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Global dissipativity of stochastic neural networks with time delay

机译:时滞随机神经网络的全局耗散性

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Liao and Wang [Global dissipativity of continuous-time recurrent neural networks with time delay, Phys. Rev. E 68 (2003) 016118] firstly studied the dissipativity of neural networks. In this paper, the neural network model is generalized to a stochastic case, and the global dissipativity in mean of such stochastic system is investigated. By constructing several proper Lyapunov functionals combining with Jensen's inequality, Ito's formula and some analytic techniques, several sufficient conditions for the global dissipativity in mean of such stochastic neural networks are derived in LMIs forms, which can be easily verified in practice. Three numerical examples are provided to demonstrate the effectiveness of our criteria.
机译:廖和王[具有时间延迟的连续时间递归神经网络的全局耗散性, Rev. E 68(2003)016118]首先研究了神经网络的耗散性。本文将神经网络模型推广到一个随机情况,并研究了这种随机系统的均值全局耗散性。通过结合詹森不等式,伊藤公式和一些解析技术构造几个适当的Lyapunov泛函,以LMIs形式推导了以这种随机神经网络为代表的全局耗散性的几个充分条件,可以在实践中容易地进行验证。提供了三个数值示例来证明我们标准的有效性。

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