近真实衰落环境下遗传算法和粒子群算法辅助SDMA/OFDM过载系统的性能

K. Shahnaz, C. K. Ali
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引用次数: 1

摘要

本文提出了两种流行的进化算法,即遗传算法(GA)和基于粒子群优化(PSO)的SDMA-OFDM多用户检测(MUD),克服了经典检测器的局限性。它们易于实现,并且与最大似然检测(MLD)相比,它们在决策度量评估方面的复杂性非常低。与其他探测器相比,这些技术被证明提供了高性能,特别是在用户数量比基站(BS)天线高的秩缺乏场景中。在这种情况下,基于零强迫(ZF)和最小均方误差(MMSE)的mud表现出严重的性能下降。为了研究无线通信系统的实际性能,使用合适的信道模型是很重要的。由于本工作的仿真参数基于IEEE 802.11n无线局域网(WLAN)标准,因此采用TGn信道模型。
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Performance of GA and PSO aided SDMA/OFDM Over-Loaded System in a Near-Realistic Fading Environment
In this work, two popular evolutionary algorithms such as genetic algorithm (GA) and particle swarm optimization (PSO) based SDMA-OFDM multi user detection (MUD) have been presented which overcome the limitations of classical detectors. They are simple to implement and their complexity in terms of decision-metric evaluations is very less compared to maximum likelihood detection (MLD). These techniques are shown to provide a high performance as compared to the other detectors especially in a rank-deficient scenario where numbers of users are high as compared to the base station (BS) antennas. In this scenario, Zero forcing (ZF) and minimum mean square error (MMSE) based MUDs exhibit severe performance degradation. To investigate almost realistic performance of a wireless communication system, it is important to use a proper channel model. Since the simulation parameters in this work are based on IEEE 802.11n wireless local area network (WLAN) standard, TGn is the channel model used.
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