Synchronization of cohen-grossberg fuzzy cellular neural networks with time-varying delays

Document Type

Article

Publication Date

2-1-2021

Abstract

In this paper, a class of Cohen-Grossberg fuzzy cellular neural networks (CGFCNNs) with time-varying delays are considered. Initially, the sufficient conditions are proposed to ascertain the existence and uniqueness of the solutions for the considered dynamical system via homeomorphism mapping principle. Then synchronization of the considered delayed neural networks is analyzed by utilizing the drive-response (master-slave) concept, in terms of a linear matrix inequality (LMI), the Lyapunov-Krasovskii (LK) functional, and also using some free weighting matrices. Next, this result is extended so as to establish the robust synchronization of a class of delayed CGFCNNs with polytopic uncertainty. Sufficient conditions are proposed to ascertain that the considered delayed networks are robustly synchronized by using a parameter-dependent LK functional and LMI technique. The restriction on the bounds of derivative of the time delays to be less than one is relaxed. In particular, the concept of fuzzy theory is greatly extended to study the synchronization with polytopic uncertainty which differs from previous efforts in the literature. Finally, numerical examples and simulations are provided to illustrate the effectiveness of the obtained theoretical results.

Keywords

Cohen-Grossberg fuzzy cellular neural networks, Linear matrix inequalities, Polytopic uncertainty, Synchronization, Time-varying delays

Divisions

MathematicalSciences

Funders

University of Malaya, Frontier Research Grant 2017 [FG037-17AFR],Fundamental Research Grant Scheme (FRGS) from Ministry of Higher Education Malaysia [FP051-2016]

Publication Title

International Journal of Nonlinear Sciences and Numerical Simulation

Volume

22

Issue

1

Publisher

Walter de Gruyter GMBH

Publisher Location

GENTHINER STRASSE 13, D-10785 BERLIN, GERMANY

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