Max-Min Fairness in IRS-Aided Multi-Cell MISO Systems via Joint Transmit and Reflective Beamforming
Hailiang Xie, Jie Xu, and Ya-Feng Liu

TL;DR
This paper develops joint transmit and reflective beamforming algorithms for IRS-assisted multi-cell MISO systems to maximize the minimum weighted SINR, demonstrating significant performance gains over benchmarks.
Contribution
It introduces an alternating optimization framework with novel SDR and SCA-based algorithms for joint beamforming in IRS-aided multi-cell MISO systems.
Findings
IRS significantly improves SINR performance.
SCA-based method outperforms SDR with lower complexity.
Proposed algorithms effectively optimize joint beamforming.
Abstract
This paper investigates an intelligent reflecting surface (IRS)-aided multi-cell multiple-input single-output (MISO) system consisting of several multi-antenna base stations (BSs) each communicating with a single-antenna user, in which an IRS is dedicatedly deployed for assisting the wireless transmission and suppressing the inter-cell interference. Under this setup, we jointly optimize the coordinated transmit beamforming at the BSs and the reflective beamforming at the IRS, for the purpose of maximizing the minimum weighted received signal-to-interference-plus-noise ratio (SINR) at users, subject to the individual maximum transmit power constraints at the BSs and the reflection constraints at the IRS. To solve the difficult non-convex minimum SINR maximization problem, we propose efficient algorithms based on alternating optimization, in which the transmit and reflective beamforming…
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Taxonomy
TopicsAdvanced Wireless Communication Technologies · Satellite Communication Systems · Antenna Design and Analysis
