4.7 Article

New finite-time passivity criteria for delayed fractional-order neural networks based on Lyapunov function approach

Journal

CHAOS SOLITONS & FRACTALS
Volume 158, Issue -, Pages -

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.chaos.2022.112005

Keywords

Fractional-order neural networks; Finite-time passivity; Finite-time stability; Lyapunov stability theory; Linear matrix inequality

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This paper addresses the finite-time passivity analysis for fractional-order neural networks with constant time delay, introducing new concepts and proposing sufficient conditions for ensuring the passivity performances of the system. The stability conditions and formula for determining the stability setting time are also presented.
This paper deals with the problem of finite-time passivity analysis for a class of fractional-order neural networks with constant time delay. Firstly, based on the existing passivity definition, some new concepts namely, finitetime passivity, finite-time input strict passivity, finite-time output strict passivity, and finite-time strict passivity are introduced in terms of Lyapunov function for fractional-order neural networks. In this paper, for the first time, by defining an appropriate controller and by exploiting the introduced definitions, some novel delay-dependent and order-dependent sufficient conditions ensuring the passivity performances are obtained for the addressed system. In addition, the finite-time stability conditions are also presented with an explicit formula for determining the value of setting time for stability. Finally, one numerical example is given to verify the effectiveness of the obtained theoretical results and the simulation results are provided for better understanding of the proposed problem.

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