Movable Antenna-Enhanced Multiuser Communication: Optimal Discrete Antenna Positioning and Beamforming

CoRR(2023)

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摘要
Movable antennas (MAs) are a promising paradigm to enhance the spatial degrees of freedom of conventional multi-antenna systems by flexibly adapting the positions of the antenna elements within a given transmit area. In this paper, we model the motion of the MA elements as discrete movements and study the corresponding resource allocation problem for MA-enabled multiuser multiple-input single-output (MISO) communication systems. Specifically, we jointly optimize the beamforming and the MA positions at the base station (BS) for the minimization of the total transmit power while guaranteeing the minimum required signal-to-interference-plus-noise ratio (SINR) of each individual user. To obtain the globally optimal solution to the formulated resource allocation problem, we develop an iterative algorithm capitalizing on the generalized Bender's decomposition with guaranteed convergence. Our numerical results demonstrate that the proposed MA-enabled communication system can significantly reduce the BS transmit power and the number of antenna elements needed to achieve a desired performance compared to state-of-the-art techniques, such as antenna selection. Furthermore, we observe that refining the step size of the MA motion driver improves performance at the expense of a higher computational complexity.
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关键词
Joint Optimization,Antenna Position,Multi-user Communication,Step Size,Computational Complexity,Communication Systems,Iterative Algorithm,Global Optimization,Base Station,Antenna Array,Global Optimal Solution,Signal-to-interference-plus-noise Ratio,Resource Allocation Problem,Spatial Degrees Of Freedom,Antenna Selection,Optimization Problem,Lagrange Multiplier,Inequality Constraints,Exhaustive Search,Discrete Variables,Primal Problem,Master Problem,Baseline Schemes,Multiple-input Multiple-output Systems,Multiple-input Multiple-output,Positional Candidate,Binary Constraints,Multi-user System,Beamforming Matrix,Mixed Integer Linear Programming
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