Liang Jinling, Wang Zidong, Liu Yurong, Liu Xiaohui
Department of Mathematics, Southeast University, Nanjing 210096, China.
IEEE Trans Neural Netw. 2008 Nov;19(11):1910-21. doi: 10.1109/TNN.2008.2003250.
This paper is concerned with the robust synchronization problem for an array of coupled stochastic discrete-time neural networks with time-varying delay. The individual neural network is subject to parameter uncertainty, stochastic disturbance, and time-varying delay, where the norm-bounded parameter uncertainties exist in both the state and weight matrices, the stochastic disturbance is in the form of a scalar Wiener process, and the time delay enters into the activation function. For the array of coupled neural networks, the constant coupling and delayed coupling are simultaneously considered. We aim to establish easy-to-verify conditions under which the addressed neural networks are synchronized. By using the Kronecker product as an effective tool, a linear matrix inequality (LMI) approach is developed to derive several sufficient criteria ensuring the coupled delayed neural networks to be globally, robustly, exponentially synchronized in the mean square. The LMI-based conditions obtained are dependent not only on the lower bound but also on the upper bound of the time-varying delay, and can be solved efficiently via the Matlab LMI Toolbox. Two numerical examples are given to demonstrate the usefulness of the proposed synchronization scheme.
本文研究了一类具有时变延迟的耦合随机离散时间神经网络阵列的鲁棒同步问题。单个神经网络存在参数不确定性、随机干扰和时变延迟,其中状态矩阵和权重矩阵中存在范数有界的参数不确定性,随机干扰为标量维纳过程形式,且时变延迟进入激活函数。对于耦合神经网络阵列,同时考虑了常数耦合和延迟耦合。我们的目标是建立易于验证的条件,在此条件下所研究的神经网络实现同步。通过使用克罗内克积作为有效工具,开发了一种线性矩阵不等式(LMI)方法,以推导几个充分准则,确保耦合延迟神经网络在均方意义下全局、鲁棒、指数同步。所得到的基于LMI的条件不仅依赖于时变延迟的下界,还依赖于其上界,并且可以通过Matlab LMI工具箱有效求解。给出了两个数值例子来证明所提出同步方案的有效性。