Title of article :
Robustness analysis of global exponential stability in neural networks evoked by deviating argument and stochastic disturbance
Author/Authors :
Wan ، Liguang - Hubei Normal University , Wu ، Ailong - Hubei Normal University , Chen ، Jingru - Hubei Normal University
Pages :
22
From page :
5646
To page :
5667
Abstract :
This paper studies the robustness of global exponential stability of neural networks evoked by deviating argument and stochastic disturbance. Given the original neural network is globally exponentially stable, we discuss the problem that the neural network is still globally exponentially stable when the deviating argument or both the deviating argument and stochastic disturbance is/are generated. By virtue of solving the derived transcendental equation(s), the upper bound(s) about the intensity of the deviating argument or both of the deviating argument and stochastic disturbance is/are received. The obtained theoretical results are the supplements to the existing literatures on global exponential stability of neural networks. Two numerical examples are offered to demonstrate the effectiveness of theoretical results.
Keywords :
Global exponential stability , robustness , neural networks , deviating argument , stochastic disturbance
Journal title :
Journal of Nonlinear Science and Applications
Serial Year :
2017
Journal title :
Journal of Nonlinear Science and Applications
Record number :
2476916
Link To Document :
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