Title :
Data-Based Fault-Tolerant Control of High-Speed Trains With Traction/Braking Notch Nonlinearities and Actuator Failures
Author :
Song, Qi ; Song, Yong-duan
Author_Institution :
State Key Lab. of Rail Traffic Control & Safety, Beijng Jiaotong Univ., Beijing, China
Abstract :
This paper investigates the position and velocity tracking control problem of high-speed trains with multiple vehicles connected through couplers. A dynamic model reflecting nonlinear and elastic impacts between adjacent vehicles as well as traction/braking nonlinearities and actuation faults is derived. Neuroadaptive fault-tolerant control algorithms are developed to account for various factors such as input nonlinearities, actuator failures, and uncertain impacts of in-train forces in the system simultaneously. The resultant control scheme is essentially independent of system model and is primarily data-driven because with the appropriate input-output data, the proposed control algorithms are capable of automatically generating the intermediate control parameters, neuro-weights, and the compensation signals, literally producing the traction/braking force based upon input and response data only- the whole process does not require precise information on system model or system parameter, nor human intervention. The effectiveness of the proposed approach is also confirmed through numerical simulations.
Keywords :
actuators; adaptive control; braking; control nonlinearities; elasticity; failure analysis; fault tolerance; impact (mechanical); neurocontrollers; numerical analysis; position control; railway engineering; traction; velocity control; actuation faults; actuator failures; automatically intermediate control parameter generation; compensation signal; data-based fault tolerant control; dynamic model; elastic impacts; high-speed trains; in-train force impact; neuroadaptive fault tolerant control algorithm; neuroweights generation; nonlinear impacts; numerical simulation; position tracking control problem; traction-braking notch nonlinearities; velocity tracking control problem; Artificial neural networks; Control design; Fault tolerant systems; Rail transportation; Velocity measurement; Data-based; fault-tolerant; input nonlinearities; neuroadaptive control; Artificial Intelligence; Data Mining; Databases, Factual; Equipment Failure Analysis; Feedback; Nonlinear Dynamics; Transducers; Transportation;
Journal_Title :
Neural Networks, IEEE Transactions on
DOI :
10.1109/TNN.2011.2175451