Data-driven predictive ILC for nonlinear nonaffine systems
Wenzhi Cui,
Puzhao Li and
Ronghu Chi
International Journal of Systems Science, 2024, vol. 55, issue 9, 1868-1881
Abstract:
This paper proposes a data-driven predictive iterative learning control (DDPILC) for nonlinear nonaffine systems. First, we develop an iterative predictive model (IPM) where an iterative dynamic linearisation technique is introduced for addressing the strong nonlinearities and nonaffine structure. Then, an auto-regressive model is employed to estimate the unavailable parameter of IPM along with the iteration direction. Next, the outputs in the future iterations are predicted pointwisely over the finite operation interval that are further incorporated into the optimal objective function to obtain the optimal control input sequence. In addition, a constrained-DDPILC is extended for systems with I/O constraints which are reformulated as a linear matrix inequality (LMI). The two proposed methods do not have model requirement except for I/O data. Simulation study verifies the results.
Date: 2024
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Persistent link: https://EconPapers.repec.org/RePEc:taf:tsysxx:v:55:y:2024:i:9:p:1868-1881
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DOI: 10.1080/00207721.2024.2322088
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