Synchronization of neural networks based on parameter identification and via output or state coupling

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摘要

For neural networks with all the parameters unknown, we focus on the global robust synchronization between two coupled neural networks with time-varying delay that are linearly and unidirectionally coupled. First, we use Lyapunov functionals to establish general theoretical conditions for designing the coupling matrix. Neither symmetry nor negative (positive) definiteness of the coupling matrix are required; under less restrictive conditions, the two coupled chaotic neural networks can achieve global robust synchronization regardless of their initial states. Second, by employing the invariance principle of functional differential equations, a simple, analytical, and rigorous adaptive feedback scheme is proposed for the robust synchronization of almost all kinds of coupled neural networks with time-varying delay based on the parameter identification of uncertain delayed neural networks. Finally, numerical simulations validate the effectiveness and feasibility of the proposed technique.

论文关键词:Global robust synchronization,Neural networks,Lyapunov functional,Parameter identification,Output coupling,State coupling

论文评审过程:Received 22 August 2006, Revised 13 November 2007, Available online 28 November 2007.

论文官网地址:https://doi.org/10.1016/j.cam.2007.11.015