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Receding-Horizon Trajectory Planning for Under-Actuated Autonomous Vehicles Based on Collaborative Neurodynamic Optimization

Jiasen Wang, Jun Wang, Qing‐Long Han

2022IEEE/CAA Journal of Automatica Sinica23 citationsDOI

Abstract

This paper addresses a major issue in planning the trajectories of under-actuated autonomous vehicles based on neurodynamic optimization. A receding-horizon vehicle trajectory planning task is formulated as a sequential global optimization problem with weighted quadratic navigation functions and obstacle avoidance constraints based on given vehicle goal configurations. The feasibility of the formulated optimization problem is guaranteed under derived conditions. The optimization problem is sequentially solved via collaborative neurodynamic optimization in a neurodynamics-driven trajectory planning method/procedure. Simulation results with under-actuated unmanned wheeled vehicles and autonomous surface vehicles are elaborated to substantiate the efficacy of the neurodynamics-driven trajectory planning method.

Topics & Concepts

Obstacle avoidanceTrajectoryTrajectory optimizationMotion planningComputer scienceOptimization problemHorizonMathematical optimizationObstacleTask (project management)Control theory (sociology)Control engineeringEngineeringArtificial intelligenceRobotOptimal controlMobile robotMathematicsControl (management)GeographyGeometryPhysicsArchaeologyAstronomySystems engineeringRobotic Path Planning AlgorithmsControl and Dynamics of Mobile RobotsGuidance and Control Systems