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SCALE-TYPE STABILITY FOR NEURAL NETWORKS WITH UNBOUNDED TIME-VARYING DELAYS

SCALE-TYPE STABILITY FOR NEURAL NETWORKS WITH UNBOUNDED TIME-VARYING DELAYS
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摘要 This paper studies scale-type stability for neural networks with unbounded time-varying delays and Lipschitz continuous activation functions. Several sufficient conditions for the global exponential stability and global asymptotic stability of such neural networks on time scales are derived. The new results can extend the existing relevant stability results in the previous literatures to cover some general neural networks. This paper studies scale-type stability for neural networks with unbounded time-varying delays and Lipschitz continuous activation functions. Several sufficient conditions for the global exponential stability and global asymptotic stability of such neural networks on time scales are derived. The new results can extend the existing relevant stability results in the previous literatures to cover some general neural networks.
机构地区 School of Science
出处 《Annals of Applied Mathematics》 2016年第3期234-248,共15页 应用数学年刊(英文版)
基金 supported by National Natural Science Foundation of China under Grant 61573005 and 11361010 the Foundation for Young Professors of Jimei University the Foundation of Fujian Higher Education(JA11154,JA11144)
关键词 global asymptotic stability global exponential stability neural networks on time scales global asymptotic stability global exponential stability neural networks on time scales
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