毫米波大规模多输入输出(MIMO)系统中基于波束成形的多分支无监督学习(Multi-Branch Unsupervised Learning-Based Beamforming in mm-Wave Massive MIMO Systems with Inaccurate Information

IF 5.3 2区 计算机科学 Q1 TELECOMMUNICATIONS IEEE Transactions on Green Communications and Networking Pub Date : 2024-03-15 DOI:10.1109/TGCN.2024.3401575
Jianghui Liu;Hongtao Zhang
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引用次数: 0

摘要

在移动毫米波(mm-Wave)系统中,大多数基于深度学习的波束成形模型只输入信道状态信息(CSI)。然而,随着用户速度的增加,CSI 的不准确性也会增加,从而导致性能严重下降。它们的单一模型结构导致大规模网络的泛化程度较低。本文为移动用户波束成形建立了一个多分支无监督学习模型,命名为 MB-IncepNet,其中额外考虑了不准确的用户位置信息(ULI),以提高波束成形的鲁棒性,并合理构建了一个入门-捷径块,以提高 MB-IncepNet 的泛化能力。具体来说,MB-IncepNet 有两个子网络,分别用于 ULI 和 CSI 输入,这两个子网络首先由 Inception-Shortcut 处理程序进行处理,然后通过全连接处理程序融合为波束成形修正结果。此外,Inception-Shortcut 块有多个并行卷积分支,具有不同大小的卷积核和一个快捷方式,这表明 MB-IncepNet 能够适应不同规模的网络。此外,还将基站功率约束作为功率层纳入模型,并选择和率的倒数作为无监督训练的损失函数。仿真结果表明,与理想的迭代算法相比,在ULI和CSI不准确的情况下,MB-IncepNet仍能达到90%以上的有效和率。
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Multi-Branch Unsupervised Learning-Based Beamforming in mm-Wave Massive MIMO Systems With Inaccurate Information
In mobile millimeter wave (mm-Wave) systems, most deep learning-based beamforming models only input channel state information (CSI). However, as user speed increases, CSI inaccuracy increases, leading to severe performance degradation. Their single model structures cause a low generalization in large-scale networks. In this paper, a multi-branch unsupervised learning model, named MB-IncepNet, is established for mobile user beamforming, where inaccurate user location information (ULI) is extra considered to improve the beamforming robustness, and an Inception-Shortcut block is rationally constructed to improve the generalization of MB-IncepNet. Specifically, MB-IncepNet has two sub-networks for ULI and CSI inputs, which are processed first by the Inception-Shortcut processing and then fused to correct beamforming results by full-connection processing. Furthermore, the Inception-Shortcut block has multiple parallel convolution branches with convolution kernels of different sizes and a shortcut, which indicates MB-IncepNet can adapt to networks of different scales. Besides, the base station power constraint is incorporated into the model as a power layer, and the inverse of the sum-rate is chosen as the loss function for unsupervised training. The simulation results show that, under inaccurate ULI and CSI, MB-IncepNet can still achieve more than 90% effective sum-rate compared with the ideal iterative algorithm.
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来源期刊
IEEE Transactions on Green Communications and Networking
IEEE Transactions on Green Communications and Networking Computer Science-Computer Networks and Communications
CiteScore
9.30
自引率
6.20%
发文量
181
期刊最新文献
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