Isaac Scientific Publishing

Journal of Advances in Applied Mathematics

Asymptotical Synchronization of Drive-Response Networks by Sample-Data-Based Event-Triggered Control with Quantization and Cyber-Attacks

Download PDF (1017.3 KB) PP. 55 - 73 Pub. Date: April 1, 2021

DOI: 10.22606/jaam.2021.62002

Author(s)

  • Ge Bai*
    College of Science, University of Shanghai for Science and Technology, Shanghai 200093, PR China

Abstract

This paper addresses the asymptotic synchronization problem for a kind of drive-response complex networks (DRCNs) under cyber-attacks by using network control systems (NCSs). In order to reduce the pressure of communication and save the communication bandwidth on NCSs, some sampled-data-based event-triggered synchronization feedback controllers and logarithmic quantizers are designed by taking into account the effect of the NCSs’ transmission delays. Using Lyapunov stability theories, several sufficient conditions are obtained to guarantee the existence of sampleddata- based event-triggered synchronization controllers for the DRCNs with distributed-delay. Then, the state feedback gains are obtained by solving certain linear matrix inequalities (LMIs). Finally, a numerical example is provided to illustrate the effectiveness of the sampled-data-based eventtriggered control scheme.

Keywords

synchronization control; event-triggered mechanism; sampled-data-based; network control system; quantization; cyber-attack

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