Digital-Twin Empowered Deep Reinforcement Learning For Site-Specific Radio Resource Management in NextG Wireless Aerial Corridor
Pulok Tarafder, Zoheb Hassan, Imtiaz Ahmed, Danda B. Rawat, Kamrul Hasan, Cong Pu

TL;DR
This paper introduces a Digital Twin-enabled deep reinforcement learning framework for efficient, real-time radio resource management in UAV-based aerial corridors, significantly outperforming traditional methods.
Contribution
It presents a novel two-stage optimization framework combining physics-based modeling and DRL, tailored for site-specific, real-time RRM in next-generation aerial networks.
Findings
PPO agent outperforms DQN and heuristics by up to 121% and 807%.
Achieves 44%-121% improvement in dense UAV scenarios.
Reduces inference latency by several orders of magnitude.
Abstract
Joint base station (BS) association and beam selection in multi-UAV aerial corridors constitutes a challenging radio resource management (RRM) problem. It is driven by high-dimensional action spaces, need for substantial overhead to acquire global channel state information (CSI), rapidly varying propagation channels, and stringent latency requirements. Conventional combinatorial optimization methods, while near-optimal, are computationally prohibitive for real-time operation in such dynamic environments. While learning-based approaches can mitigate computational complexity and CSI overhead, the need for extensive site-specific (SS) datasets for model training remains a key challenge. To address these challenges, we develop a Digital Twin (DT)-enabled two-stage optimization framework that couples physics-based beam gain modeling with DRL for scalable online decision-making. In the first…
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Taxonomy
TopicsUAV Applications and Optimization · Advanced MIMO Systems Optimization · Advanced Data and IoT Technologies
