Abstract

This article addresses the fault-tolerant control problem for high-speed trains (HSTs) with actuator faults under strong winds. For the healthy system, a non-singular fast terminal sliding mode surface is introduced into the controller, which ensures the system fast converge to the equilibrium point with finite time, and the radial basis function neural network (RBFNN) with the adaptive compensation term of the error is used to approximate the unknown nonlinear disturbances of the train system in strong winds and predict the time delay generated in the train communication network. Through the RBFNN observer established specifically for actuator failures, the real effective factors are identified. Combining with the identified effective factors and predicted time delay, an adaptive fault-tolerant sliding mode control method is established for train systems. With dynamic parameters and position update strategy guided by negative gradient thought, an improved particle swarm optimization algorithm is proposed to optimize the uncertain parameters of control method, which weakens the chattering phenomenon from the sliding mode controller and improves the control accuracy. Simulation results show that the proposed method has better tracking performance and real-time performance compared with other fault-tolerant control methods under various operating conditions, which ensures the running safety of HSTs under different strong winds.

Highlights

  • With the rapid development of high-speed trains (HSTs), the reliable operation of trains is closely related to the personal safety of passengers

  • An adaptive fault-tolerant sliding mode control method with finite convergence is proposed for HSTs with actuator faults in strong winds

  • The radial basis function neural network (RBFNN) observer with the adaptive error compensation is established for identifying the real actuator effective factors, and the RBFNN is used to approximate the nonlinear disturbances of the system and predict the network time delay generated in train communication network (TCN)

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Summary

INTRODUCTION

With the rapid development of high-speed trains (HSTs), the reliable operation of trains is closely related to the personal safety of passengers. When considering the disturbances of actuator faults and strong winds on train operation safety, the above fault-tolerant control schemes ignore the effect of network delay on control signal transmission. There is crucial practical significance to design a fault-tolerant control method considering the strong winds conditions and network transfer delay comprehensively for the safe operation of HSTs. Sliding mode control (SMC) has been widely applied to complex nonlinear systems due to its robustness to parameter variations and external disturbances [17]–[19]. An adaptive fault-tolerant sliding mode control method with neural network observer is proposed for HSTs with actuator faults under strong wind conditions.

DYNAMIC MODEL OF HSTS WITH ACTUATOR FAULTS UNDER STRONG WIND CONDITIONS
DYNAMIC MODEL OF HSTS
AIR RESISTANCE ANALYSIS OF HSTS IN STRONG WIND ENVIRONMENT
SYSTEM STATE RECOGNIZER DESIGN BASED ON RBFNN
SIMULATION AND ANALYSIS
EFFECT ANALYSIS OF FAULT-TOLERANT CONTROL
DISCUSSION
CONCLUSION
Full Text
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