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Global exponential stability and periodicity of reaction-diffusion recurrent neural networks with distributed delays and Dirichlet boundary conditions

机译:具有分布时滞和狄里克雷边界条件的反应扩散递归神经网络的全局指数稳定性和周期性

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In this paper, global exponential stability and periodicity of a class of reaction—diffusion recurrent neural networks with distributed delays and Dirichlet boundary conditions are studied by constructing suitable Lyapunov functionals and utilizing some inequality techniques. We first prove global exponential convergence to 0 of the difference between any two solutions of the original neural networks, the existence and uniqueness of equilibrium is the direct results of this procedure. This approach is different from the usually used one where the existence, uniqueness of equilibrium and stability are proved in two separate steps. Secondly, we prove periodicity. Sufficient conditions ensuring the existence, uniqueness, and global exponential stability of the equilibrium and periodic solution are given. These conditions are easy to verify and our results play an important role in the design and application of globally exponentially stable neural circuits and periodic oscillatory neural circuits.
机译:本文通过构造合适的Lyapunov泛函并利用一些不等式技术研究了一类具有分布时滞和Dirichlet边界条件的反应-扩散递归神经网络的全局指数稳定性和周期性。我们首先证明原始神经网络的任意两个解之差的全局指数收敛到0,平衡的存在和唯一性是该过程的直接结果。这种方法与通常使用的方法不同,后者在两个单独的步骤中证明了存在性,平衡性和稳定性的唯一性。其次,我们证明了周期性。给出了确保平衡和周期解的存在性,唯一性以及全局指数稳定性的充分条件。这些条件易于验证,我们的结果在全局指数稳定神经回路和周期振荡神经回路的设计和应用中起着重要作用。

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