Hierarchical LLM-Driven Control for HAPS-Assisted UAV Networks: Joint Optimization of Flight and Connectivity
Zijiang Yan, Hao Zhou, Wael Jaafar, Jianhua Pei, Ping Wang, Halim Yanikomeroglu, Hina Tabassum

TL;DR
This paper introduces a hierarchical LLM-driven control framework for UAV networks assisted by HAPS, optimizing flight and connectivity in complex 3D environments with significant efficiency and safety improvements.
Contribution
It presents a novel hierarchical control approach combining LLMs and reinforcement learning for joint UAV motion and communication optimization in integrated terrestrial and non-terrestrial networks.
Findings
Achieved 14% higher transportation efficiency.
Improved telecommunication throughput by 25%.
Reduced collision rates by 23%.
Abstract
Uncrewed aerial vehicles (UAVs) are increasingly deployed in complex networked environments, yet the joint optimization of multi-UAV motion control and connectivity remains a fundamental challenge. In this paper, we study a multi-UAV system operating in an integrated terrestrial and non-terrestrial network (ITNTN) comprising terrestrial base stations and high-altitude platform stations (HAPS). We consider a three-dimensional (3D) aerial highway scenario where UAVs must adapt their motion to ensure collision avoidance, efficient traffic flow, and reliable communication under dynamic and partially observable conditions. We first model the problem as a hierarchical multi-objective partially observable Markov decision process (H-MO-POMDP), capturing the coupling between control and communication objectives. Based on this formulation, we propose a large language model (LLM)-driven…
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