Fluid Antenna Networks Beyond Beamforming: An AI-Native Control Paradigm for 6G
Ian F. Akyildiz, Tu\u{g}\c{c}e Bilen

TL;DR
This paper proposes an AI-native control framework for fluid antenna networks in 6G, integrating antenna reconfiguration with network management to improve performance and interference mitigation.
Contribution
It introduces a joint control architecture combining antenna adaptation with radio resource management using multi-agent reinforcement learning in multi-cell environments.
Findings
Performance gains at cell edges
Reduced inter-cell interference
Effective adaptive control in dynamic conditions
Abstract
Fluid Antenna Systems (FAS) introduce a new degree of freedom for wireless networks by enabling the physical antenna position to adapt dynamically to changing radio conditions. While existing studies primarily emphasize physical-layer gains, their broader implications for network operation remain largely unexplored. Once antennas become reconfigurable entities, antenna positioning naturally becomes part of the network control problem rather than a standalone optimization task. This article presents an AI-native perspective on fluid antenna networks for future 6G systems. Instead of treating antenna repositioning as an isolated operation, we consider a closed-loop control architecture in which antenna adaptation is jointly managed with conventional radio resource management (RRM) functions. Within this framework, real-time network observations are translated into coordinated antenna and…
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Taxonomy
TopicsAdvanced MIMO Systems Optimization · Wireless Networks and Protocols · Cognitive Radio Networks and Spectrum Sensing
