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Asymptotic stability of equilibrium points in dynamical neural networks

机译:动力神经网络中平衡点的渐近稳定性

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摘要

In most applications of feedback neural networks, such as the realisation of associative memories, the asymptotic stability of specific equilibrium points is the main design requirement. Sufficient conditions are presented which simplify the checking that an isolated equilibrium point is asymptotically stable. Then, these conditions are generalised to the characterisation of all equilibrium points in an open region of the state space. Finally, an explicit lower bound on the exponential convergence rate, to an equilibrium, is derived.
机译:在大多数反馈神经网络应用中,例如联想记忆的实现,特定平衡点的渐近稳定性是主要的设计要求。提出了充分的条件,这些条件简化了对孤立的平衡点渐近稳定的检查。然后,将这些条件推广到状态空间的开放区域中所有平衡点的特征化。最后,得出指数收敛速率的一个明确的下界,达到一个平衡。

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