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Driving and steering collision avoidance system of autonomous vehicle with model predictive control based on non-convex optimization

Yuho Song, Kunsoo Huh

2021Advances in Mechanical Engineering19 citationsDOIOpen Access PDF

Abstract

A planar motion control system is proposed for autonomous vehicles not only to follow the lanes, but also to avoid collisions by braking, accelerating, and steering. The supervisor is designed first to determine the desired speed and the risk of the maneuvering due to road boundaries and obstacles. In order to allow lane changes on multi-lane roads, the model predictive controller is formulated based on the probabilistic non-convex optimization. The micro-genetic algorithm is applied to calculate the target speed and target steering angle in real time. A software-in-the-loop unit is constructed with the Rapid Control Prototyping device in the vehicle communication environment. The performance of the proposed system is verified for various collision avoidance scenarios and the simulation results demonstrate the safe and effective driving performance of autonomous vehicles with no collision on multi-lane road.

Topics & Concepts

Collision avoidanceModel predictive controlControl theory (sociology)Collision avoidance systemCollisionController (irrigation)SupervisorGenetic algorithmProbabilistic logicTrajectoryComputer scienceConvex optimizationSoftwareSimulationEngineeringControl engineeringControl (management)Regular polygonArtificial intelligenceMathematicsBiologyAgronomyLawGeometryComputer securityPolitical scienceMachine learningProgramming languageAstronomyPhysicsAutonomous Vehicle Technology and SafetyRobotic Path Planning AlgorithmsVehicle Dynamics and Control Systems
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