Litcius/Paper detail

Adaptive Path Planning for Fusing Rapidly Exploring Random Trees and Deep Reinforcement Learning in an Agriculture Dynamic Environment UAVs

Gabriel G. R. de Castro, Guido S. Berger, Álvaro Rogério Cantieri, Marco Antônio Simões Teixeira, José Lima, Ana I. Pereira, Milena F. Pinto

2023Agriculture76 citationsDOIOpen Access PDF

Abstract

Unmanned aerial vehicles (UAV) are a suitable solution for monitoring growing cultures due to the possibility of covering a large area and the necessity of periodic monitoring. In inspection and monitoring tasks, the UAV must find an optimal or near-optimal collision-free route given initial and target positions. In this sense, path-planning strategies are crucial, especially online path planning that can represent the robot’s operational environment or for control purposes. Therefore, this paper proposes an online adaptive path-planning solution based on the fusion of rapidly exploring random trees (RRT) and deep reinforcement learning (DRL) algorithms applied to the generation and control of the UAV autonomous trajectory during an olive-growing fly traps inspection task. The main objective of this proposal is to provide a reliable route for the UAV to reach the inspection points in the tree space to capture an image of the trap autonomously, avoiding possible obstacles present in the environment. The proposed framework was tested in a simulated environment using Gazebo and ROS. The results showed that the proposed solution accomplished the trial for environments up to 300 m3 and with 10 dynamic objects.

Topics & Concepts

Motion planningReinforcement learningComputer sciencePath (computing)TrajectoryTree (set theory)Random treeReal-time computingCollision avoidanceRobotArtificial intelligenceSimulationCollisionMathematicsProgramming languagePhysicsComputer securityMathematical analysisAstronomySmart Agriculture and AIRobotic Path Planning AlgorithmsWildlife-Road Interactions and Conservation