Litcius/Paper detail

A Novel Cascade Path Planning Algorithm for Autonomous Truck-Trailer Parking

Ahmet Canberk Manav, İsmail Lazoğlu

2021IEEE Transactions on Intelligent Transportation Systems47 citationsDOI

Abstract

One of the most challenging tasks for truck drivers is maneuvering the truck-trailer system in different parking scenarios. This article presents a novel path planning approach for truck-trailer parking, where a realistic and deterministic parking behavior model, Iterative Analytical Method (IAM), is proposed and combined with Closed-Loop Rapidly Exploring Random Tree (CL-RRT) approach in a cascade path planning. Cascade path planning approach combining CL-RRT with the iterative analytical method (IAM) mimicking real-world parking practice enables the generation of both kinematically feasible and deterministic parking maneuvers with obstacle avoidance. For evaluation, different parking scenarios are generated and selected through a developed case generation tool. The performance of the proposed path planning approach is evaluated through MATLAB simulations. The results achieved a noticeable success with a high rate of generated feasible maneuvers for parking.

Topics & Concepts

Motion planningTruckPath (computing)TrailerCascadeParking guidance and informationGuidance systemRandom treeObstacleEngineeringMATLABObstacle avoidanceComputer scienceTransport engineeringAutomotive engineeringArtificial intelligenceMobile robotAerospace engineeringRobotChemical engineeringLawOperating systemProgramming languagePolitical scienceRobotic Path Planning AlgorithmsControl and Dynamics of Mobile RobotsSmart Parking Systems Research