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Iterative learning control for high‐speed trains with velocity and displacement constraints

Deqing Huang, Tengfei Huang, Chunrong Chen, Na Qin, Xu Jin, Qingyuan Wang, Yong Chen

2022International Journal of Robust and Nonlinear Control21 citationsDOI

Abstract

Abstract In this article, a novel iterative learning control (ILC) scheme is presented for the operation control of high‐speed train (HST), where the velocity and displacement of HST are strictly limited to ensure safety and comfort. The model of HST constructed in the article is practical in the sense that both parametric and nonparametric uncertainties of system are addressed simultaneously. Backstepping design with the newly proposed barrier Lyapunov function is incorporated in analysis to ensure the uniform convergence of the state tracking error and that the constraint requirements on velocity and displacement would not be violated during the whole operation process. In the end, a simulation study is presented to demonstrate the efficacy of the proposed ILC law.

Topics & Concepts

BacksteppingIterative learning controlControl theory (sociology)TrainLyapunov functionDisplacement (psychology)Convergence (economics)Parametric statisticsConstraint (computer-aided design)Computer scienceProcess (computing)Tracking errorIterative and incremental developmentFunction (biology)Lyapunov redesignControl (management)Control engineeringAdaptive controlEngineeringMathematicsNonlinear systemArtificial intelligencePhysicsEvolutionary biologyMechanical engineeringBiologyGeographyPsychotherapistSoftware engineeringStatisticsEconomic growthQuantum mechanicsPsychologyOperating systemCartographyEconomicsRailway Systems and Energy EfficiencyRailway Engineering and DynamicsIterative Learning Control Systems
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