Adaptive Machine Learning Framework for UAV Trajectory Optimization in O-RAN
This paper introduces a novel framework for optimizing unmanned aerial vehicle (UAV) trajectories in 6G cellular systems by integrating enhanced continual transfer learning within the O-RAN architecture. The system utilizes a library of pre-trained models and a selection mechanism to minimize adaptation time when operating in dynamic environments.