Mean square exponential input-to-state stability of stochastic memristive complex-valued neural networks with time varying delay
Dan Liu,
Song Zhu and
Wenting Chang
International Journal of Systems Science, 2017, vol. 48, issue 9, 1966-1977
Abstract:
In this paper, mean square exponential input-to-state stability (exp-ISS) of stochastic memristive complex-valued neural networks (SMCVNNs) is investigated. By utilising Lyapunov functional and stochastic analysis theory, a sufficient criterion is derived to assure the mean square exp-ISS of the SMCVNNs. The obtained results not only generalise the previous works in the literature about real-valued neural networks as special cases, but also can be easily checked by parameters of system. Numerical simulations are given to show the effectiveness of our theoretical results.
Date: 2017
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DOI: 10.1080/00207721.2017.1300706
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