School of Mathematics, Southeast University, Nanjing, 211189, China.
Neural Netw. 2023 Mar;160:132-147. doi: 10.1016/j.neunet.2022.12.013. Epub 2023 Jan 3.
This paper investigates the coexistence and local stability of multiple equilibrium points for a class of competitive neural networks with sigmoidal activation functions and time-varying delays, in which fractional-order derivative and state-dependent switching are involved at the same time. Some novel criteria are established to ensure that such n-neuron neural networks can have [Formula: see text] total equilibrium points and [Formula: see text] locally stable equilibrium points with m+m=n, based on the fixed-point theorem, the definition of equilibrium point in the sense of Filippov, the theory of fractional-order differential equation and Lyapunov function method. The investigation implies that the competitive neural networks with switching can possess greater storage capacity than the ones without switching. Moreover, the obtained results include the multistability results of both fractional-order switched Hopfield neural networks and integer-order switched Hopfield neural networks as special cases, thus generalizing and improving some existing works. Finally, four numerical examples are presented to substantiate the effectiveness of the theoretical analysis.
本文研究了一类具有 sigmoidal 激活函数和时变时滞的竞争神经网络的多个平衡点的共存性和局部稳定性,其中同时涉及分数阶导数和状态相关切换。基于不动点定理、Filippov 意义下平衡点的定义、分数阶微分方程理论和 Lyapunov 函数方法,建立了一些新的准则,以确保此类 n 神经元神经网络具有[公式:见正文]个总平衡点和[公式:见正文]个局部稳定平衡点,其中 m+m=n。研究表明,具有切换的竞争神经网络比没有切换的神经网络具有更大的存储容量。此外,所得结果包括分数阶切换 Hopfield 神经网络和整数阶切换 Hopfield 神经网络的多稳定性结果作为特例,从而推广和改进了一些现有工作。最后,给出了四个数值实例来验证理论分析的有效性。