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Benchmarking capabilities of evolutionary algorithms in joint channel estimation and turbo multi-user detection/decoding

机译:联合信道估计和turbo多用户检测/解码中进化算法的基准测试能力

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Joint channel estimation (CE) and turbo multiuser detection (MUD)/decoding for space-division multiple-access based orthogonal frequency-division multiplexing communication has to consider both the decision-directed CE optimisation on a continuous search space and the MUD optimisation on a discrete search space, and it iteratively exchanges the estimated channel information and the detected data between the channel estimator and the turbo MUD/decoder to gradually improve the accuracy of both the CE and the MUD. We evaluate the capabilities of a group of evolutionary algorithms (EAs) to achieve optimal or near optimal solutions with affordable complexity in this challenging application. Our study confirms that the EA assisted joint CE and turbo MUD/decoder is capable of approaching both the Cramér-Rao lower bound of the optimal channel estimation and the bit error ratio performance of the idealised optimal turbo maximum likelihood (ML) MUD/decoder associated with the perfect channel state information, respectively, despite only imposing a fraction of the complexity of the idealised turbo ML-MUD/decoder.
机译:基于空分多址的正交频分多路复用通信的联合信道估计(CE)和Turbo多用户检测(MUD)/解码必须同时考虑连续搜索空间上的决策型CE优化和ADM上的MUD优化离散搜索空间,并在信道估计器和Turbo MUD /解码器之间迭代地交换估计的信道信息和检测到的数据,以逐渐提高CE和MUD的准确性。我们评估了一组进化算法(EA)的功能,以在此具有挑战性的应用程序中以可承受的复杂性实现最佳或接近最佳的解决方案。我们的研究证实,EA辅助的CE和Turbo MUD /解码器联合能够达到最佳信道估计的Cramér-Rao下界和理想化的最佳Turbo最大似然(ML)MUD /解码器相关的误码率性能尽管仅施加了理想化Turbo ML-MUD /解码器复杂性的一小部分,但它们分别具有完美的信道状态信息。

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