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Comparative Performance Analysis of Beam Sweeping Using a Deep Neural Net and Random Starting Point in mmWave 5G New Radio

机译:在mmWave 5G新无线电中使用深层神经网络和随机起点进行波束扫描的比较性能分析

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Millimeter wave (mmWave) is a key technology to support high data rate demands for 5G applications. Highly directional transmissions are crucial at these frequencies to compensate for high isotropic pathloss. This reliance on directional beamforming, however, makes the cell discovery (cell search) challenging since both base station (gNB) and user equipment (UE) jointly perform a search over angular space to locate potential beams to initiate communication. In the cell discovery phase, sequential beam sweeping is performed through the angular coverage region in order to transmit synchronization signals. The sweeping pattern can either be a linear rotation or a hopping pattern that makes use of additional information. This paper compares recently proposed beam sweeping pattern prediction, based on the dynamic distribution of user traffic, using a form of recurrent neural networks (RNNs) called a Gated Recurrent Unit (GRU), and random starting point sweeping to measure the synchronization delay distribution. Results show that user spatial distribution and their approximate location (direction) can be accurately predicted based on Call Detail Records (CDRs) data using a GRU, which is then used to calculate the sweeping pattern in the angular domain during cell search. Moreover, the proposed beam sweeping pattern prediction enable the UE to initially assess the gNB in approximately 0.41 of a complete scanning cycle with probability 0.9 in a sparsely distributed UE scenario.
机译:毫米波(mmWave)是一项关键技术,可满足5G应用对高数据速率的要求。在这些频率上,高度定向传输对于补偿高各向同性路径损耗至关重要。然而,由于基站(gNB)和用户设备(UE)共同在角度空间上执行搜索以定位潜在的波束以发起通信,因此对定向波束形成的依赖使小区发现(小区搜索)具有挑战性。在小区发现阶段,通过角度覆盖区域执行顺序波束扫描,以便发送同步信号。扫描模式可以是线性旋转,也可以是利用附加信息的跳跃模式。本文比较了最近提出的基于用户流量动态分布的波束扫描模式预测,使用了一种称为门控递归单元(GRU)的递归神经网络(RNN)和随机起点扫描来测量同步延迟分布。结果表明,可以使用GRU基于呼叫详细记录(CDR)数据准确预测用户空间分布及其大致位置(方向),然后将其用于在小区搜索过程中计算角度域中的扫描模式。此外,在稀疏分布的UE场景中,所提出的波束扫描模式预测使UE能够在整个扫描周期的约0.41中以概率0.9初步评估gNB。

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