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Matrix Measure-Based Event-Triggered Impulsive Quasi-Synchronization on Coupled Neural Networks

Chenhui Jiang, Ze Tang, Ju H. Park, Jianwen Feng

2022IEEE Transactions on Neural Networks and Learning Systems29 citationsDOI

Abstract

In this article, the quasi-synchronization for a kind of coupled neural networks with time-varying delays is investigated via a novel event-triggered impulsive control approach. In view of the randomly occurring uncertainties (ROUs) in the communication channels, the global quasi-synchronization for the coupled neural networks within a given error bound is considered instead of discussing the complete synchronization. A kind of distributed event-triggered impulsive controllers is presented with considering the Bernoulli stochastic variables based on ROUs, which works at each event-triggered impulsive instant. According to the matrix measure method and the Lyapunov stability theorem, several sufficient conditions for the realization of the quasi-synchronization are successfully derived. Combining with the mathematical methodology with the formula of variation of parameters and the comparison principle for the impulsive systems with time-varying delays, the convergence rate and the synchronization error bound are precisely estimated. Meanwhile, the Zeno behaviors could be eliminated in the coupled neural network with the proposed event-triggered function. Finally, a numerical example is presented to prove the results of theoretical analysis.

Topics & Concepts

Synchronization (alternating current)Control theory (sociology)Measure (data warehouse)Computer scienceArtificial neural networkBernoulli's principleLyapunov stabilityMatrix (chemical analysis)Upper and lower boundsStability (learning theory)PiecewiseLyapunov functionMathematicsTopology (electrical circuits)Control (management)Artificial intelligenceMathematical analysisEngineeringMaterials scienceMachine learningDatabaseCombinatoricsNonlinear systemPhysicsQuantum mechanicsComposite materialAerospace engineeringNeural Networks Stability and Synchronizationstochastic dynamics and bifurcationNonlinear Dynamics and Pattern Formation
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