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Robust stochastic convergence and stability of neutral-type neural networks with Markovian jump and mixed delays

机译:具有马尔可夫跳跃和混合时滞的中立型神经网络的鲁棒随机收敛和稳定性

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摘要

The robust stochastic convergence and stability in mean square are investigated for a class of uncertain neutral-type neural networks with both Markovian jump parameters and mixed delays. First, by employing the Lyapunov method and a generalized Halanay-type inequality for stochastic differential equations, a delay-dependent condition is derived to guarantee the state variables of the discussed neural networks to be globally uniformly exponentially stochastic convergent to a ball in the state space with a prespecified convergence rate. Next, by applying the Jensen integral inequality and a novel reciprocal convex lemma, a delay-dependent criterion is developed to achieve the globally robust stochastic stability in mean square. With some parameters being fixed in advance, the proposed conditions are all expressed in terms of LMIs, which can be solved numerically by employing the standard MATLAB LMI toolbox package. Finally, two illustrated examples are given to show the effectiveness and less conservatism of the obtained results over some existing works.
机译:研究了一类具有马尔可夫跳跃参数和混合时滞的不确定中立型神经网络的鲁棒随机收敛性和均方稳定性。首先,通过对随机微分方程采用Lyapunov方法和广义Halanay型不等式,推导了依赖于延迟的条件,以保证所讨论的神经网络的状态变量在状态空间中全局均匀地指数收敛于球。具有预定的收敛速度。接下来,通过应用Jensen积分不等式和新颖的倒数凸引理,建立了一个依赖于延迟的准则,以实现均方的全局鲁棒随机稳定性。在预先确定一些参数的情况下,提出的条件全部以LMI表示,可以通过使用标准MATLAB LMI工具箱软件包以数值方式求解。最后,给出了两个说明性的例子,以表明所获得的结果在某些现有工作上的有效性和较少的保守性。

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