IEEE transactions on neural networks and learning systems | 2021

Finite-Time Stability of Nonlinear Impulsive Systems With Applications to Neural Networks.

 
 

Abstract


This article studies the problem of finite-time stability (FTS) and finite-time contractive stability (FTCS) for nonlinear impulsive systems, where the possibility of time delay in impulses is fully considered. Some sufficient conditions for FTS/FTCS are constructed in the framework of Lyapunov function methods. A relationship between impulsive frequency and the time delay existing in impulses is established to reveal FTS/FTCS performance. As an application, we apply the theoretical results to finite-time state estimation of neural networks, including time-varying neural networks and switched neural networks. Finally, two illustrated examples are given to show the effectiveness and distinctiveness of the proposed delay-dependent impulsive schemes.

Volume PP
Pages None
DOI 10.1109/TNNLS.2021.3093418
Language English
Journal IEEE transactions on neural networks and learning systems

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