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Boundedness and global convergence of non-autonomous neural networks with variable delays

机译:具有可变时滞的非自治神经网络的有界性和全局收敛性

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This paper is concerned with the boundedness and global convergence of the solutions of a non-autonomous system with variable delays, arising from the description of the states of neurons in delayed Hopfield neural networks in a time-varying situation. By using the analysis method, inequality technique and the properties of M-matrix, several novel sufficient conditions ensuring the boundedness and global convergence of all solutions are established. Our results are new and complement previously known results. The theoretical analysis is verified by numerical simulations.
机译:本文关注的是具有时滞的非自治系统的可变时滞解的有界性和全局收敛性,这是由时变情形下的延迟Hopfield神经网络中的神经元状态描述引起的。通过使用分析方法,不等式技术和M-矩阵的性质,建立了确保所有解的有界性和全局收敛性的几个新颖的充分条件。我们的结果是新的,并且补充了先前已知的结果。理论分析得到了数值模拟的验证。

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