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A machine learning-based design of PRACH receiver in 5G

机译:基于机器学习的PRACH接收器设计5G

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The physical random access channel (PRACH) in the uplink of cellular systems is used for the initial access requests from users. In fifth generation (5G) systems three different types of services are available, which are massive machine-type communication, enhanced mobile broadband communication, and ultra-reliable low-latency communication. Considering the tight requirements in terms of latency, a robust design of PRACH receiver is one of the priorities. In this paper we first explore the simple extension of a technique proposed for fourth generation (4G) systems to 5G. Then we propose the application of machine learning techniques to make the PRACH receiver more robust to false peaks, which are responsible of performance degradation in the extension of the 4G technique to 5G. Monte Carlo simulations are used to evaluate and compare the performance of the proposed algorithms.
机译:蜂窝系统上行链路中的物理随机接入信道(PRACH)用于来自用户的初始访问请求。在第五代(5G)系统中,有三种不同类型的服务,这是大量机器型通信,增强的移动宽带通信,以及超可靠的低延迟通信。考虑到延迟方面的严格要求,PRACH接收器的强大设计是优先级之一。在本文中,我们首先探讨为第四代(4G)系统提出的技术的简单扩展为5G。然后,我们提出了机器学习技术的应用,使PRACH接收器更强大地对假峰值,这在4G技术的延伸到5G的延伸中负责性能下降。 Monte Carlo模拟用于评估和比较所提出的算法的性能。

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