Home /Research /Hybrid Machine Learning and Reinforcement Learning Framework for Adaptive UAV Obstacle Avoidance
LEARNING

Hybrid Machine Learning and Reinforcement Learning Framework for Adaptive UAV Obstacle Avoidance

Wojciech Skarka, Rukhseena Ashfaq

Year
2024
Citations
20
Access
Open access

Abstract

This review explores the integration of machine learning (ML) and reinforcement learning (RL) techniques in enhancing the navigation and obstacle avoidance capabilities of Unmanned Aerial Vehicles (UAVs). Various RL algorithms are assessed for their effectiveness in teaching UAVs autonomous navigation, with a focus on state representation from UAV sensors and real-time environmental interaction. The review identifies the strengths and limitations of current methodologies and highlights gaps in the literature, proposing future research directions to advance UAV technology. Interdisciplinary approaches combining robotics, AI, and aeronautics are suggested to improve UAV performance in complex environments.

Keywords

Reinforcement learningObstacle avoidanceComputer scienceArtificial intelligenceAvoidance learningObstacleMachine learningPsychologyMobile robotRobot

Related papers

Browse all LEARNING papers