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Guaranteed Cost Stabilization of Time-varying Delay Cellular Neural Networks via Riccati Inequality Approach

机译:通过Riccati不等式方法保证时变时滞细胞神经网络的成本稳定

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This letter deals with the guaranteed cost stabilization of time-varying delay cellular neural networks (DCNNs). Based on the Razumikhin theorem and via applying the zoned discussion and maximax synthesis method in DCNNs, the quadratic Riccati matrix inequality criterion for the guaranteed cost stabilization controller is designed to stabilize the given chaotic DCNNs. The minimization of the guaranteed cost of stabilization for the DCNNs is also given. Finally, numerical examples are given to show the effectiveness of proposed guaranteed cost stabilization control and its corresponding minimization problem.
机译:这封信涉及时变时延细胞神经网络(DCNN)的保证成本稳定。基于Razumikhin定理,并通过在DCNN中应用区域讨论和极大值综合方法,设计了用于保证成本稳定控制器的二次Riccati矩阵不等式准则,以稳定给定的混沌DCNN。还给出了最小化DCNN的稳定保证成本。最后,通过算例说明了所提出的保证成本稳定控制及其最小化问题的有效性。

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