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Event-triggered H state estimation for time-varying neural networks with variance-constraint and fading measurements

机译:事件触发<斜斜体> h 具有方差约束和衰落测量的时变神经网络的状态估计

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This paper addresses the event-triggered H ∞ state estimation problem for a class of discrete recurrent neural networks subject to variance-constraint and fading measurements. The phenomena of fading measurements are described by introducing a set of mutually independent random variables, which reflect that each sensor has individual missing probability. In addition, for the purpose of energy saving, an event-triggered H ∞ state estimation scheme is used for time-varying neural networks to determine whether the measurement output is transmitted to the estimator or not. Some sufficient conditions are obtained to guarantee that the estimation error system satisfies both estimation error variance constraint and prescribed H ∞ performance requirement. Finally, the feasibility of the proposed event-triggered H ∞ state estimation method is verified by a numerical example.
机译:本文解决了一类离散经常性神经网络的事件触发的H∞状态估计问题,其受方差约束和衰落测量。 通过引入一组相互独立的随机变量来描述衰落测量的现象,这反映了每个传感器具有个别缺失的概率。 另外,出于节能的目的,事件触发的H∞状态估计方案用于时变神经网络以确定测量输出是否被发送到估计器。 获得了一些充分的条件以保证估计误差系统满足估计误差方差约束和规定的H∞性能要求。 最后,通过数值示例验证了所提出的事件触发H∞状态估计方法的可行性。

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