论文标题
可重新配置的智能表面辅助多用户下行链路中基于学习的用户计划
Learning Based User Scheduling in Reconfigurable Intelligent Surface Assisted Multiuser Downlink
论文作者
论文摘要
可重新配置的智能表面(RIS)能够智能操纵入射电磁波的相位,以改善基本站(BS)和用户之间的无线传播环境。本文介绍了RIS辅助下行网络中的联合用户计划,RIS配置和BS光束成型问题,并具有有限的飞行员开销。我们表明,具有置换不变和模棱两可属性的图形神经网络(GNN)可用于适当安排用户并设计RIS配置以实现高总吞吐量,同时考虑用户之间的公平性。与首先估计通道的常规方法相比,请优化用户时间表,RIS配置和梁形器,本文表明,可以使用GNN直接从非常短的飞行员那里获得优化的用户时间表,然后可以使用第二个GNN优化RIS配置,最终可以基于BS BeamFormer,并基于整体有效的频道设计。数值结果表明,所提出的方法可以比基于传统的渠道估计方法更有效地利用接收的飞行员,并且可以推广到具有任意数量用户的系统。
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.