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首页> 外文期刊>IEEE communications letters >Deep-Learning-Based Phase-Only Robust Massive MU-MIMO Hybrid Beamforming
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Deep-Learning-Based Phase-Only Robust Massive MU-MIMO Hybrid Beamforming

机译:基于深度学习的阶段唯一强大的MU-MIMO混合波束形成

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摘要

Conventional hybrid beamforming (BF) techniques encounter high computational complexity (CC) and performance loss due to array steering vector mismatches. Therefore, in this letter, a joint robust adaptive BF (RAB) method based on the diagonal loading technique along with phase-only digital beamformer design is proposed. In addition, with the aim of reducing the CC of the system, a novel deep-learning model is proposed to estimate the digital weights. Simulations demonstrated that the proposed deep neural network (DNN) model can have similar performance for digital BF weights estimation as a metaheuristic-based one with significantly lower CC.
机译:传统的混合波束形成(BF)技术遇到了高计算复杂度(CC)和由于阵列转向载体不匹配而导致的性能损耗。 因此,在该字母中,提出了一种基于对角线加载技术的关节鲁棒自适应BF(RAB)方法以及仅相位的数字波束形成器设计。 此外,在减少系统的CC的目的,提出了一种新的深度学习模型来估计数字重量。 模拟表明,所提出的深神经网络(DNN)模型可以具有与数字BF权重估计相似的性能,作为基于成群质的基于CC。

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