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On Nie-Tan Operator and Type-Reduction of Interval Type-2 Fuzzy Sets | IEEE Journals & Magazine | IEEE Xplore

On Nie-Tan Operator and Type-Reduction of Interval Type-2 Fuzzy Sets


Abstract:

Type-reduction of type-2 fuzzy sets is considered to be a defuzzification bottleneck because of the computational complexity involved in the process of type-reduction. In...Show More

Abstract:

Type-reduction of type-2 fuzzy sets is considered to be a defuzzification bottleneck because of the computational complexity involved in the process of type-reduction. In this paper, we prove that the closed-form Nie-Tan operator, which outputs the average of the upper and lower bounds of the footprint of uncertainty, is actually an accurate method for defuzzifying interval type-2 fuzzy sets.
Published in: IEEE Transactions on Fuzzy Systems ( Volume: 26, Issue: 2, April 2018)
Page(s): 1036 - 1039
Date of Publication: 09 February 2017

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I. Introduction

Type-2 fuzzy sets (T2 FSs) generalize T1 FSs so that uncertainty associated with the membership function is taken into account [1]. Compared with a T1 FS, in which the membership is represented by crisp numbers, the membership of a T2 FS is represented by an FS, which is known as the secondary membership. Defuzzification is the final stage of a fuzzy inference system, in which an FS is converted into a crisp number. Unfortunately, defuzzification of a T2 FS can be so computationally complex that it has been known as the defuzzification bottleneck [2]. Defuzzification of T2 FSs usually contains two stages [3]: a type-reduction stage, in which the T2 FS is converted to a T1 FS, and a defuzzification of the T1 FS stage. It is the type-reduction stage that leads to the defuzzification bottleneck since there have been a number of efficient methods for the defuzzification of T1 FSs. One of the most popular methods to defuzzify T1 FSs is the centroid [4], [5] \begin{equation} d_c(\mu (x))=\frac{\int _{x_{\min }}^{x_{\max }} \mu (x)\cdot xdx}{\int _{x_{\min }}^{x_{\max }} \mu (x)dx} \end{equation}

where is the membership function of the T1 FS.

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