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H-infinity state estimation for multi-rate artificial neural networks with integral measurements: A switched system approach

机译:多率人工神经网络具有整体测量的H-Infinity状态估计:交换系统方法

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In this paper, the H-infinity state estimation problem is studied for a class of multi-rate artificial neural networks with integral measurements. A novel method, rather than the widely used lifting technique, is proposed to transform the multi-rate artificial neural networks to single-rate switched ones. The purpose of the addressed H-infinity state estimation problem is to design an estimator such that the estimation error dynamics is exponentially stable and the H-infinity performance requirement is satisfied. First, with the help of the Lyapunov-Krasovskii functional and the switched system approach, sufficient conditions are derived under which the existence of the desired estimator is ensured. Then, the characterization of the estimator gains is realized by solving certain linear matrix inequalities. Finally, two illustrative examples are given that confirm the usefulness of the developed H-infinity state estimation scheme and reveal the influence of the multi-rate sampling on the state estimation performance. (C) 2020 Elsevier Inc. All rights reserved.
机译:本文研究了H-Infinity状态估计问题,用于一类具有整体测量的多速率人工神经网络。提出了一种新的方法,而不是广泛使用的提升技术,而是将多速率人工神经网络转换为单速交换机。寻址的H-Infinity State估计问题的目的是设计估算器,使得估计错误动态是指数稳定的,并且满足H-Infinity性能要求。首先,在Lyapunov-Krasovskii功能和交换系统方法的帮助下,获得了足够的条件,在该条件下,确保了所需估计器的存在。然后,通过求解某些线性矩阵不等式来实现估计器增益的表征。最后,给出了两个说明性示例,以确认发达的H-Infinity状态估计方案的有用性,并揭示了多速率采样对状态估计性能的影响。 (c)2020 Elsevier Inc.保留所有权利。

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