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Power Minimization of Intelligent Reflecting Surface-Aided Uplink IoT Networks

机译:智能反射表面辅助上行链路IOT网络的功率最小化

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Employing intelligent reflecting surfaces (IRSs) is emerging as a green alternative to massive antenna systems for improving signal quality and suppressing interference. Specifically, IRS is a planar surface consisting of a large number of low-cost and passive elements each being able to reflect the incident signal independently with an adjustable phase shift, thus the three-dimension (3D) passive beamforming can be collaboratively achieved without the need of any transmit radio-frequency (RF) chains. In this paper, we study the uplink power control of an IRS-aided Internet of Things (IoT) network under the quality of service (QoS) constraints at each user. Our goal is to minimize the total user power by jointly optimizing the phase shifts of IRS reflecting elements and the receiving beamforming at the BS, subject to each user’s individual signal-to-interference-plus-noise ratio (SINR) constraint which characterizes its QoS. To solve the formulated non-convex optimization problem, we develop an efficient scheme, called the Riemannian manifold-based alternating optimization (RM-AO). Simulation results demonstrate that the proposed RM-AO algorithm saves the uplink transmit power significantly.
机译:采用智能反射表面(IRS)作为用于提高信号质量和抑制干扰的巨大天线系统的绿色替代品。具体地,IRS是由大量低成本和无源元件组成的平面表面,每个低成本和被动元件可以独立地以可调节的相移独立地反射入射信号,因此可以在没有允许的情况下协同实现三维(3D)被动波束形成情况需要任何传输射频(RF)链。在本文中,我们在每个用户的服务质量(QoS)约束下,研究了IRS辅助Internet的上行链路功率控制(IOT)网络。我们的目标是通过共同优化IRS反射元件的相移和BS的接收波束成形来最小化总用户电源,对每个用户的各个信号到干扰 - 热噪声比(SINR)约束进行特征它的QoS 。为了解决配制的非凸优化问题,我们开发了一种有效的方案,称为Riemannian歧管的交替优化(RM-AO)。仿真结果表明,所提出的RM-AO算法可显着节省上行链路发射功率。

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