Bridging Network Fragmentation: A Semantic-Augmented DRL Framework for UAV-aided VANETs
Gaoxiang Cao, Wenke Yuan, Huasen He, Yunpeng Hou, Xiaofeng Jiang, Shuangwu Chen, Jian Yang

TL;DR
This paper introduces a semantic-augmented deep reinforcement learning framework for UAV deployment in urban VANETs, leveraging language models to improve network connectivity and efficiency.
Contribution
It presents a novel integration of LLMs into DRL for UAV control, enhancing topological understanding and reducing training time in network fragmentation scenarios.
Findings
Achieves state-of-the-art connectivity improvements
Reduces training episodes by 73.4%
Decreases energy consumption to 28.2% of baseline
Abstract
Vehicular Ad-hoc Networks (VANETs) are the digital cornerstone of autonomous driving, yet they suffer from severe network fragmentation in urban environments due to physical obstructions. Unmanned Aerial Vehicles (UAVs), with their high mobility, have emerged as a vital solution to bridge these connectivity gaps. However, traditional Deep Reinforcement Learning (DRL)-based UAV deployment strategies lack semantic understanding of road topology, often resulting in blind exploration and sample inefficiency. By contrast, Large Language Models (LLMs) possess powerful reasoning capabilities capable of identifying topological importance, though applying them to control tasks remains challenging. To address this, we propose the Semantic-Augmented DRL (SA-DRL) framework. Firstly, we propose a fragmentation quantification method based on Road Topology Graphs (RTG) and Dual Connected Graphs (DCG).…
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Taxonomy
TopicsVehicular Ad Hoc Networks (VANETs) · UAV Applications and Optimization · Advanced Neural Network Applications
