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Complex MIMO RBF Neural Networks for Transmitter Beamforming over Nonlinear Channels

机译:用于非线性信道上发射机波束成形的复杂MIMO RBF神经网络

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摘要

The use of beamforming for efficient transmission has already been successfully implemented in practical systems and is absolutely necessary to even further increase spectral and energy efficiencies in some configurations of the next-generation wireless systems and for low earth orbit satellites. A remarkable capacity increase is then achieved and spectral congestion is minimized. In this context, this article proposes a novel complex multiple-input multiple-output radial basis function neural network (CMM-RBF) for transmitter beamforming, based on the phase transmittance radial basis function neural network (PTRBFNN). The proposed CMM-RBF is compared with the least mean square (LMS) algorithm for beamforming with six dipoles arranged in a uniform and circular array and with 16 dipoles in a 2D-grid array. Simulation results show that the proposed solution presents lower steady-state mean squared error, faster convergence rate and enhanced half-power beamwidth (HPBW) when compared with the LMS algorithm in a nonlinear scenario.
机译:使用波束成形进行有效传输已经在实际系统中成功实现,并且对于进一步提高下一代无线系统的某些配置以及低地球轨道卫星的频谱和能量效率是绝对必要的。然后实现了显着的容量增加,并使频谱拥塞最小化。在此背景下,本文基于相位透射率径向基函数神经网络(PTRBFNN),提出了一种用于发射机波束成形的新型复杂多输入多输出径向基函数神经网络(CMM-RBF)。将拟议的CMM-RBF与最小均方(LMS)算法进行波束形成的比较,该算法具有以均匀和圆形阵列排列的六个偶极子以及以2D网格阵列排列的16个偶极子。仿真结果表明,与在非线性情况下的LMS算法相比,该解决方案具有更低的稳态均方误差,更快的收敛速度和增强的半功率波束宽度(HPBW)。

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