Sampled-Data Control with Time-Varying Coupling Delay

Much attention has been drawn to the study of LSNSs over the last decade, because LSNSs are successfully applicable to describe a variety of real world systems including Internet networks, biological networks, epidemic spreading networks, collaborative networks, and social networks (Liu et al., IEEE Trans Neural Netw 20:1102–1116, 2009, [3]; Wang et al., IEEE Trans Neural Netw 21:11–25, 2010, [6]).

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