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Optimization-Based Maneuver Planning for a Tractor-Trailer Vehicle in a Curvy Tunnel: A Weak Reliance on Sampling and Search

Bai Li, Li Li, Tankut Acarman, Zhijiang Shao, Ming Yue

2021IEEE Robotics and Automation Letters38 citationsDOIOpen Access PDF

Abstract

This study is focused on the maneuver planning problem for a tractor-trailer vehicle in a curvy and tiny tunnel. Due to the curse of dimensionality, the prevalent sampling-and- search-based planners used to handle a rigid-body vehicle well become less efficient when the trailer number grows or when the tunnel narrows. This fact also has impacts on an optimization-based planner if it counts on a sampling-and-search-based initial guess to warm-start. We propose an optimization-based maneuver planner that weakly relies on the sampling and search, hoping to get rid of the curse of dimensionality and thus find optima rapidly. The proposed planner comprises three stages: stage 1 identifies the homotopy class via A* search in a 2D grid map; stage 2 recovers the kinematic feasibility with softened intermediate problems iteratively solved; stage 3 finds an optimum that strictly satisfies the nominal collision-avoidance constraints. Optimization-based planners are commonly known to run slowly, but this work shows that they have obvious advantages over the prevalent sampling-and-search-based planners when the solution space dimension is high and/or the constraints are harsh.

Topics & Concepts

Curse of dimensionalitySampling (signal processing)KinematicsMathematical optimizationPlannerComputer scienceDimension (graph theory)TractorLocal optimumEngineeringMathematicsArtificial intelligenceAutomotive engineeringDetectorPhysicsTelecommunicationsClassical mechanicsPure mathematicsRobotic Path Planning AlgorithmsGuidance and Control SystemsControl and Dynamics of Mobile Robots
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