Abstract Global asymptotic stability of periodic solutions for inertial delayed BAM neural networks via novel computing method of degree and inequality techniques
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Global asymptotic stability of periodic solutions for inertial delayed BAM neural networks via novel computing method of degree and inequality techniques

机译:通过新型计算方法和不等式技术的全局延迟BAM神经网络定期解的全局渐近稳定性

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摘要

AbstractFirstly, by combining Mawhin’s continuation theorem of coincidence degree theory with Lyapunov functional method and by using inequality techniques, a sufficient condition on the existence of periodic solutions for inertial BAM neural networks is obtained. Secondly, a novel sufficient condition which can ensure the global asymptotic stability of periodic solutions of the system is obtained by using Lyapunov functional method and by using inequality techniques. In our paper, the assumption for boundedness on the activation functions in existing paper is removed, the conditions in inequality form in existing papers are replaced with novel conditions, and the prior estimate method of periodic solutions is replaced with Lyapunov functional method. Hence, our result on global asymptotic stability of periodic solutions for above system is less conservative than those obtained in existing paper and more novel than those obtained in existing papers.]]>
机译:<![cdata [ 抽象 首先,通过利用Lyapunov功能方法将Mawhin的延续定理与Lyapunov功能方法结合起来,通过不等式技术,对周期解决方案存在的充分条件获得惯性BAM神经网络。其次,通过使用Lyapunov功能方法和使用不等式技术,获得了一种可以确保系统周期性溶液的全局渐近稳定性的新型充分条件。在我们的论文中,去除了现有纸上激活功能对活化功能的假设,现有纸中不等式形式的条件被新颖的条件所取代,并用Lyapunov功能方法取代了先前的定期解决方案方法。因此,我们的结果对上述系统的周期性溶解性的全局渐近稳定性不如现有纸中获得的那些,而不是现有纸中获得的那些。 < / ce:摘要>]]>

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