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H-infinity state estimation for discrete-time switching neural networks with persistent dwell-time switching regularities

机译:具有持续停留时间切换规律的离散时间切换神经网络的H-无穷状态估计

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This paper focuses on the state estimation problem for a class of discrete-time switching neural networks with persistent dwell time (PDT) switching regularities and mode-dependent time-varying delays in H-infinity. sense. The considered switching regularity is more general that extends the frequently studied dwell-time (DT) and average dwell-time (ADT) switching. The random packet dropouts, which are governed by a Bernoulli distributed white sequence, are considered to exist together for the estimator design of underlying switching neural networks. The desired mode-dependent estimators are designed such that the resulting estimation error system is exponentially mean-square stable and achieves a prescribed H-infinity level of disturbance attenuation. Finally, the effectiveness and the superiority of the developed results are demonstrated through a class of synthetic oscillatory networks. (C) 2015 Elsevier B.V. All rights reserved.
机译:本文重点研究一类离散时间切换神经网络的状态估计问题,该神经网络具有H-infinity中的持续驻留时间(PDT)切换规则和模式相关时变时滞。感。所考虑的切换规则更为通用,可以扩展经常研究的驻留时间(DT)和平均驻留时间(ADT)切换。由基础伯努利分布的白色序列控制的随机数据包丢失被认为一起存在,用于基础交换神经网络的估计器设计。设计期望的依赖于模式的估计器,以使所得的估计误差系统呈指数均方稳定,并达到规定的干扰衰减H-无穷大水平。最后,通过一类合成振荡网络证明了所开发结果的有效性和优越性。 (C)2015 Elsevier B.V.保留所有权利。

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