Publication | Open Access
Spatial Model Predictive Control for Smooth and Accurate Steering of an Autonomous Truck
71
Citations
48
References
2017
Year
EngineeringVehicle ControlVehicle DynamicAutonomous SystemsDriving SmoothnessLateral ControlAccurate SteeringTrajectory PlanningSystems EngineeringModel Predictive ControlStandard MpcRobot LearningKinematicsMechatronicsAutonomous DrivingVehicle Dynamics (Mechanical Engineering)Autonomous TruckAerospace EngineeringAutomationPlanningRoboticsTrajectory Optimization
In this paper, we present an algorithm for lateral control of a vehicle—a smooth and accurate model predictive controller (MPC). The fundamental difference compared to a standard MPC is that the driving smoothness is directly addressed in the cost function. The controller objective is based on the minimization of the first- and second-order spatial derivatives of the curvature. By doing so, jerky commands to the steering wheel, which could lead to permanent damage on the steering components and vehicle structure, are avoided. A good path tracking accuracy is ensured by adding constraints to avoid deviations from the reference path. Finally, the controller is experimentally tested and evaluated on a Scania construction truck. The evaluation is performed at Scania's facilities near Södertälje, Sweden via two different paths: a precision track that resembles a mining scenario and a high-speed test track that resembles a highway situation. Even using a linearized kinematic vehicle to predict the vehicle motion, the performance of the proposed controller is encouraging, since the deviation from the path never exceeds 30 cm. It clearly outperforms an industrial pure-pursuit controller in terms of path accuracy and a standard MPC in terms of driving smoothness.
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