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New results on H ∞ $H_{infty}$ state estimation of static neural networks with time-varying delay

机译:具有时变时滞的静态神经网络的H∞$ H _ { infty} $状态估计的新结果

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摘要

This paper is concerned with the problem of H ∞ $H_{infty}$ state estimation problem for a class of delayed static neural networks. The purpose of the problem is to design a delay-dependent state estimator such that the dynamics of the error system is globally exponentially stable with a prescribed H ∞ $H_{infty}$ performance. Some improved delay-dependent conditions are established by using delay partitioning method and the free-matrix-based integral inequality. The gain matrix and the optimal performance index are obtained via solving a convex optimization problem subject to LMIs (linear matrix inequality). Numerical examples are provided to illustrate the effectiveness of the proposed method comparing with some existing results.
机译:本文涉及一类时滞静态神经网络的H∞$ H _ { infty} $状态估计问题。该问题的目的是设计依赖于延迟的状态估计器,以使误差系统的动力学具有规定的H∞$ H _ { infty} $性能是全局指数稳定的。通过使用延迟分配方法和基于自由矩阵的积分不等式,建立了一些改进的依赖于延迟的条件。通过解决受LMI(线性矩阵不等式)影响的凸优化问题,可以获得增益矩阵和最佳性能指标。数值算例说明了该方法与现有结果的有效性。

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