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Channel Estimation for Cell-Free mmWave Massive MIMO Through Deep Learning

机译:通过深度学习实现无蜂窝毫米波大规模MIMO的信道估计

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摘要

The combination of cell-free massive multiple-input multiple-output (MIMO) systems along with millimeter-wave (mmWave) bands is indeed one of most promising technological enablers of the envisioned wireless Gbit/s experience. However, both massive antennas at access points and large bandwidth at mmWave induce high computational complexity to exploit an accurate estimation of channel state information. Considering the sparse mmWave channel matrix as a natural image, we propose a practical and accurate channel estimation framework based on the fast and flexible denoising convolutional neural network (FFDNet). In contrast to previous deep learning based channel estimation methods, FFDNet is suitable a wide range of signal-to-noise ratio levels with a flexible noise level map as the input. More specifically, we provide a comprehensive investigation to optimize the FFDNet based channel estimator. Extensive simulation results validate that the training speed of FFDNet is faster than state-of-the-art channel estimators without sacrificing normalized mean square error performance, which makes FFDNet as an practical channel estimator for cell-free mmWave massive MIMO systems.
机译:无单元大规模多输入多输出(MIMO)系统与毫米波(mmWave)频段的结合确实是可预见的无线Gbit / s体验的最有希望的技术推动力之一。但是,接入点处的大型天线和mmWave处的大带宽都会引起很高的计算复杂度,从而无法精确估计信道状态信息。考虑到稀疏的毫米波信道矩阵为自然图像,我们提出了一种基于快速灵活的去噪卷积神经网络(FFDNet)的实用而准确的信道估计框架。与以前的基于深度学习的信道估计方法相比,FFDNet适用于各种信噪比级别,并具有灵活的噪声级别图作为输入。更具体地说,我们提供了全面的研究以优化基于FFDNet的信道估计器。大量的仿真结果验证了FFDNet的训练速度比最新的信道估计器要快,而又不牺牲标准化均方误差性能,这使得FFDNet成为无蜂窝mmWave大规模MIMO系统的实用信道估计器。

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