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Anchor-Assisted Intelligent Reflecting Surface Channel Estimation for Multiuser Communications

Xinrong Guan, Qingqing Wu, Rui Zhang

202041 citationsDOI

Abstract

Due to the passive nature of Intelligent Reflecting Surface (IRS), channel estimation is a fundamental challenge in IRS-aided wireless networks. Particularly, as the number of IRS reflecting elements and/or that of IRS-served users increase, the channel training overhead becomes excessively high. To tackle this challenge, we propose in this paper a new anchor-assisted two-phase channel estimation scheme, where two anchor nodes, namely A1 and A2, are deployed near the IRS for helping the base station (BS) to acquire the cascaded BS-IRS-user channels. Specifically, in the first phase, the partial channel state information (CSI), i.e., the element-wise channel gain square, of the BS-IRS link is obtained by estimating the BS-IRS-A1/A2 channels and the A1-IRS-A2 channel, separately. Then, in the second phase, by leveraging such partial knowledge of the BS-IRS channel that is common to all users, the individual cascaded BS-IRS-user channels are efficiently estimated. Simulation results demonstrate that the proposed anchor-assisted channel estimation scheme is able to achieve comparable mean-squared error (MSE) performance as compared to the conventional scheme, but with significantly reduced channel training time.

Topics & Concepts

Channel (broadcasting)Base stationComputer scienceOverhead (engineering)Channel state informationMean squared errorComputer networkWirelessPhase (matter)Telecommunications linkTelecommunicationsMathematicsPhysicsStatisticsQuantum mechanicsOperating systemAdvanced Wireless Communication TechnologiesSatellite Communication SystemsIoT Networks and Protocols
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