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Event-triggered state estimation for Markovian jumping neural networks: On mode-dependent delays and uncertain transition probabilities

机译:Markovian跳跃神经网络的事件触发状态估计:在依赖模式延迟和不确定的过渡概率上

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This paper is concerned with the event-triggered state estimation (ETSE) problem for a class of discrete time Markovian jumping neural networks with mode-dependent time-delays and uncertain transition probabilities. The parameters of the neural networks experience switches that are characterized by a Markovian chain whose transition probabilities are allowed to be uncertain. The event-triggered mechanism is introduced in the sensor-to-estimator channel to reduce the frequency of signal communication. The aim of this paper is to develop an ETSE scheme such that the estimation error dynamics is exponentially ultimately bounded in the mean square. To achieve the aim, two sufficient conditions are proposed with the first one guaranteeing the existence of the required state estimator, and the second one giving the algorithm for designing the corresponding estimator gain by solving some matrix inequalities. In the end, the validity of the proposed estimation scheme is illustrated by a numerical example. (c) 2020 Elsevier B.V. All rights reserved.
机译:本文涉及具有模式相关的时间延迟和不确定的转换概率的一类离散时间马克诺维安跳跃神经网络的事件触发状态估计(ETSE)问题。神经网络的参数体验的开关,其特征在于Markovian链,其过渡概率被允许不确定。在传感器到估计通道中引入了事件触发机制,以降低信号通信的频率。本文的目的是开发ETSE方案,使得估计误差动态在均线中是指数级的最终界定。为了达到目的,提出了两个足够的条件,该方法是保证所需状态估计器的存在,以及通过解决一些矩阵不等式来提供相应估计器增益的算法。最终,通过数值示例说明了所提出的估计方案的有效性。 (c)2020 Elsevier B.v.保留所有权利。

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