Sum-Rate Maximization for Movable-Antenna Array Enhanced Downlink NOMA Systems
Nianzu Li, Peiran Wu, Lipeng Zhu, Weidong Mei, Boyu Ning, Derrick Wing Kwan Ng

TL;DR
This paper proposes a low-complexity optimization algorithm for movable antenna array-enhanced downlink NOMA systems to maximize sum rate, outperforming fixed-position antenna systems and enhancing NOMA advantages.
Contribution
It introduces a novel resource allocation method jointly optimizing antenna positions, beamforming, and decoding order in MA-enabled NOMA systems.
Findings
Significant sum-rate improvement over fixed-position antenna systems.
Optimized antenna positions further enhance NOMA performance.
The proposed algorithm effectively balances complexity and performance.
Abstract
Movable antenna (MA) systems have recently attracted significant attention in the field of wireless communications owing to their exceptional capability to proactively reconfigure wireless channels via flexible antenna movements. In this paper, we investigate the resource allocation design for an MA array-enhanced downlink non-orthogonal multiple access (NOMA) system, where a base station deploys multiple MAs to serve multiple single-antenna users. Our goal is to maximize the sum rate of all users by jointly optimizing the transmit beamforming, positions of MAs, successive interference cancellation (SIC) decoding order, and users' corresponding decoding indicator matrix, while adhering to constraints on the maximum transmit power and finite MA moving region. The formulated problem is inherently highly non-convex, rendering it challenging to acquire a globally optimal solution. As a…
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