College of Mathematics and System Sciences, Xinjiang University, Urumqi, 830046, Xinjiang, PR China.
College of Mathematics and System Sciences, Xinjiang University, Urumqi, 830046, Xinjiang, PR China.
Neural Netw. 2017 Dec;96:91-100. doi: 10.1016/j.neunet.2017.09.009. Epub 2017 Sep 20.
In this paper, without transforming the second order inertial neural networks into the first order differential systems by some variable substitutions, asymptotic stability and synchronization for a class of delayed inertial neural networks are investigated. Firstly, a new Lyapunov functional is constructed to directly propose the asymptotic stability of the inertial neural networks, and some new stability criteria are derived by means of Barbalat Lemma. Additionally, by designing a new feedback control strategy, the asymptotic synchronization of the addressed inertial networks is studied and some effective conditions are obtained. To reduce the control cost, an adaptive control scheme is designed to realize the asymptotic synchronization. It is noted that the dynamical behaviors of inertial neural networks are directly analyzed in this paper by constructing some new Lyapunov functionals, this is totally different from the traditional reduced-order variable substitution method. Finally, some numerical simulations are given to demonstrate the effectiveness of the derived theoretical results.
本文无需通过变量替换将二阶惯性神经网络转化为一阶微分系统,研究了一类时滞惯性神经网络的渐近稳定性和同步问题。首先,构造了一个新的李雅普诺夫泛函,直接提出了惯性神经网络的渐近稳定性,并利用巴拉伐尔引理得到了一些新的稳定性判据。此外,通过设计一种新的反馈控制策略,研究了所研究的惯性网络的渐近同步,并得到了一些有效的条件。为了降低控制成本,设计了一种自适应控制方案来实现渐近同步。需要注意的是,本文通过构造一些新的李雅普诺夫泛函直接分析惯性神经网络的动态行为,这与传统的降阶变量替换方法完全不同。最后,通过数值模拟验证了所得到的理论结果的有效性。