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State Estimation for Markovian Coupled Neural Networks with Multiple Time Delays Via Event-Triggered Mechanism

机译:通过事件触发机制多次延迟的Markovian耦合神经网络的状态估计

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摘要

This paper focuses on the state estimation problem for a type of coupled neural networks with multiple time delays and markovian jumping communication topologies. To avoid unnecessary resources consuming, a novel state estimator is designed based on event-triggered mechanism, in which the control input of each node is only updated when the measurement output error exceeds a predefined threshold. The event-triggering time sequence is a subset of the switching time sequence, which can naturally excludes the Zeno-behavior. By utilizing an appropriate Lyapunov-Krasovskii functional, as well as the weak infinitesimal operator of Markov process and some algebraic inequalities, an easy-to-check sufficient criterion is derived to ensure the exponential ultimate boundedness of the estimation error. Finally, a simulation example is presented to illustrate the applications and effectiveness of the theoretical results.
机译:本文重点介绍了一种具有多个时间延迟和马尔可夫跳跃通信拓扑的耦合神经网络的状态估计问题。为了避免不必要的资源消耗,基于事件触发机制设计了一种新颖的状态估计器,其中每个节点的控制输入仅在测量输出误差超过预定阈值时更新。事件触发时间序列是切换时间序列的子集,其可以自然排除ZENO行为。通过利用适当的Lyapunov-krasovskii功能,以及Markov过程的弱无限运算符和一些代数不等式,导出易于检查的足够标准,以确保估计误差的指数终极界限。最后,提出了一种模拟示例以说明理论结果的应用和有效性。

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