IEEE Trans Cybern. 2020 Feb;50(2):440-451. doi: 10.1109/TCYB.2018.2862914. Epub 2018 Sep 10.
This paper addresses the H state estimation issue for a sort of memristive neural networks in the discrete-time setting under randomly occurring mixed time-delays and fading measurements. The main purpose of the addressed issue is to propose a state estimator design algorithm that ensures the error dynamics of the state estimation to be stochastically stable with a prespecified H disturbance attenuation index. We put forward certain switching functions to account for the discrete-time yet state-dependent characteristics of the memristive connection weights. By resorting to the robust analysis theory and the Lyapunov-functional analysis theory, we derive some sufficient conditions to guarantee the desired estimation performance. The derived sufficient conditions rely not only on the size of discrete time-delays and the probability distribution law of the distributed time-delays but also on the statistics information of the coefficients of the adopted Rice fading model. Based on the established existence conditions, the gain matrices of the desired estimator are obtained by means of the feasibility of a set of matrix inequalities that can be checked efficiently via available software packages. Finally, the numerical simulation results are provided to show the validity of the main results.
本文针对离散时间环境下一类具有随机混合时滞和衰落测量的忆阻神经网络的 H 状态估计问题进行了研究。所研究问题的主要目的是提出一种状态估计器设计算法,该算法确保状态估计的误差动态具有预设的 H 干扰衰减指标的随机稳定性。我们提出了某些切换函数来考虑忆阻连接权重的离散时间但与状态相关的特性。通过求助于鲁棒分析理论和 Lyapunov 函数分析理论,我们推导出了一些充分条件,以保证期望的估计性能。所导出的充分条件不仅依赖于离散时滞的大小和分布时滞的概率分布规律,还依赖于所采用的 Rice 衰落模型的系数的统计信息。基于建立的存在条件,通过一组可以通过可用软件包有效检查的矩阵不等式的可行性来获得期望估计器的增益矩阵。最后,提供了数值仿真结果以验证主要结果的有效性。