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Input-to-state stability of stochastic nonlinear fuzzy Cohen-Grossberg neural networks with the event-triggered control

机译:随机非线性模糊Cohen-Grossberg神经网络与事件触发控制的输入到状态稳定性

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摘要

In this paper, we investigate a class of stochastic nonlinear fuzzy Cohen-Grossberg neural networks with feedback control and an unknown exogenous disturbance. By using the Lyapunov function, Ito's formula, Dynkin's formula, Comparison principle and stochastic analysis theory, we show that the considered system is input-to-state stable with the help of the designed event-triggered mechanism. Moreover, we also guarantee that the internal execution time intervals of control task will not be arbitrarily small. Finally, some remarks and discussions have been provided to show that our results are meaningful.
机译:在本文中,我们调查了一类具有反馈控制的随机非线性模糊Cohen-Grossberg神经网络和未知的外源干扰。 通过使用Lyapunov函数,ITO的公式,Dynkin的公式,比较原理和随机分析理论,我们认为,借助于设计的事件触发机制,所考虑的系统是输入到状态的。 此外,我们还保证了控制任务的内部执行时间间隔不会任意小。 最后,已经提供了一些备注和讨论,以表明我们的结果是有意义的。

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