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首页> 外文期刊>Chinese Annals of Mathematics. Series B >GLOBAL EXPONENTIAL STABILITY IN HOPFIELD AND BIDIRECTIONAL ASSOCIATIVE MEMORY NEURAL NETWORKS WITH TIME DELAYS
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GLOBAL EXPONENTIAL STABILITY IN HOPFIELD AND BIDIRECTIONAL ASSOCIATIVE MEMORY NEURAL NETWORKS WITH TIME DELAYS

机译:具有时滞的Hopfield和双向联想记忆神经网络的全局指数稳定性

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摘要

Without assuming the boundedness, strict monotonicity and differentiability of the activation functions, the authors utilize the Lyapunov functional method to analyze the global convergence of some delayed models. For the Hopfield neural network with time delays, a new sufficient condition ensuring the existence, uniqueness and global exponential stability of the equilibrium point is derived. This criterion concerning the signs of entries in the connection matrix imposes constraints on the feedback matrix independently of the delay parameters. From a new viewpoint, the bidirectional associative memory neural network with time delays is investigated and a new global exponential stability result is given.
机译:在不假设激活函数有界,严格单调和微分的情况下,作者利用Lyapunov函数方法来分析某些延迟模型的全局收敛性。对于具有时滞的Hopfield神经网络,得出了一个新的充分条件,该条件确保了平衡点的存在,唯一性和全局指数稳定性。关于连接矩阵中的项的符号的该标准对反馈矩阵施加约束,而与延迟参数无关。从一个新的角度,研究了具有时滞的双向联想记忆神经网络,并给出了新的全局指数稳定性结果。

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