Litcius/Paper detail

Lateral Trajectory Tracking of Self-Driving Vehicles Based on Sliding Mode and Fractional-Order Proportional-Integral-Derivative Control

Xiqing Zhang, Jin Li, Zhiguang Ma, Dianmin Chen, Xiaoxu Zhou

2023Actuators11 citationsDOIOpen Access PDF

Abstract

The tracking accuracy and vehicle stability of self-driving trajectory tracking are particularly important. Due to the influence of high-frequency oscillation near the sliding mode surface and the modeling error of the single-point preview model itself when using sliding mode control (SMC) for the trajectory tracking lateral control of self-driving vehicles, the desired tracking effect of self-driving vehicles cannot be achieved. To address this problem, a combination of sliding mode control and fractional-order proportional-integral-derivative control (FOPID) is proposed for the application of a trajectory tracking lateral controller. In addition, in order to compare with the trajectory tracking controller built using the single-point preview model, 12 real drivers with different levels of proficiency were selected for operational data collection and comparison. The simulation results and hardware-in-the-loop results show that the designed SMC + FOPID controller has high tracking accuracy based on vehicle stability. The trajectory accuracy based on SMC + FOPID outperforms the real driver data, SMC controller, PID controller, and model prediction controller.

Topics & Concepts

Control theory (sociology)TrajectoryPID controllerController (irrigation)Tracking (education)Sliding mode controlStability (learning theory)Tracking errorComputer scienceMode (computer interface)EngineeringControl engineeringControl (management)Artificial intelligenceNonlinear systemPhysicsTemperature controlPedagogyAstronomyOperating systemAgronomyPsychologyMachine learningQuantum mechanicsBiologyVehicle Dynamics and Control SystemsTraffic control and managementAutonomous Vehicle Technology and Safety