On Employing Deep Learning to Enhance the Performance of 5G NR Two Step RACH Procedure

S. Swain, Ashit Subudhi
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Abstract

To meet the latency requirements of various business usecases and applications in 5G New Radio (NR), two step grant-free RACH procedure has been proposed in Third Generation Partnership Project (3GPP) release 16 for granting access to subscribers. However, due to the limited number of preambles, there is a non-zero probability that two mobile User Equipments (UEs) selecting same preamble signatures leading to collisions. Consequently, the base stations (gNBs) in 5G Radio Access Network (RAN) are unable to send a response to the UEs. Furthermore, with the increase in the number of cellular UEs and Machine Type Communication (MTC) devices, the probability of such preamble collisions further increases, thereby leading to reattempts by UEs. This in turn, results in increased latency and reduced channel utilization. In order to reduce contention during preamble access, we propose to use deep learning based models to design a RACH procedure that predicts the incoming connection requests in advance and proactively allocates uplink resources to UEs. We have used Recurrent Neural Network (RNN) and Long Short Term Memory (LSTM) models to predict UEs which are going to participate in two step RACH procedure. On doing extensive simulations, it is observed that both RNN and LSTM models perform equally good in reducing the number of collisions in a dense user scenario thereby enabling massive user access to 5G network.
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利用深度学习提高5G NR两步RACH过程性能研究
为了满足5G新无线电(NR)中各种业务用例和应用的延迟需求,第三代合作伙伴计划(3GPP)第16版提出了两步无授权RACH流程,用于向用户授予访问权限。然而,由于前导信号的数量有限,两台移动用户设备选择相同的前导信号导致碰撞的概率不为零。因此,5G无线接入网(RAN)中的基站(gnb)无法向终端发送响应。此外,随着蜂窝ue和机器类型通信(MTC)设备数量的增加,这种前导碰撞的概率进一步增加,从而导致ue的重试。这反过来又会导致延迟增加和通道利用率降低。为了减少前置访问中的争用,我们提出使用基于深度学习的模型来设计一个RACH过程,该过程可以提前预测传入的连接请求并主动将上行资源分配给终端。我们使用循环神经网络(RNN)和长短期记忆(LSTM)模型来预测将参与两步RACH过程的ue。通过大量的模拟,可以观察到RNN和LSTM模型在减少密集用户场景中的碰撞数量方面表现同样良好,从而使大量用户能够访问5G网络。
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