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Cyl-IRRT*: Homotopy Optimal 3D Path Planning for AUVs by Biasing the Sampling Into a Cylindrical Informed Subset

Fujie Yu, Yuan Chen

2022IEEE Transactions on Industrial Electronics34 citationsDOI

Abstract

In a complex 3-D environment, efficiently and safely reaching the target position is of great significance for autonomous underwater vehicles. This article proposes a cylinder-based informed rapid exploration random tree (Cyl-iRRT*) algorithm, which seeks to find the homotopy optimal path by focusing the search space on the designed gradually shrinking cylinder. The proportional shrinkage method and obstacle-based sampling strategy are presented to yield a fast convergence response and robust stability. Furthermore, the probabilistic completeness and homotopic optimality of Cyl-iRRT* are proven to be effective. Finally, both simulation and real-world experimental results reveal the superiorities of the Cyl-iRRT* algorithm.

Topics & Concepts

Motion planningHomotopyPath (computing)Convergence (economics)Mathematical optimizationMathematicsPosition (finance)Stability (learning theory)Sampling (signal processing)Completeness (order theory)Control theory (sociology)BiasingProbabilistic logicObstacleComputer scienceEngineeringRobotVoltageArtificial intelligenceDetectorMachine learningMathematical analysisTelecommunicationsLawProgramming languageControl (management)Electrical engineeringEconomic growthPolitical scienceEconomicsPure mathematicsFinanceRobotic Path Planning AlgorithmsRobotics and Sensor-Based LocalizationUnderwater Vehicles and Communication Systems
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