Adaptive Iterative Learning Control for Subway Trains Using Multiple-Point-Mass Dynamic Model Under Speed Constraint
Genfeng Liu, Zhongsheng Hou
Abstract
In this paper, a new adaptive iterative learning control method (AILC) is presented for speed and position tracking of a subway train using multiple-point-mass dynamic model. A composite energy function technique is utilized to obtain the asymptotic convergence of tracking error in the iteration axis for the proposed controller for subway trains. Then a speed constraint adaptive iterative learning control algorithm (CAILC) is designed to avoid over speed, derailment and collision of the subway train for the subway train over-speed protection. Finally, two simulation examples are given for the subway train system to show the effectiveness of theoretical studies.
Topics & Concepts
TrainIterative learning controlControl theory (sociology)Constraint (computer-aided design)Convergence (economics)Computer scienceController (irrigation)Adaptive controlCollisionDerailmentTrack (disk drive)EngineeringControl (management)Artificial intelligenceOperating systemGeographyEconomic growthComputer securityCartographyBiologyEconomicsMechanical engineeringAgronomyRailway Systems and Energy EfficiencyRailway Engineering and DynamicsIterative Learning Control Systems