Home /Research /Reinforcement Learning for Autonomous Point-to-Point UAV Navigation
LEARNING

Reinforcement Learning for Autonomous Point-to-Point UAV Navigation

Salim Oyinlola, Nitesh Subedi, Soumik Sarkar

Year
2025
Access
Open access

Abstract

Unmanned Aerial Vehicles (UAVs) are increasingly used in automated inspection, delivery, and navigation tasks that require reliable autonomy. This project develops a reinforcement learning (RL) approach to enable a single UAV to autonomously navigate between predefined points without manual intervention. The drone learns navigation policies through trial-and-error interaction, using a custom reward function that encourages goal-reaching efficiency while penalizing collisions and unsafe behavior. The control system integrates ROS with a Gym-compatible training environment, enabling flexible deployment and testing. After training, the learned policy is deployed on a real UAV platform and evaluated under practical conditions. Results show that the UAV can successfully perform autonomous navigation with minimal human oversight, demonstrating the viability of RL-based control for point-to-point drone operations in real-world scenarios.

Keywords

cs.ROeess.SY

Related papers

Browse all LEARNING papers