无参考信号MIMO中基于两步神经网络的波束形成

Yuyan Zhao, Yanan Liu, G. Boudreau, A. B. Sediq, H. Abou-zeid, Xianbin Wang
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引用次数: 2

摘要

随着大规模天线阵在毫米波(mmWave)频段的部署,波束形成的分辨率得到了显著提高。为了减少基于码本的高分辨率波束形成中使用参考信号的长波束训练过程,通常采用分层码本来减少波束训练符号的数量。然而,就真正可实现的数据速率而言,较大的波束训练开销仍然是整个系统性能提高的瓶颈。为了实现基于非rs辅助码本的波束形成,利用频双工(FDD)系统的角度互易性,提出了一种基于神经网络的视距到达角估计算法进行波束选择。为了进一步实现高精度的LAoA估计,设计了两步神经网络模型来捕获接收信号与相应LAoA之间的关系。数值结果表明,该算法在和加权数据率(SWR)和和数据率(SR)方面都优于基准算法。在具有多个上行信号快照的低信噪比(SNR)环境下,该算法的性能也优于基于MUSIC的波束选择算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Two-Step Neural Network Based Beamforming in MIMO without Reference Signal
With the deployment of large scale antenna array in millimeter wave (mmWave) band, the resolution of beamforming has been dramatically improved. To reduce the long beam-training process using reference signal (RS) in codebook-based high resolution beamforming, hierarchical codebook is often used to reduce the number of beam-training symbols. However, the large beam-training overhead is still the bottleneck for overall system performance improvement in term of the true achievable data rate. In this paper, with the angle reciprocity in frequency duplex division (FDD) system, a neural network based line of sight path angle of arrival (LAoA) estimation algorithm is proposed for beam selection, in order to achieve the non-RS-aided codebook-based beamforming. To further achieve high accuracy LAoA estimation, two-step neural network models are designed to capture the relationship between the receiving signal and the corresponding LAoA. The numerical results show that the proposed algorithm outperforms the benchmark algorithm in terms of sum weighted data rate (SWR) and sum data rate (SR). In the low signal to noise ratio (SNR) environments with a couple of uplink signal snapshots, our algorithm also performs better than MUSIC based beam selection algorithm.
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