Frequency Resource Management in 6G User-Centric CFmMIMO: A Hybrid Reinforcement Learning and Metaheuristic Approach
Selina Cheggour, Valeria Loscri

TL;DR
This paper introduces a hybrid reinforcement learning and metaheuristic approach for frequency resource management in 6G user-centric CFmMIMO networks, improving spectral efficiency and fairness in dynamic, dense environments.
Contribution
It proposes a novel hybrid AI-based resource allocation strategy combining RL and metaheuristics for 6G UC-CFmMIMO systems, validated with realistic channel modeling.
Findings
Hybrid approach outperforms AO and DDPG methods.
Achieves better balance between spectral efficiency and fairness.
Demonstrates effectiveness in realistic propagation scenarios.
Abstract
As sixth-generation (6G) networks continue to evolve, AI-driven solutions are playing a crucial role in enabling more efficient and adaptive resource management in wireless communication. One of the key innovations in 6G is user-centric cell-free massive Multiple-Input Multiple-Output (UC-CFmMIMO), a paradigm that eliminates traditional cell boundaries and enhances network performance by dynamically assigning access points (APs) to users. This approach is particularly well-suited for vehicular networks, offering seamless, homogeneous, ultra-reliable, and low-latency connectivity. However, in dense networks, a key challenge lies in efficiently allocating frequency resources within a limited shared subband spectrum while accounting for frequency selectivity and the dependency of signal propagation on bandwidth. These factors make resource allocation increasingly complex, especially in…
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Taxonomy
TopicsAdvanced MIMO Systems Optimization
