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首页> 外文期刊>IEEE Transactions on Vehicular Technology >A Deep Learning-Based Low Overhead Beam Selection in mmWave Communications
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A Deep Learning-Based Low Overhead Beam Selection in mmWave Communications

机译:MMWAVE通信中基于深度学习的低开销选择

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摘要

Due to large amounts of available spectrum at high frequencies, millimeter-wave (mmWave) technology has gained extensive research attention in 5G communications, whereas mmWave links suffer from severe free space attenuation. Codebook-based beamforming techniques with multiple antennas can effectively alleviate this challenge with low computational complexity and low hardware cost. However, small delay and high-speed communications with beamforming techniques require beam alignment with small overhead so as to establish the wireless link quickly. In this context, this paper proposes a deep learning-based low overhead analog beam selection scheme by virtue of the super-resolution technology. To be concrete, deep neural networks are employed to conduct beam quality estimation based on partial beam measurements. Our proposed scheme can cover all the directions of arriving signals with low overhead by utilizing codebooks with different beam widths. Furthermore, for the purpose of further reducing the overhead, we formulate the beam quality prediction model based on the past beam sweepings. With these beam quality estimation and prediction model, the beam that achieves large signal-to-noise-power-ratio (SNR) can be selected based on partial beam measurements. Simulation results show that the proposed scheme can accurately estimate beam qualities and give high probability of optimal beam selections with low overhead.
机译:由于高频的大量可用频谱,毫米波(MMWAVE)技术在5G通信中获得了广泛的研究,而MMWAVE链接遭受严重的自由空间衰减。具有多个天线的基于码本的波束成形技术可以有效地减轻了低计算复杂度和低硬件成本的挑战。然而,与波束成形技术的小延迟和高速通信需要与小开销的光束对齐,以便快速建立无线链路。在这种情况下,本文提出了借助于超分辨率技术的深度学习的低开销模拟光束选择方案。要成为混凝土,采用深度神经网络基于部分光束测量来进行光束质量估计。我们所提出的方案可以通过利用具有不同光束宽度的码本,覆盖具有低开销的到达信号的所有方向。此外,为了进一步减少开销,我们基于过去的光束扫描来制定光束质量预测模型。利用这些光束质量估计和预测模型,可以基于部分光束测量来选择实现大信噪比功率比(SNR)的光束。仿真结果表明,该方案可以准确地估计光束质量,并具有低开销的最佳光束选择的高概率。

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