Semantic-Aware Edge Intelligence for UAV Handover in 6G Networks
- URL: http://arxiv.org/abs/2509.22668v1
- Date: Sun, 07 Sep 2025 10:27:41 GMT
- Title: Semantic-Aware Edge Intelligence for UAV Handover in 6G Networks
- Authors: Aubida A. Al-Hameed, Mohammed M. H. Qazzaz, Maryam Hafeez, Syed A. Zaidi,
- Abstract summary: 6G wireless networks aim to exploit semantic awareness to optimize radio resources.<n>This paper investigates a paradigm in which the capabilities of generative AI (GenAI) on the edge are harnessed for network optimization.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: 6G wireless networks aim to exploit semantic awareness to optimize radio resources. By optimizing the transmission through the lens of the desired goal, the energy consumption of transmissions can also be reduced, and the latency can be improved. To that end, this paper investigates a paradigm in which the capabilities of generative AI (GenAI) on the edge are harnessed for network optimization. In particular, we investigate an Unmanned Aerial Vehicle (UAV) handover framework that takes advantage of GenAI and semantic communication to maintain reliable connectivity. To that end, we propose a framework in which a lightweight MobileBERT language model, fine-tuned using Low-Rank Adaptation (LoRA), is deployed on the UAV. This model processes multi-attribute flight and radio measurements and performs multi-label classification to determine appropriate handover action. Concurrently, the model identifies an appropriate set of contextual "Reason Tags" that elucidate the decision's rationale. Our model, evaluated on a rule-based synthetic dataset of UAV handover scenarios, demonstrates the model's high efficacy in learning these rules, achieving high accuracy in predicting the primary handover decision. The model also shows strong performance in identifying supporting reasons, with an F1 micro-score of approximately 0.9 for reason tags.
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