New Passivity Analysis of Continuous-time Recurrent Neural Networks with Multiple Discrete Delays
نویسندگان
چکیده
In this paper, by using some analytic techniques, several sufficient conditions are given to ensure the passivity of continuous-time recurrent neural networks with delays. The passivity conditions are presented in terms of some negative semi-definite matrices. They are easily verifiable and easier to check computing with some conditions in terms of complicated linear matrix inequality.
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