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Practical Fixed-Time Bipartite Synchronization of Uncertain Coupled Neural Networks Subject to Deception Attacks via Dual-Channel Event-Triggered Control

Xiangyong Chen, Tianyuan Jia, Zhanshan Wang, Xiangpeng Xie, Jianlong Qiu

2023IEEE Transactions on Cybernetics78 citationsDOI

Abstract

This article investigates the practical fixed-time synchronization of uncertain coupled neural networks via dual-channel event-triggered control. Contrary to some previous studies, the bipartite synchronization of signed graphs representing cooperative and antagonistic interactions is studied. The communication channel is introduced into deception attacks, which are described by Bernoulli's stochastic variables. Based on the concept of two channels, event-triggered mechanisms are designed for sensor-to-controller and controller-to-actuator channels to reduce communication consumption and controller update consumption as much as possible. Lyapunov and comparison theories are used to derive synchronization criteria and explicit expression of settling time. An example of Chua's circuit system is presented to demonstrate the feasibility of the obtained theoretical results.

Topics & Concepts

DeceptionDual (grammatical number)Computer scienceSynchronization (alternating current)Control (management)Subject (documents)Event (particle physics)Time synchronizationChannel (broadcasting)Bipartite graphComputer securityComputer networkPsychologyArtificial intelligenceTheoretical computer scienceSocial psychologyPhilosophyPhysicsLibrary scienceQuantum mechanicsLinguisticsGraphAdvanced Memory and Neural ComputingSmart Grid Security and ResilienceNetwork Security and Intrusion Detection
Practical Fixed-Time Bipartite Synchronization of Uncertain Coupled Neural Networks Subject to Deception Attacks via Dual-Channel Event-Triggered Control | Litcius