为具有多时变延迟的神经网络设计事件触发的扩展耗散状态估计器

A. Karnan, G. Soundararajan, G. Nagamani, Ardak Kashkynbayev
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摘要

本文探讨了为一类具有多重时变延迟的神经网络设计扩展耗散状态估计器的问题。这个问题的新颖之处在于假设每个节点都有不同的时变延迟,从而证明了它的通用性和复杂性。我们提出了一种具有已知输出测量的事件触发状态估计器,通过节省有限的通信资源来促进这些有针对性的网络响应。因此,通过构建一个增强的 Lyapunov-Krasovskii 函数(LKF)并找到其导数,就实现了扩展耗散估计器的充分条件。利用广义自由加权矩阵不等式(GFWMI)实现了更严格的导数上限,从而在线性矩阵不等式(LMI)中得到了不太保守的结果。最后,通过一个数值示例验证了主要发现的优势和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Design of an event-triggered extended dissipative state estimator for neural networks with multiple time-varying delays

This paper examines the issue of designing an extended dissipative state estimator for a class of neural networks with multiple time-varying delays. The novelty of this problem lies in assuming distinct time-varying delays for each node, demonstrating its generalizability and complexity. An event-triggered state estimator with a known output measurement is proposed to facilitate these targeted network responses by saving limited communication resources. Consequently, sufficient conditions for an extended dissipative estimator have been achieved by constructing an augmented Lyapunov–Krasovskii functional (LKF) and finding its derivative. A generalized free-weighting matrix inequality (GFWMI) is utilized to achieve a tighter upper bound of the derivative, leading to a less conservative result in linear matrix inequalities (LMIs). Ultimately, a numerical example is shown to verify the advantages and efficacy of the main findings.

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