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JOURNALS // Vestnik Yuzhno-Ural'skogo Universiteta. Seriya Matematicheskoe Modelirovanie i Programmirovanie // Archive

Vestnik YuUrGU. Ser. Mat. Model. Progr., 2021 Volume 14, Issue 4, Pages 63–73 (Mi vyuru618)

This article is cited in 1 paper

Programming & Computer Software

Iterative learning control on nonlinear stochastic networked systems with non-differentiable dynamics

Sedigheh Alsadat Najafi, Ali Delavarkhalafi, Seyed Mehdi Karbassi

Yazd University, Yazd, Iran

Abstract: In the design of iterative learning control (ILC) algorithm for stochastic nonlinear networked systems, the underlying assumption is differentiability of the system dynamics. In many cases, in reality, stochastic nonlinear networked systems have non-differentiable dynamics, but their dynamics functions after discretization by using conventional methods have global Lipschits' continuous (GLC) condition. In this paper, we apply an ILC algorithm for stochastic nonlinear networked systems that have the GLC condition. We demonstrate that to design the ILC algorithm, differentiability of the system dynamics is not necessary, and the GLC condition is sufficient for designing the ILC algorithm for stochastic nonlinear networked systems with non-differentiable dynamics. We investigate the analysis of convergence and the tracking performance of the proposed update law for stochastic nonlinear networked systems with GLC condition. We show that there exists no limited condition for the stochastic data dropout probabilities in the convergence investigation of the input error. Then, the results are reviewed and confirmed with a numerical example.

Keywords: iterative learning control, stochastic nonlinear networked system, non-differentiable, global Lipschits continuous (GLC), data dropout.

UDC: 517.977.5

MSC: 93Exx

Received: 22.02.2021

Language: English

DOI: 10.14529/mmp210405



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