Reconfigurable intelligent surface (RIS) is capable of intelligently manipulating the phases of the incident electromagnetic wave to improve the wireless propagation environment between the base-station (BS) and the users. This paper addresses the joint user scheduling, RIS configuration, and BS beamforming problem in an RIS-assisted downlink network with limited pilot overhead. We show that graph neural networks (GNN) with permutation invariant and equivariant properties can be used to appropriately schedule users and to design RIS configurations to achieve high overall throughput while accounting for fairness among the users. As compared to the conventional methodology of first estimating the channels then optimizing the user schedule, RIS configuration and the beamformers, this paper shows that an optimized user schedule can be obtained directly from a very short set of pilots using a GNN, then the RIS configuration can be optimized using a second GNN, and finally the BS beamformers can be designed based on the overall effective channel. Numerical results show that the proposed approach can utilize the received pilots more efficiently than the conventional channel estimation based approach, and can generalize to systems with an arbitrary number of users.
翻译:可重新配置的智能表面(RIS)能够明智地操纵事件电磁波的各个阶段,以改善基地站和用户之间的无线传播环境。本文件述及在IRS辅助的低链路网络中联合用户时间安排、RIS配置和BS波束成型问题,试点间接费用有限。我们显示,具有变异和等异特性的图形神经网络(GNN)可以用于适当安排用户,并设计RIS配置,以实现高总体吞吐量,同时考虑用户之间的公平性。与首先估计频道的常规方法相比,先对频道进行优化,然后对用户时间表、RIS配置和光源进行优化。本文表明,最优化的用户时间表可以直接从使用GNN的非常短的一组飞行员中获取,然后利用第二个GNNN进行优化,最后,BS型螺旋成型网络可以在总体有效频道的基础上设计。数字结果显示,拟议的方法可以比基于常规频道估计的方法更高效地利用接收的飞行员,并且可以对用户的任意数进行系统进行概括。