Reconfigurable intelligent surface (RIS) can significantly enhance the service coverage of Tera-Hertz massive multiple-input multiple-output (MIMO) communication systems. However, obtaining accurate high-dimensional channel state information (CSI) with limited pilot and feedback signaling overhead is challenging, severely degrading the performance of conventional spatial division multiple access. To improve the robustness against CSI imperfection, this paper proposes a deep learning (DL)-based rate-splitting multiple access (RSMA) scheme for RIS-aided Tera-Hertz multi-user MIMO systems. Specifically, we first propose a hybrid data-model driven DL-based RSMA precoding scheme, including the passive precoding at the RIS as well as the analog active precoding and the RSMA digital active precoding at the base station (BS). To realize the passive precoding at the RIS, we propose a Transformer-based data-driven RIS reflecting network (RRN). As for the analog active precoding at the BS, we propose a match-filter based analog precoding scheme considering that the BS and RIS adopt the LoS-MIMO antenna array architecture. As for the RSMA digital active precoding at the BS, we propose a low-complexity approximate weighted minimum mean square error (AWMMSE) digital precoding scheme. Furthermore, for better precoding performance as well as lower computational complexity, a model-driven deep unfolding active precoding network (DFAPN) is also designed by combining the proposed AWMMSE scheme with DL. Then, to acquire accurate CSI at the BS for the investigated RSMA precoding scheme to achieve higher spectral efficiency, we propose a CSI acquisition network (CAN) with low pilot and feedback signaling overhead, where the downlink pilot transmission, CSI feedback at the user equipments (UEs), and CSI reconstruction at the BS are modeled as an end-to-end neural network based on Transformer.
翻译:重新配置智能表面(RIS)可以大大增强Tera-Hertz大规模多投入多输出(MIMO)通信系统的服务范围。然而,获得精确的高维频道状态信息(CSI)具有挑战性,其试点和反馈信号表明的间接费用有限,严重降低常规空间分割多重访问的性能。为了更好地应对 CSI不完善的强力性,本文建议为RIS 的Tera-Hertz大规模多用户多输出(IMIMO)系统提供基于深度学习(DLMA)的分率多重访问(RSMA)系统。具体地说,我们首先提议采用一个混合数据模型驱动的以DERM(RSMA)系统驱动的基于深度的多功能访问(RSMA)系统驱动的(DRR)系统驱动的基于深度的多功能化(RRRN)系统。我们首先提出一个基于更高级数据模型的、基于更精确的 IMLIM 的基于更精确的 RRS 网络预编码(RS) 系统(RS) 和基于BS 快速的智能的系统(BS) 运行的智能系统演示的智能系统, 正在对一个快速的系统进行快速的系统进行升级的系统进行升级的升级的系统进行升级的升级的升级的升级的计算,同时提出一个在BMS) 和不断变动的系统进行一个运行的系统内部的运行的系统内部的计算。