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Deep Learning Based Hybrid Precoding Technique for Millimeter-Wave Massive MIMO Systems

机译:基于深度学习的毫米波大规模MIMO系统混合预编码技术

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Communications over millimeter-wave (mm-Wave) frequencies are considered as a new revolution of wireless communications, specifically with the official launching of 5G. Typically, mm-Wave with massive multiple-input multiple-output (MIMO) can be implemented by using the hybrid beamforming transceivers that consists of massive number of analog phase shifters and smaller number of RF chains. The power consumption and cost are reduced when the hybrid beamforming architecture is implemented by combining the digital and analog beamforming. The main motivation for this paper is to introduce a deep learning-based hybrid beamforming design to join optimization of the precoder and combiner in massive MIMO mm-Wave communication systems. Specifically, the joint optimization of the precoder and combiner is carried out by means of two convolutional neural networks (CNN) and through going into two stages of operation, namely training and prediction stages. The MATLAB simulation results show that the deep learning-based hybrid beamforming approach for the mm-Wave massive MIMO outperforms the legacy optimization-based hybrid beamforming approaches in terms of spectrum efficiency.
机译:超过毫米波(MM波)频率的通信被认为是无线通信的新革命,特别是官方发射5G。通常,可以通过使用由大量的模拟相移器和较少数量的RF链组成的混合波束形成收发器来实现具有大规模多输入多输出(MIMO)的MM波。通过组合数字和模拟波束成形来实现混合波束形成架构时,功耗和成本降低。本文的主要动机是引入深度学习的混合波束形成设计,以加入MIMO MM波通信系统中的预编码器和组合器的优化。具体地,预制器和组合器的联合优化通过两个卷积神经网络(CNN)来执行,并通过进入操作的两个阶段,即训练和预测阶段。 MATLAB仿真结果表明,基于深度学习的混合波束形成方法,用于MM波大量MIMO优于频谱效率方面的遗产优化的混合波束形成方法。

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