Distributed intelligent reflecting surfaces (IRSs) deployed in multi-user wireless communication systems promise improved system performance. However, the signal-to-interference-plus-noise ratio (SINR) analysis and IRSs optimization in such a system become challenging, due to the large number of involved parameters. The system optimization can be simplified if users are associated with IRSs, which in turn focus on serving the associated users. We provide a practical theoretical framework for the average SINR analysis of a distributed IRSs-assisted multi-user MISO system, where IRSs are optimized to serve their associated users. In particular, we derive the average SINR expression under maximum ratio transmission (MRT) precoding at the BS and optimized reflect beamforming configurations at the IRSs. A successive refinement (SR) method is then outlined to optimize the IRS-user association parameters for the formulated max-min SINR problem which motivates user-fairness. Simulations validate the average SINR analysis while confirming the superiority of a distributed IRSs system over a centralized IRS system as well as the gains with optimized IRS-user association as compared to random association.
翻译:在多用户无线通信系统中部署的分布式智能反射表面(IRS)有望提高系统性能。然而,由于所涉参数众多,在这种系统中的信号对干涉加噪音比率(SINR)分析和IRS优化变得具有挑战性。如果用户与IRS相联系,系统优化可以简化,而IRS又侧重于为相关用户服务。我们为对分布式IRS-辅助型多用户MISO系统进行的平均SINR分析提供了一个实用的理论框架,在该系统中,IRS将优化为相关用户服务。特别是,我们在BS的最大比率传输(MRT)下生成了SINR平均表达方式,并优化了IRS的波形配置。然后,对连续的改进(SR)方法进行了概述,以优化已拟订的、激发用户公平性的最大最小性SINR问题的IR用户联系参数。模拟验证了已分布式IRS系统在中央IRS系统中的优越性,同时确认分布式IRS系统在与优化型IRS用户联系的收益。