4.7 Article

Event-Triggered μ-state estimation for Markovian jumping neural networks with mixed time-delays

Journal

APPLIED MATHEMATICS AND COMPUTATION
Volume 425, Issue -, Pages -

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1016/j.amc.2022.127056

Keywords

Markovian jumping neural networks; State estimation; Event-triggered mechanism; Unbounded time-varying delay; Stochastic mu-stability

Funding

  1. Science and Technology Research Program of Chongqing Municipal Education Commission [KJZD-M202100701]
  2. Group Building Scientific Innovation Projectfor universities in Chongqing [JDLHPYJD2021016]
  3. Joint Training Base Construction Project for Graduate Students in Chongqing [CXQT21021]

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This paper addresses the issue of event-triggered it-state estimation for a class of Markovian jumping neural networks with mixed delays. An event-triggered mechanism with mode dependence is adopted, and a criterion is obtained for ensuring the stochastic it-stability performance of the error system.
In this paper, the issue of event-triggered it-state estimation is addressed for a class of Markovian jumping neural networks (MJNNs) with mixed delays. The mixed delays involve both the infinitely distributed delay and the time-varying delay without requiring the upper bound, which has a distinction in existing conclusions and makes the model be more comprehensive. An event-triggered mechanism (ETM) with mode dependence is adopted to determine the appropriate updating instants of measurement outputs so as to alleviate the transmission of signals. By constructing a novel time-varying L-K functional with a general convergency rate and employing several analysis techniques, a sufficient criterion is obtained for ensuring the stochastic it-stability performance of error system, which is a more general stability performance including exponential stability, power stability as well as logarithmic stability as its special cases. Finally, three numerical examples are listed to demonstrate the effectiveness of the proposed method.(C) 2022 Elsevier Inc. All rights reserved.

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