Genetic Lateral and Amplitude Tuning of Membership Functions for Fuzzy Systems
نویسندگان
چکیده
In this work, we extend the genetic lateral tuning of membership functions [1] based on the linguistic 2-tuples representation [2], in order to also perform a tuning of the support amplitude of the membership functions. To do so, we present a new symbolic representation which extends the linguistic 2-tuples representation model with a parameter β to represent the amplitude variation of the support of its associated membership function.
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