首页 | 本学科首页   官方微博 | 高级检索  
     

利用无监督学习的RIS辅助毫米波通信系统鲁棒传输设计
引用本文:焦阳,桑健,李潇,金石.利用无监督学习的RIS辅助毫米波通信系统鲁棒传输设计[J].信号处理,2023,39(3):400-409.
作者姓名:焦阳  桑健  李潇  金石
作者单位:东南大学移动通信国家重点实验室,江苏 南京 210096
基金项目:国家自然科学基金62231009江苏省自然科学基金BK20211511江苏省前沿引领技术基础研究专项项目BK20212002
摘    要:本文研究了利用无监督学习的可重构智能表面(reconfigurable intelligent surface,RIS)辅助毫米波大规模多输入多输出(multiple input multiple output,MIMO)下行传输设计。首先,针对发送端信道状态信息(channel state information,CSI)非理想场景,推导了RIS辅助的毫米波下行传输系统平均频谱效率闭式上界。进一步,考虑实际系统硬件受限的条件,本文采用基于离散傅里叶变换(discrete Fourier transform,DFT)码本的模拟预编码,且RIS各反射单元仅能取有限的离散相移值。在此基础上,以所推导的平均频谱效率上界最大化为目标,提出一种基于无监督学习的发送端混合预编码、接收端数字合并以及RIS反射单元相移联合设计方法。所提方法采用两阶段无监督学习模型,分别生成RIS反射单元相移与发送端混合预编码,而接收端数字合并矩阵则采用最小均方误差(minimum mean squared error,MMSE)准则生成。同时,本文针对该模型提出了一种高效的分段训练方法。该训练方法分别对生成RIS反射...

关 键 词:毫米波  可重构智能表面  混合预编码  无监督学习
收稿时间:2023-02-10

Robust Transmission Design for RIS-assisted mmWave Communication Systems Exploiting Unsupervised Learning
Affiliation:National Mobile Communications Research Laboratory,Southeast University,Nanjing,Jiangsu 210096,China
Abstract:? ?This paper investigates the downlink transmission design of a reconfigurable intelligent surface (RIS)-aided millimeter wave massive multiple input multiple output (MIMO) communication system based on unsupervised learning. First, considering imperfect channel state information (CSI) at the transmitter, we derive a closed-form upper bound for the average spectral efficiency of the RIS-aided mmWave downlink transmission system. Furthermore, taking into account the impact of hardware impairment, discrete Fourier transform (DFT) codebook-based hybrid precoding is adopted at the transmitter, and each element of the RIS can only take limited discrete phase shift values. With these conditions, we propose an unsupervised learning based method to jointly design the hybrid precoder at the base station, the phase shift of each element on the RIS, and the digital combiner at the user equipment, under the goal of maximizing the derived system average spectral efficiency upper bound. This method takes a novel two-stage network model to generate the phase shift of each element on the RIS and the hybrid precoder at the base station respectively, while the digital combiner at the user equipment is generated by minimum mean squared error (MMSE) metric. An efficient phased training approach is also developed for the proposed two-stage network model. In this approach, the two networks generating the phase shift of each element on the RIS and the hybrid precoder at the base station are trained separately at the first two stages. After that, the two networks are trained jointly at the third stage. Simulation results demonstrate that the proposed method is more robust to imperfect CSI than the traditional iterative algorithms. When the degree of channel estimation error increases, the performance of the proposed method decreases by only about 1%, while the traditional iterative algorithm decreases by about 40%. At the same time, the proposed method is more robust to the transmission environment, and can maintain a performance improvement of at least 30% compared with traditional iterative algorithms. In addition, the proposed method has a hundred-fold improvement over the traditional iterative algorithm in the computation time cost. 
Keywords:
点击此处可从《信号处理》浏览原始摘要信息
点击此处可从《信号处理》下载全文
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号