Model selection in continual transfer learning reduces UAV trajectory optimization convergence time by 44-56% versus training from scratch in O-RAN simulations using city maps and ray tracing.
Autonomous UAV Navigation Using Reinforcement Learning
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abstract
Unmanned aerial vehicles (UAV) are commonly used for missions in unknown environments, where an exact mathematical model of the environment may not be available. This paper provides a framework for using reinforcement learning to allow the UAV to navigate successfully in such environments. We conducted our simulation and real implementation to show how the UAVs can successfully learn to navigate through an unknown environment. Technical aspects regarding to applying reinforcement learning algorithm to a UAV system and UAV flight control were also addressed. This will enable continuing research using a UAV with learning capabilities in more important applications, such as wildfire monitoring, or search and rescue missions.
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2026 1verdicts
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Adaptive Machine Learning Framework for UAV Trajectory Optimization in O-RAN
Model selection in continual transfer learning reduces UAV trajectory optimization convergence time by 44-56% versus training from scratch in O-RAN simulations using city maps and ray tracing.