Fuzzy-Based Bipartite Quasi-Synchronization of Fractional-Order Heterogeneous Reaction-Diffusion Neural Networks via Intermittent Control

IEEE Transactions on Circuits and Systems I: Regular Papers(2024)

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摘要
This paper investigates the T-S fuzzy-based bipartite quasi-synchronization of fractional-order heterogeneous coupled reaction-diffusion neural networks. In the considered neural networks, interactions between adjacent neurons are time-varying, cooperative, and competitive, and heterogeneity and T-S fuzzy system rule are simultaneously introduced to characterize the parameter uncertainty arising from complexity and ambiguity in the real world. A new time-varying graph-theoretic Lyapunov function is given for time-varying coupled reaction-diffusion neural networks. Meanwhile, a more general fractional-order derivative law is provided to estimate the derivative of this function, which includes the existing fractional-order derivative laws. Based on a fuzzy-based aperiodically intermittent control, some sufficient conditions are offered for the bipartite quasi-synchronization under a time-varying graph-theoretic Lyapunov function, and the allowable error bound is given. Finally, we carry out some simulations numerically to show the validity of the theory.
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关键词
Reaction-diffusion,time-varying couplings,intermittent control,bipartite quasi-synchronization,T-S fuzzy model
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