Necessary and sufficient conditions for global attractivity of Hopfield-type neural networks with time delays
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Publication:1011103
DOI10.1216/RMJ-2008-38-5-1829zbMath1191.34094MaRDI QIDQ1011103
Wanbiao Ma, Yang Kuang, Shangguo Zhang
Publication date: 7 April 2009
Published in: Rocky Mountain Journal of Mathematics (Search for Journal in Brave)
Neural networks for/in biological studies, artificial life and related topics (92B20) Stability theory of functional-differential equations (34K20) Stationary solutions of functional-differential equations (34K21)
Related Items (4)
\(M\)-matrix structure and harmless delays in a Hopfield-type neural network ⋮ Attractivity, multistability, and bifurcation in delayed Hopfield's model with non-monotonic feedback ⋮ Sufficient and necessary conditions for global attractivity and stability of a class of discrete Hopfield-type neural networks with time delays ⋮ A characterization of delay independent stability for linear off-diagonal delay difference equations
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