A Condition for Input - Output - to - State Stability of Switched Fuzzy Neural Networks
نویسندگان
چکیده
This paper is concerned with the input-output-to-state stability for switched fuzzy neural networks. A new set of matrix norm based conditions is proposed such that switched fuzzy neural networks are input-output-to-state stable. A modified set of conditions for asymptotic stability of switched fuzzy neural networks is also presented in this paper. Keywords— input-output-to-state stability, switched neural networks, fuzzy neural networks
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