Mais de 1000 referências fuzzy

REFERÊNCIAS

Mais de 1000  referências sobre Lógica Fuzzy

O livro KLIR G.;YUAN, B., 1995. Fuzzy Sets and Fuzzy Logic. Prentice Hall, New Jersey contém mais de 1000 referências!

Acesse algumas:

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