Publication | Closed Access
Model Predictive Path Planning Based on Artificial Potential Field and Its Application to Autonomous Lane Change
15
Citations
20
References
2020
Year
Unknown Venue
Path PlanningArtificial Potential FieldTrajectory PlanningAutonomous Lane ChangeEngineeringRoute PlanningVehicle ControlAutomationSystems EngineeringLateral Vehicle DynamicsAutonomous DrivingRoad Traffic ControlRoboticsLane Change ActionTransportation Engineering
In this paper, we propose a vehicle lane change system using model predictive path planning (MPPP) based on the artificial potential field (APF) for speeding vehicles. It is shown that APF has high performance in real-time obstacle avoidance. However, it remains unpractical for self-driving cars because the point model used for the APF ignores the lateral vehicle dynamics for the lane-keeping system. To resolve the problem, this paper introduces a novel curve-fitting method combined with the APF applied to plan a drivable path for autonomous vehicles in the lane change action. The proposed system was validated through MATLAB/Simulink with the empirical kinematic model. The simulation results indicate that the model predictive path planning algorithm is highly effective in high-speed lane change scenarios to avoid dynamic obstacle vehicles.
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