On Optimal Channel Uses in Ultra-Reliable Short-Packet Relaying Communications

T. Chu, H. Zepernick, T. Duong
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Abstract

To support ultra-reliable low latency communication (URLLC) services in fifth-generation mobile networks, short-packet transmission is essential. However, due to the limited packet size, errors cannot be reduced to arbitrarily low levels for a given coding rate as for conventional communication systems covered by the Shannon theory. In this paper, we consider URLLC in dual-hop decode-and-forward relaying networks where the channel in each hop varies fast. A simple but efficient optimization of the block lengths is performed to minimize the block error rate (BLER) of the proposed system. In particular, we deploy machine learning models using the linear regression and normalized method to determine the optimal fraction of channel uses for the transmission over each hop. Numerical results show that the BLER of the consider relaying system with optimal block lengths for each hop based on the machine learning model outperforms conventional relaying systems with equal block lengths.
超可靠短包中继通信中最优信道使用研究
为了支持第五代移动网络的超可靠低延迟通信(URLLC)业务,短分组传输是必不可少的。然而,由于数据包大小的限制,对于给定的编码速率,错误不能像香农理论所涵盖的传统通信系统那样降低到任意低的水平。本文考虑了双跳译码转发中继网络中每跳信道变化较快的URLLC问题。为了最小化系统的块错误率(BLER),对块长度进行了简单而有效的优化。特别是,我们使用线性回归和归一化方法部署机器学习模型,以确定每跳传输的最佳信道使用比例。数值结果表明,基于机器学习模型的每跳最优块长度的考虑中继系统的BLER优于等块长度的传统中继系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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