Title :
Neural network based estimation of friction coefficient of wheel and rail
Author :
GajdÁr, Tibor ; Rudas, Imre ; Suda, Yoshihiro
Author_Institution :
Inst. of Ind. Sci., Tokyo Univ., Japan
Abstract :
The number of modern control theory applications in vehicle dynamics are emerging and have led to great progress in vehicle stability, handling and ride comfort. However, some of the parameters needed for control applications are difficult to measure online. Such examples are the wheel/rail contact forces, attack angles of wheelsets and the friction coefficient μ between wheel and rail of railway vehicles. Other areas where the adequate knowledge of adhesion is vital are the electric drive and adhesion control systems of locomotive drive systems, since as the result of changing friction coefficient wheel spinning, slipping can occur, which can cause faulty operation and overloading of traction units. In order to cope with this problem, this paper presents different methods to estimate the friction coefficient μ, based on neural network estimation and a computational method
Keywords :
mechanical engineering computing; neural nets; parameter estimation; railways; rolling friction; adhesion control systems; electric drive; friction coefficient; locomotive drive systems; neural network based estimation; railway vehicles; traction unit overloading; vehicle dynamics; vehicle handling; vehicle ride comfort; vehicle stability; wheel slipping; wheel spinning; wheel/rail contact forces; wheelset attack angles; Adhesives; Control systems; Control theory; Friction; Neural networks; Rail transportation; Spinning; Stability; Vehicle dynamics; Wheels;
Conference_Titel :
Intelligent Engineering Systems, 1997. INES '97. Proceedings., 1997 IEEE International Conference on
Conference_Location :
Budapest
Print_ISBN :
0-7803-3627-5
DOI :
10.1109/INES.1997.632437