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Mean-square consensus of a semi-Markov jump multi-agent system based on event-triggered stochastic sampling

  • Received: 27 April 2023 Revised: 10 June 2023 Accepted: 14 June 2023 Published: 28 June 2023
  • This paper focuses on achieving leader-follower mean square consensus in semi-Markov jump multi-agent systems. To effectively reduce communication costs and control updates, we propose an event-triggered protocol based on stochastic sampling. The stochastic sampling interval randomly switches between finite given values, while the event-triggered function depends on the stochastic sampled data from neighboring agents. Using the event-triggered strategy, we present sufficient conditions to ensure mean square consensus. Finally, we provide a numerical example demonstrating the effectiveness of the theoretical results.

    Citation: Duoduo Zhao, Fang Gao, Jinde Cao, Xiaoxin Li, Xiaoqin Ma. Mean-square consensus of a semi-Markov jump multi-agent system based on event-triggered stochastic sampling[J]. Mathematical Biosciences and Engineering, 2023, 20(8): 14241-14259. doi: 10.3934/mbe.2023637

    Related Papers:

  • This paper focuses on achieving leader-follower mean square consensus in semi-Markov jump multi-agent systems. To effectively reduce communication costs and control updates, we propose an event-triggered protocol based on stochastic sampling. The stochastic sampling interval randomly switches between finite given values, while the event-triggered function depends on the stochastic sampled data from neighboring agents. Using the event-triggered strategy, we present sufficient conditions to ensure mean square consensus. Finally, we provide a numerical example demonstrating the effectiveness of the theoretical results.



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