Title :
Linearized Recursive Least Squares Methods for Real-Time Identification of Tire–Road Friction Coefficient
Author :
Mooryong Choi ; Oh, Jiwon J. ; Choi, Se Bin
Author_Institution :
Dept. of Mech. Eng., Korea Adv. Inst. of Sci. & Technol., Daejeon, South Korea
Abstract :
The tire-road friction coefficient is critical information for conventional vehicle safety control systems. Most previous studies on tire-road friction estimation have only considered either longitudinal or lateral vehicle dynamics, which tends to cause significant underestimation of the actual tire-road friction coefficient. In this paper, the parameters, including the tire-road friction coefficient, of the combined longitudinal and lateral brushed tire model are identified by linearized recursive least squares (LRLS) methods, which efficiently utilize measurements related to both vehicle lateral and longitudinal dynamics in real time. The simulation study indicates that by using the estimated vehicle states and the tire forces of the four wheels, the suggested algorithm not only quickly identifies the tire-road friction coefficient with great accuracy and robustness before tires reach their frictional limits but successfully estimates the two different tire-road friction coefficients of the two sides of a vehicle on a split- μ surface as well. The developed algorithm was verified through vehicle dynamics software Carsim and MATLAB/Simulink.
Keywords :
friction; least mean squares methods; parameter estimation; road safety; road vehicles; tyres; vehicle dynamics; Carsim vehicle dynamics software; LRLS methods; Matlab-Simulink; combined longitudinal brushed tire model; estimated vehicle states; lateral brushed tire model; lateral vehicle dynamics; linearized recursive least squares methods; longitudinal vehicle dynamics; real-time identification; split- μ surface; tire-road friction coefficient; tire-road friction estimation; vehicle safety control systems; Force; Friction; Kalman filters; Tires; Vehicle dynamics; Vehicles; Wheels; Nonlinear parameter identification; recursive least squares (RLS); tire–road friction estimation; vehicle dynamics;
Journal_Title :
Vehicular Technology, IEEE Transactions on
DOI :
10.1109/TVT.2013.2260190