Bridging Network Fragmentation: A Semantic-Augmented DRL Framework for UAV-aided VANETs
arXiv cs.AI / 3/20/2026
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Key Points
- VANET fragmentation due to urban obstructions is a key challenge for autonomous driving networks.
- UAVs are proposed to bridge connectivity gaps, but traditional DRL-based deployment lacks semantic road topology understanding, leading to inefficiency.
- The paper introduces Semantic-Augmented DRL (SA-DRL) with Road Topology Graphs (RTG) and Dual Connected Graphs (DCG) to quantify fragmentation and guide decisions.
- A four-stage pipeline converts a general-purpose LLM into a domain-specific topology expert, and the SA-PPO algorithm injects the LLM's semantic reasoning into the policy as a prior via a Logit Fusion mechanism.
- In simulations, SA-PPO achieves state-of-the-art performance, reaching baseline performance with 26.6% of training episodes, and improves connectivity metrics by 13.2% and 23.5% while reducing energy consumption to 28.2% of the baseline.
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