Ultra-reliable Low-Latency Communication (URLLC) is a key feature of 5G systems. The quality of service (QoS) requirements imposed by URLLC are less than 10ms delay and less than $10^{-5}$ packet loss rate (PLR). To satisfy such strict requirements with minimal channel resource consumption, the devices need to accurately predict the channel quality and select Modulation and Coding Scheme (MCS) for URLLC in a proper way. This paper presents a novel real-time channel prediction system based on Software-Defined Radio that uses a neural network. The paper also describes and shares an open channel measurement dataset that can be used to compare various channel prediction approaches in different mobility scenarios in future research on URLLC
翻译:超可靠低寿命通信(URLLC)是5G系统的一个关键特征。URLLC要求的服务质量(QOS)要求低于10米延迟,低于10 ⁇ -5美元(PLR)美元包损失率(PLR)。要满足这种严格的要求,使用最低限度的频道资源消耗,这些装置需要准确预测频道质量,并以适当的方式选择URLC的移动和编码计划(MCS)。本文展示了一个新的实时频道预测系统,该系统以软件定义无线电为基础,使用神经网络。本文还描述并分享了一个开放式频道测量数据集,可用于在今后关于URLC的研究中比较不同移动情景中的各种频道预测方法。