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Bounded real lemmas for inertial neural networks with unbounded mixed delays and state-dependent switching

机译:Bounded real lemmas for inertial neural networks with unbounded mixed delays and state-dependent switching

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摘要

This paper mainly studies the bounded real lemma for inertial neural networks with unbounded time-varying transmission delays, unbounded distribution delays and state-dependent switching. Bounded real lemmas of inertial neural networks under consid-eration are presented by proposing a parameterizing approach based on the system solutions. The advantage of this approach is that it neither decomposes the model into two first-order differential equations nor constructs any Lyapunov-Krasovskii functional, thus reducing computational effort and complexity. Furthermore, the obtained sufficient condition contains only a few simple linear scalar inequalities, which can be easily solved by using MATLAB. Finally, a numerical example and its numerical simulation are used to demonstrate the validity of the theoretical results.(c) 2022 Elsevier B.V. All rights reserved.

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