An integrated tube robust iterative learning model predictive control strategy based on dynamic partial least squares algorithm for batch processes

In this paper, an integrated tube robust iterative learning model predictive control (Tube‐RILMPC) strategy based on the dynamic partial least squares (DyPLS) identified algorithm is proposed. The problems of large amount of online data calculation and input and output variable dimensions disaster i...

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Veröffentlicht in:Canadian journal of chemical engineering 2024-09, Vol.102 (9), p.3213-3235
Hauptverfasser: Zhou, Liuming, Zheng, Chuangkai, Li, Feng
Format: Artikel
Sprache:eng
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Zusammenfassung:In this paper, an integrated tube robust iterative learning model predictive control (Tube‐RILMPC) strategy based on the dynamic partial least squares (DyPLS) identified algorithm is proposed. The problems of large amount of online data calculation and input and output variable dimensions disaster in the original variable space are solved. This integrated Tube‐RILMPC strategy enhances the tracking performance and robustness of two‐dimensional (2D) control system. The output trajectories of system are located in the tube the nominal trajectory, which reduces the modelling error caused by the uncertain model. Based on the worst‐case performance index of ellipsoidal uncertainty and polytopic uncertainty, a robust iterative learning control (ILC) strategy is designed. Finally, the superiority of the proposed control algorithm is verified by comparative simulation.
ISSN:0008-4034
1939-019X
DOI:10.1002/cjce.25261