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Finite-time Arcak-type state estimation of delayed Markovian jumping static neural networks

机译:有限时间Arcak型状态估计延迟马尔科夫跳跃神经网络

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This paper studies the finite-time state estimator design of static neural networks with Markovian jumping parameters and mixed delays. The Arcak-type estimator is designed via introducing additional control terms in the domains of activation functions. Its advantage is that the role of gain coefficients of the activation functions on this issue can be analyzed. A linear matrix inequalities based condition is obtained such that the error system is finite-time stable in the mean square. An example is provided to verify the application of the developed method.
机译:本文研究了Markovian跳跃参数和混合延迟的静态神经网络的有限状态估计设计。 Arcak型估算器是通过在激活功能的域中引入附加控制术语而设计的。其优点是可以分析激活函数的增益系数在此问题上的作用。获得基于线性矩阵的条件,使得误差系统是平均方形的有限时间稳定。提供一个示例以验证开发方法的应用。

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