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Stability of antiperiodic recurrent neural networks with multiproportional delays

机译:抗贫化性复发性神经网络具有多重延迟的稳定性

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In general, a proportional function is obviously not antiperiodic, yet a very interesting fact in this paper shows that it is possible there is an antiperiodic solution for some proportional delayed dynamical systems. We deal with the issue of antiperiodic solutions for RNNs (recurrent neural networks) incorporating multiproportional delays. Employing Lyapunov method, inequality techniques and concise mathematical analysis proof, sufficient criteria on the existence of antiperiodic solutions including its uniqueness and exponential stability are built up. The obtained results provide us some lights for designing a stable RNNs and complement some earlier publications. In addition, simulations show that the theoretical antiperiodic dynamics are in excellent agreement with the numerically observed behavior.
机译:通常,比例函数显然不是抗敌意,但本文中的一个非常有趣的事实表明,对于一些比例延迟动力系统,可以存在对抗贫化解决方案。 我们处理包含多元延迟的RNN(经常性神经网络)的抗贫化解问题。 采用Lyapunov方法,不等式技术和简洁的数学分析证明,建立了存在唯一性和指数稳定性的抗贫化解决方案存在的充分标准。 所获得的结果为我们提供了一些稳定的RNN和补充一些早期出版物的灯光。 此外,仿真表明,理论抗哌锥体动态与数值观察到的行为非常一致。

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