首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >Global O(t(-alpha)) stability and global asymptotical periodicity for a non-autonomous fractional-order neural networks with time-varying delays
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Global O(t(-alpha)) stability and global asymptotical periodicity for a non-autonomous fractional-order neural networks with time-varying delays

机译:具有时变时滞的非自治分数阶神经网络的全局O(t(-alpha))稳定性和全局渐近周期

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摘要

The present paper studies global O(t(-alpha)) stability and global asymptotical periodicity for a non-autonomous fractional-order neural networks with time-varying delays (FDNN). Firstly, some sufficient conditions are established to ensure that a non-autonomous FDNN is global O(t(-alpha)) stable based on a new Lyapunov function method and Leibniz rule for fractional differentiation. Next it is shown that the periodic or autonomous FDNN cannot generate exactly nonconstant periodic solution under any circumstances. Finally, we show that all solutions converge to a same periodic function for a periodic FDNN by using a fractional-order differential inequality technique. Our issues, methods and results are all new. (C) 2015 Elsevier Ltd. All rights reserved.
机译:本文研究了具有时变时滞(FDNN)的非自治分数阶神经网络的全局O(t(-alpha))稳定性和全局渐近周期。首先,基于新的Lyapunov函数方法和分数阶莱布尼兹规则,建立了一些充分的条件以确保非自治FDNN是全局O(t(-α))稳定的。接下来表明,在任何情况下,周期性或自治FDNN都无法生成精确的非恒定周期解。最后,我们证明了通过使用分数阶微分不等式技术,所有解都收敛到周期FDNN的相同周期函数。我们的问题,方法和结果都是全新的。 (C)2015 Elsevier Ltd.保留所有权利。

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