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Nonlinear Adaptive Beamforming Algorithms and Bit Error Rate Analysis for MU MIMO m mWave Communication System

机译:MU MIMO M波通信系统的非线性自适应波束形成算法和钻头误差率分析

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Multiuser-multiple input multiple outputs (MUMIMO) can provide a substantial performance for cellular networks by applying a beamforming technique to direct signals in specific required directions. Therefore, this paper presents a basic idea of steering the incoming signals into the signal of interest (SOI) and signal not of interest (SNOI) directions. Moreover, different adaptive beamforming algorithms such as least mean square (LMS), recursive least square (RLS) and constant module algorithm (CMA) are analyzed and evaluated regarding the interference cancelation and steering of incoming data signal. In this regard, to calculate the received output signal, the optimal weight elements of a uniform linear array (ULA) antenna are computed and updated based on the incoming array sensor signals. Furthermore, the paper shows the effect of the beamforming on a bit error rate (BER) when applied a different number of antenna elements at base station (BS). The simulation results confirm that the algorithms likely have the same performance in the interference cancelation. However, the RLS algorithm shows a little enhancement compared with SMI and CMA algorithms. Besides, the results indicate that the beamforming with the different number of antenna elements has a significant impact on the BER performance. Hence, this work can be extended to a higher frequency of mmWave communication with a massive number of antenna elements, which can meet requirement of fifth generation (5G) network systems.
机译:多用户多输入多输出(Mumimo)可以通过将波束成形技术应用于特定所需方向的直接信号来为蜂窝网络提供大量性能。因此,本文介绍了将输入信号转向到感兴趣的信号(SOI)和信号不受感兴趣的信号(SnOI)方向的基本思想。此外,分析了不同自适应波束成形算法,例如最小均方(LMS),递归最小二乘(RLS)和恒定模块算法(CMA),并考虑输入数据信号的干扰抵消和转向。在这方面,为了计算接收的输出信号,基于输入的阵列传感器信号计算和更新均匀线性阵列(ULA)天线的最佳权重元件。此外,当在基站(BS)上应用不同数量的天线元件时,本文显示了波束成形对误码率(BER)的影响。仿真结果证实算法可能在干扰取消中具有相同的性能。然而,与SMI和CMA算法相比,RLS算法显示了一点增强。此外,结果表明,与不同数量的天线元件的波束形成对BER性能产生了重大影响。因此,该工作可以扩展到具有大量的天线元件的MM波通信的较高频率,这可以满足第五代(5G)网络系统的要求。

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