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Adaptive event-triggered pinning synchronization control for complex networks with random saturation subject to hybrid cyber-attacks. (English) Zbl 07844281

Summary: This research is concerned with the problem of pinning based output synchronization control for a complex networks with random saturation vulnerable to hybrid cyber-attacks via an adaptive event-triggered scheme (AETS). The output synchronization error systems are subject to suffer from deception attacks, replay attacks, and denial-of-service attacks. A novel hybrid cyber-attack model is first constructed to integrate the three kinds of attacks into a synchronization of complex network. AETSs based on output synchronization errors with the consideration of hybrid cyber-attacks, have been proposed to reduce the burden of communication. A pinning control strategy is used to decrease the control signal’s input. By constructing a Lyapunov functional and using the linear matrix inequality technique, sufficient conditions are provided to ensure the output synchronization error system. Finally, a numerical simulation results are developed to illustrate the efficacy of the proposed theoretical methodology.

MSC:

93B70 Networked control
93B36 \(H^\infty\)-control
93C40 Adaptive control/observation systems
93E15 Stochastic stability in control theory
Full Text: DOI

References:

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