A Deep-Learning-based Link Adaptation Design for eMBB/URLLC Multiplexing in 5G NR

Yan Huang, Yiwei Thomas Hou, W. Lou
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引用次数: 9

Abstract

URLLC is an important use case in 5G NR that targets at 1-ms level delay-sensitive applications. For fast transmission of URLLC traffic, a promising mechanism is to multiplex URLLC traffic into a channel occupied by eMBB service through preemptive puncturing. Although preemptive puncturing can offer transmission resource to URLLC on demand, it will adversely affect throughput and link reliability performance of eMBB service. To mitigate such an adverse impact, a possible approach is to employ link adaptation (LA) through MCS selection for eMBB users. In this paper, we study the problem of maximizing eMBB throughput through MCS selection while ensuring link reliability requirement for eMBB users. We present DELUXE – the first successful design and implementation based on deep learning to address this problem. DELUXE involves a novel mapping method to compress high-dimensional eMBB transmission information into a low-dimensional representation with minimal information loss, a learning method to learn and predict the block-error rate (BLER) under each MCS, and a fast calibration method to compensate errors in BLER predictions. For proof of concept, we implement DELUXE through a link-level 5G NR simulator. Extensive experimental results show that DELUXE can successfully maintain the desired link reliability for eMBB while striving for spectral efficiency. In addition, our implementation can meet the real-time requirement (< 125 μs) in 5G NR.
基于深度学习的5G NR eMBB/URLLC复用链路自适应设计
URLLC是5G NR中的一个重要用例,目标是1毫秒级别的延迟敏感应用。为了实现URLLC流量的快速传输,一种很有前途的机制是通过抢占式穿刺将URLLC流量复用到eMBB服务占用的信道中。虽然抢占式穿刺可以按需向URLLC提供传输资源,但会对eMBB业务的吞吐量和链路可靠性性能产生不利影响。为了减轻这种不利影响,一种可能的方法是通过为eMBB用户选择MCS来采用链路适应(LA)。本文研究了在保证eMBB用户链路可靠性要求的同时,通过MCS选择最大化eMBB吞吐量的问题。我们提出了DELUXE -第一个基于深度学习的成功设计和实现来解决这个问题。DELUXE包括一种新颖的映射方法,将高维eMBB传输信息压缩成具有最小信息损失的低维表示,一种学习方法来学习和预测每个MCS下的块错误率(BLER),以及一种快速校准方法来补偿BLER预测中的误差。为了验证概念,我们通过链路级5G NR模拟器实现了DELUXE。大量的实验结果表明,DELUXE能够在保证频谱效率的同时,成功地保持eMBB所需的链路可靠性。此外,我们的实现可以满足5G NR的实时性要求(< 125 μs)。
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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