IEEE Trans Cybern. 2016 Nov;46(11):2497-2508. doi: 10.1109/TCYB.2015.2478860. Epub 2015 Oct 2.
In this paper, the state estimation problem is investigated for a class of discrete-time complex networks subject to nonlinearities, mixed delays, and stochastic noises. A set of event-based state estimators is constructed so as to reduce unnecessary data transmissions in the communication channel. Compared with the traditional state estimator whose measurement signal is received under a periodic clock-driven rule, the event-based estimator only updates the measurement information from the sensors when the prespecified "event" is violated. Attention is focused on the analysis and design problem of the event-based estimators for the addressed discrete-time complex networks such that the estimation error is exponentially bounded in mean square. A combination of the stochastic analysis approach and Lyapunov theory is employed to obtain sufficient conditions for ensuring the existence of the desired estimators and the upper bound of the estimation error is also derived. By using the convex optimization technique, the gain parameters of the desired estimators are provided in an explicit form. Finally, a simulation example is used to demonstrate the effectiveness of the proposed estimation strategy.
本文研究了一类具有非线性、混合时滞和随机噪声的离散时间复杂网络的状态估计问题。构建了一组基于事件的状态估计器,以减少通信信道中不必要的数据传输。与传统的状态估计器相比,其测量信号是在周期性时钟驱动规则下接收的,基于事件的估计器仅在违反预定“事件”时才从传感器更新测量信息。本文重点研究了所讨论的离散时间复杂网络的基于事件的估计器的分析和设计问题,以使估计误差在均方意义上指数有界。采用随机分析方法和 Lyapunov 理论的组合,得到了确保期望估计器存在的充分条件,并推导出了估计误差的上界。通过使用凸优化技术,以显式形式给出了期望估计器的增益参数。最后,通过仿真示例验证了所提出的估计策略的有效性。