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首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >Global exponential stability of recurrent neural networks with time-varying delays in the presence of strong external stimuli.
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Global exponential stability of recurrent neural networks with time-varying delays in the presence of strong external stimuli.

机译:在强烈外部刺激下具有时变时滞的递归神经网络的全局指数稳定性。

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摘要

This paper presents new theoretical results on the global exponential stability of recurrent neural networks with bounded activation functions and bounded time-varying delays in the presence of strong external stimuli. It is shown that the Cohen-Grossberg neural network is globally exponentially stable, if the absolute value of the input vector exceeds a criterion. As special cases, the Hopfield neural network and the cellular neural network are examined in detail. In addition, it is shown that criteria herein, if partially satisfied, can still be used in combination with existing stability conditions. Simulation results are also discussed in two illustrative examples.
机译:本文介绍了在强外部刺激下具有有限激活函数和有限时变时滞的递归神经网络的全局指数稳定性的新理论结果。结果表明,如果输入向量的绝对值超过标准,则Cohen-Grossberg神经网络在全局上是指数稳定的。作为特殊情况,详细研究了Hopfield神经网络和细胞神经网络。另外,示出了如果部分满足本文的标准,则仍然可以与现有的稳定性条件结合使用。在两个说明性示例中还讨论了仿真结果。

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