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Distributed Event-Triggered Iterative Learning Control for Multiple High-Speed Trains With Switching Topologies: A Data-Driven Approach

Wei Yu, Deqing Huang, Qingyuan Wang, Liangcheng Cai

2023IEEE Transactions on Intelligent Transportation Systems53 citationsDOI

Abstract

This paper studies the distributed data-driven event-triggered model free adaptive iterative learning control (ETMFAILC) of multiple high-speed trains (MHSTs) under iteration-varying topologies, which breaks away from the dependence on the train dynamics. Firstly, the nonlinear MHSTs with unknown dynamics are converted into a linear model. Then, combining the proposed event-based triggering condition and the linear model, the ETMFAILC scheme under the fixed topology is designed. Next, theoretical analysis proves the bounded input bounded output (BIBO) stability of MHSTs. Finally, the study is extended to the switching topologies and the validity of the ETMFAILC is verified by a numerical example.

Topics & Concepts

Network topologyControl theory (sociology)BIBO stabilityBounded functionComputer scienceIterative learning controlTopology (electrical circuits)TrainStability (learning theory)Nonlinear systemMathematicsControl (management)Artificial intelligenceMachine learningMathematical analysisQuantum mechanicsGeographyPhysicsOperating systemCartographyCombinatoricsRailway Systems and Energy EfficiencyIterative Learning Control SystemsRailway Engineering and Dynamics
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