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Learning-Based Beam Training Algorithms for IEEE802.11ad/ay Networks

机译:IEEE802.11ad / ay网络的基于学习的波束训练算法

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Recently, many researches are focusing on millimeter wave (mmWave) due to its large bandwidth resources. In the next 5G generation, wireless multi- gigabit (WiGig) is developed based on IEEE 802.11ad/ay standards at unlicensed mmWave bands for providing extremely high throughput. However, mmWave has high propagation loss due to high frequency transmission properties. Beamforming (BF) technique is adopted to solve this problem, and therefore, we have to perform beam training before data transmission. In the standard, the conventional method for beam training is exhaustive beam search (EBS) which takes too much time so that the data transmission time will decrease. On the other hand, blocked environments may severely degrade WiGig beam training performance, and most of existing algorithms do not consider this issue. Recently, machine and deep learning have been widely used in the wireless communication field. We propose a learning-based beam training (LBT) to simultaneously learn about wireless environments and beam training candidates. We select simplified neural network (NN) model to achieve lower computation overhead. To further refine learning information, we propose two enhanced algorithm, expanded LBT (LBT-E) and history-aided expanded LBT(LBT-HE). LBT-E aims to tackle unexpected slight deviation and LBT- HE make use of historical information to improve beam matching accuracy with acceptable latency. In our simulation, our proposed learningbased schemes achieve much higher throughput compared to EBS and algorithms in existing literatures.
机译:近来,由于毫米波(mmWave)的大量带宽资源,许多研究都集中在毫米波(mmWave)上。在下一代5G中,基于IEEE 802.11ad / ay标准的免许可mmWave频段上开发了无线多千兆位(WiGig),以提供极高的吞吐量。然而,由于高频传输特性,毫米波具有高传播损耗。由于采用了波束成形(BF)技术来解决此问题,因此,我们必须在数据传输之前进行波束训练。在该标准中,用于波束训练的常规方法是耗时的波束搜索(EBS),该方法花费太多时间,因此数据传输时间将减少。另一方面,受阻的环境可能会严重降低WiGig光束的训练性能,并且大多数现有算法都没有考虑此问题。最近,机器和深度学习已在无线通信领域中广泛使用。我们提出了一种基于学习的波束训练(LBT),以同时了解无线环境和候选波束训练。我们选择简化的神经网络(NN)模型以实现较低的计算开销。为了进一步完善学习信息,我们提出了两种增强算法:扩展LBT(LBT-E)和历史辅助扩展LBT(LBT-HE)。 LBT-E旨在解决意外的轻微偏差,而LBT-HE利用历史信息以可接受的等待时间提高光束匹配精度。在我们的仿真中,与现有文献中的EBS和算法相比,我们提出的基于学习的方案可实现更高的吞吐量。

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