interpolation of the tabular functions with fuzzy input and fuzzy output

Authors

مهران چهلابی

دانشگاه آزاد سواد کوه یزد

abstract

in this paper, rst a design is proposed for representing fuzzy polynomials withinput fuzzy and output fuzzy. then, we sketch a constructive proof for existenceof such polynomial which can be fuzzy interpolation polynomial in a set given ofdiscrete points rather than a fuzzy function. finally, to illustrate some numericalexamples are solved.

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Journal title:
نظریه تقریب و کاربرد های آن

جلد ۱۰، شماره ۱، صفحات ۱۳-۲۶

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