论文标题

深度学习的梁训练,用于在近场域中极度大规模的大型MIMO

Deep Learning Based Beam Training for Extremely Large-Scale Massive MIMO in Near-Field Domain

论文作者

Liu, Wang, Ren, Hong, Pan, Cunhua, Wang, Jiangzhou

论文摘要

非常大规模的大规模多输入 - 元素输出(XL-MIMO)被认为是下一代通信系统的有前途的技术。为了提高光束成形的收益,XL-MIMO系统在基于密码的光束训练中被广泛采用。但是,在XL-MIMO系统中,近场域扩展,近场代码本应用于光束训练,这大大增加了飞行员的开销。为了解决这个问题,我们提出了一种基于深度学习的光束训练计划,其中考虑了近场频道模型和近场代码手册。具体而言,我们首先利用与远场宽光束相对应的接收信号来估计最佳的近场光束。提出了两个培训方案,即拟议的原始和改进的神经网络。原始方案直接根据神经网络的输出直接估算最佳的近场代码字。相比之下,改进的方案执行了额外的光束测试,这可以显着提高光束训练的性能。最后,仿真结果表明,我们提出的计划可以显着减少近场域中的训练开销,并实现波束形成的增长。

Extremely large-scale massive multiple-input-multiple-output (XL-MIMO) is regarded as a promising technology for next-generation communication systems. In order to enhance the beamforming gains, codebook-based beam training is widely adopted in XL-MIMO systems. However, in XL-MIMO systems, the near-field domain expands, and near-field codebook should be adopted for beam training, which significantly increases the pilot overhead. To tackle this problem, we propose a deep learning-based beam training scheme where the near-field channel model and the near-field codebook are considered. To be specific, we first utilize the received signals corresponding to the far-field wide beams to estimate the optimal near-field beam. Two training schemes are proposed, namely the proposed original and the improved neural networks. The original scheme estimates the optimal near-field codeword directly based on the output of the neural networks. By contrast, the improved scheme performs additional beam testing, which can significantly improve the performance of beam training. Finally, the simulation results show that our proposed schemes can significantly reduce the training overhead in the near-field domain and achieve beamforming gains.

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