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Ant-Colony-Based Multiuser Detection for Multifunctional-Antenna-Array-Assisted MC DS-CDMA Systems

机译:多功能天线阵列辅助MC DS-CDMA系统的基于蚁群的多用户检测

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摘要

A novel ant colony optimization (ACO)-based multiuser detector (MUD) is designed for the synchronous multifunctional antenna array (MFAA)-assisted multicarrier direct-sequence code-division multiple-access (MC DS-CDMA) uplink, which supports both receiver diversity and receiver beamforming. The ACO-based MUD aims to achieve a bit-error-rate performance approaching that of the optimum maximum-likelihood (ML) MUD, without carrying out an exhaustive search of the entire MC DS-CDMA search space constituted by all possible combinations of the received multiuser vectors. We will demonstrate that regardless of the number of the subcarriers or of the MFAA configuration, the system employing the proposed ACO-based MUD is capable of supporting 32 users with the aid of 31-chip Gold codes used as the T-domain spreading sequence without any significant performance degradation when compared to the single-user system. As a further benefit, the number of floating-point operations per second imposed by the proposed ACO-based MUD is a factor of $10^{8}$ lower than that of the ML MUD. We will also show that at a given increase of the complexity, the MFAA will allow the ACO-based MUD to achieve a higher signal-to-noise ratio gain than the single-input–single-output MC DS-CDMA system.
机译:一种新颖的基于蚁群优化(ACO)的多用户检测器(MUD)被设计用于同步多功能天线阵列(MFAA)辅助的多载波直接序列码分多址(MC DS-CDMA)上行链路,同时支持两个接收机分集和接收机波束成形。基于ACO的MUD旨在实现接近最佳最大似然(ML)MUD的误码率性能,而无需对由MCN的所有可能组合构成的整个MC DS-CDMA搜索空间进行详尽的搜索。接收到多用户向量。我们将证明,无论子载波数量或MFAA配置如何,采用建议的基于ACO的MUD的系统都可以借助31个芯片的Gold码(用作T域扩展序列)来支持32个用户,而无需与单用户系统相比,任何显着的性能下降。另一个好处是,建议的基于ACO的MUD每秒施加的浮点操作数比ML MUD低10 ^ {8} $。我们还将证明,在复杂性增加的情况下,MFAA将使基于ACO的MUD能够获得比单输入单输出MC DS-CDMA系统更高的信噪比增益。

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