Anchor-Assisted Channel Estimation for Intelligent Reflecting Surface Aided Multiuser Communication
Xinrong Guan, Qingqing Wu, and Rui Zhang

TL;DR
This paper introduces anchor-assisted channel estimation methods for IRS-aided multiuser wireless communication, significantly reducing training overhead and improving channel estimation accuracy compared to existing schemes.
Contribution
The paper proposes two novel anchor-assisted channel estimation schemes that lower real-time training overhead by estimating static channels offline, enhancing IRS-assisted communication performance.
Findings
The proposed schemes outperform existing methods in simulation tests.
The first scheme is better with large BS antenna arrays.
The second scheme excels with fewer BS antennas.
Abstract
Channel estimation is a practical challenge for intelligent reflecting surface (IRS) aided wireless communication. As the number of IRS reflecting elements or IRS-aided users increases, the channel training overhead becomes excessively high, which results in long delay and low throughput in data transmission. To tackle this challenge, we propose in this paper a new anchor-assisted channel estimation approach, where two anchor nodes, namely A1 and A2, are deployed near the IRS for facilitating its aided base station (BS) in acquiring the cascaded BS-IRS-user channels required for data transmission. Specifically, in the first scheme, the partial channel state information (CSI) on the element-wise channel gain square of the common BS-IRS link for all users is first obtained at the BS via the anchor-assisted training and feedback. Then, by leveraging such partial CSI, the cascaded…
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Taxonomy
TopicsAdvanced Wireless Communication Technologies · Satellite Communication Systems · IoT Networks and Protocols
