Hallucination-Aware Generative Pretrained Transformer for Cooperative Aerial Mobility Control
Hallucination-Aware Generative Pretrained Transformer for Cooperative Aerial Mobility Control
This paper proposes SafeGPT, a two-tiered framework that integrates generative pretrained transformers (GPTs) with reinforcement learning (RL) for efficient and reliable unmanned aerial vehicle (UAV) last-mile deliveries. In the proposed design, a Global GPT module assigns high-level tasks such as sector allocation, while an On-Device GPT manages real-time local route planning. An RL-based safety filter monitors each GPT decision and overrides unsafe actions that could lead to battery depletion or duplicate visits, effectively mitigating hallucinations. Furthermore, a dual replay buffer mechanism helps both the GPT modules and the RL agent refine their strategies over time. Simulation results demonstrate that SafeGPT achieves higher delivery success rates compared to a GPT-only baseline, while substantially reducing battery consumption and travel distance. These findings validate the efficacy of combining GPT-based semantic reasoning with formal safety guarantees, contributing a viable solution for robust and energy-efficient UAV logistics.
Hyojun Ahn、Seungcheol Oh、Gyu Seon Kim、Soyi Jung、Soohyun Park、Joongheon Kim
航空自动化技术、自动化技术设备
Hyojun Ahn,Seungcheol Oh,Gyu Seon Kim,Soyi Jung,Soohyun Park,Joongheon Kim.Hallucination-Aware Generative Pretrained Transformer for Cooperative Aerial Mobility Control[EB/OL].(2025-04-14)[2025-06-06].https://arxiv.org/abs/2504.10831.点此复制
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