; DEA; GA; MUD optimization problem; OFDM; PSO; RWBS; SDMA; bit error ratio performance; continuous search space; discrete search space; evolutionary-algorithm-assisted joint channel estimation; orthogonal frequency-division multiplexing; perfect channel state information; quantitative performance-versus-complexity comparison; space-division multiple-access systems; turbo multiuser decoding; turbo multiuser detection; Channel estimation; Decoding; Iterative decoding; Joints; Multiuser detection; OFDM; Optimization; Differential evolution algorithm (DEA); evolutionary algorithms (EAs); genetic algorithm (GA); joint channel estimation (CE) and turbo multiuser detection (MUD)/decoding; orthogonal frequency-division multiplexing (OFDM); particle swarm optimization (PSO); repeated weighted boosting search (RWBS); space-division multiple access (SDMA);