Reinforcement Learning Aided Link Adaptation for Downlink NOMA Systems With Channel Imperfections

Qu Luo, Zeina Mheich, Gaojie Chen, Pei Xiao, Zilong Liu
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引用次数: 3

Abstract

Non-orthogonal multiple access (NOMA) is a promising candidate radio access technology for future wireless communication systems, which can achieve improved connectivity and spectral efficiency. Without sacrificing error rate performance, link adaptation combining with adaptive modulation and coding (AMC) and hybrid automatic repeat request (HARQ) can provide better spectral efficiency and reliable data transmission by allowing both power and rate to adapt to channel fading and enabling re-transmissions. However, current AMC or HARQ schemes may not be preferable for NOMA systems due to the imperfect channel estimation and error propagation during successive interference cancellation (SIC). To address this problem, a reinforcement learning based link adaptation scheme for downlink NOMA systems is introduced in this paper. Specifically, we first analyze the throughput and spectrum efficiency of NOMA system with AMC combined with HARQ. Then, taking into account the imperfections of channel estimation and error propagation in SIC, we propose SINR and SNR based corrections to correct the modulation and coding scheme selection. Finally, reinforcement learning (RL) is developed to optimize the SNR and SINR correction process. Comparing with a conventional fixed look-up table based scheme, the proposed solutions achieve superior performance in terms of spectral efficiency and packet error performance.
具有信道缺陷的下行NOMA系统的强化学习辅助链路自适应
非正交多址(NOMA)是未来无线通信系统中一种很有前途的无线接入技术,它可以实现更高的连通性和频谱效率。在不牺牲误码率性能的前提下,链路自适应与自适应调制编码(AMC)和混合自动重复请求(HARQ)相结合,通过允许功率和速率适应信道衰落并实现重传,可以提供更好的频谱效率和可靠的数据传输。然而,由于在连续干扰抵消(SIC)过程中的信道估计和误差传播不完善,目前的AMC或HARQ方案可能不适合NOMA系统。为了解决这一问题,本文提出了一种基于强化学习的下行NOMA系统链路自适应方案。具体来说,我们首先分析了AMC与HARQ相结合的NOMA系统的吞吐量和频谱效率。然后,考虑到SIC中信道估计和误差传播的缺陷,我们提出了基于信噪比和信噪比的校正方法来校正调制和编码方案的选择。最后,采用强化学习(RL)优化信噪比和信噪比校正过程。与传统的基于固定查找表的方案相比,本文提出的方案在频谱效率和包错性能方面都具有较好的性能。
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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