Litcius/Paper detail

Trajectory Tracking Control of Intelligent Driving Vehicles Based on MPC and Fuzzy PID

Can Yang, Jie Liu

2023Mathematical Problems in Engineering26 citationsDOIOpen Access PDF

Abstract

To improve the stability and accuracy of quintic polynomial trajectory tracking, an MPC (model predictive control) and fuzzy PID (proportional‐integral‐difference)‐ based control method are proposed. A lateral tracking controller is designed by using MPC with rule‐based horizon parameters. The lateral tracking controller controls the steering angle to reduce the lateral tracking errors. A longitudinal tracking controller is designed by using a fuzzy PID. The longitudinal controller controls the motor torque and brake pressure referring to a throttle/brake calibration table to reduce the longitudinal tracking errors. By combining the two controllers, we achieve satisfactory trajectory tracking control. Relative vehicle trajectory tracking simulation is carried out under common scenarios of quintic polynomial trajectory in the Simulink/Carsim platform. The result shows that the strategy can avoid excessive trajectory tracking errors which ensures a better performance for trajectory tracking with high safety, stability, and adaptability.

Topics & Concepts

Control theory (sociology)TrajectoryPID controllerTracking (education)Controller (irrigation)Model predictive controlTracking errorStability (learning theory)Computer scienceCarSimEngineeringControl engineeringVehicle dynamicsControl (management)Artificial intelligenceAutomotive engineeringAgronomyPhysicsPsychologyTemperature controlMachine learningAstronomyPedagogyBiologyRobotic Path Planning AlgorithmsVehicle Dynamics and Control SystemsAutonomous Vehicle Technology and Safety