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Hybrid Precoding for Multiuser Millimeter Wave Massive MIMO Systems: A Deep Learning Approach

机译:多用户毫米波大规模MIMO系统的混合预编码:一种深度学习方法

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In multi-user millimeter wave (mmWave) multiple-input-multiple-output (MIMO) systems, hybrid precoding is a crucial task to lower the complexity and cost while achieving a sufficient sum-rate. Previous works on hybrid precoding were usually based on optimization or greedy approaches. These methods either provide higher complexity or have sub-optimum performance. Moreover, the performance of these methods mostly relies on the quality of the channel data. In this work, we propose a deep learning (DL) framework to improve the performance and provide less computation time as compared to conventional techniques. In fact, we design a convolutional neural network for MIMO (CNN-MIMO) that accepts as input an imperfect channel matrix and gives the analog precoder and combiners at the output. The procedure includes two main stages. First, we develop an exhaustive search algorithm to select the analog precoder and combiners from a predefined codebook maximizing the achievable sum-rate. Then, the selected precoder and combiners are used as output labels in the training stage of CNN-MIMO where the input-output pairs are obtained. We evaluate the performance of the proposed method through numerous and extensive simulations and show that the proposed DL framework outperforms conventional techniques. Overall, CNN-MIMO provides a robust hybrid precoding scheme in the presence of imperfections regarding the channel matrix. On top of this, the proposed approach exhibits less computation time with comparison to the optimization and codebook based approaches.
机译:在多用户毫米波(mmWave)多输入多输出(MIMO)系统中,混合预编码对于降低复杂度和成本,同时又要获得足够的总速率是至关重要的任务。以前关于混合预编码的工作通常基于优化或贪婪方法。这些方法要么提供更高的复杂性,要​​么具有次优的性能。而且,这些方法的性能主要取决于信道数据的质量。在这项工作中,我们提出了一种深度学习(DL)框架,与传统技术相比,该框架可以提高性能并提供更少的计算时间。实际上,我们为MIMO设计了卷积神经网络(CNN-MIMO),该网络接受不完善的信道矩阵作为输入,并在输出处提供模拟预编码器和组合器。该过程包括两个主要阶段。首先,我们开发了一种穷举搜索算法,以从预定义的码本中选择模拟预编码器和组合器,以最大程度地实现可实现的总和率。然后,在获得输入输出对的CNN-MIMO的训练阶段,将所选的预编码器和组合器用作输出标签。我们通过大量且广泛的仿真评估了所提出方法的性能,并表明所提出的DL框架优于传统技术。总体而言,在存在与信道矩阵有关的缺陷时,CNN-MIMO提供了鲁棒的混合预编码方案。最重要的是,与基于优化和基于码本的方法相比,所提出的方法具有更少的计算时间。

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