Abstract

This article proposes a new version of the technique of order preference by similarity to an ideal solution (TOPSIS) to solve fuzzy multi-attribute group decision making (MAGDM) problems using trapezoidal interval type-2 fuzzy sets (IT2FSs). The traditional TOPSIS ranks the alternatives according to their relative degree of closeness to the ideal solutions. On the other hand, TOPSIS based on similarity measure ranks the alternatives according to their total degree of similarity to the ideal solutions. This study extends TOPSIS using similarity measure using map distance to IT2FSs. First, the similarity measure based on map distance for interval-valued fuzzy sets (IVFSs) is extended to encompass IT2FSs due to the deficiency in IT2FSs similarity measures. Then, TOPSIS using similarity measure is applied. Hence, fuzzy MAGDM problems can be handled in a more flexible intelligent manner and avoiding defuzzification with its drawbacks. An illustrative example is given to explain the approach. Then, a practical problem in assessing thermal energy storage technologies in solar power systems is solved, where the weights of the attributes and the performance of the qualitative attributes are linguistic variables modeled by IT2FSs. The reliability of two normalization techniques is examined and the impact of the theoretical and empirical reference points on the solution is investigated.

Highlights

  • Choosing the best option from a set of possible alternatives is one of the most challenging problems in decisionmaking

  • TOPSIS is extended to interval type-2 fuzzy sets (IT2FSs) using similarity measure based on map distance

  • TOPSIS with similarity measure for interval-valued fuzzy sets (IVFSs) is extended to IT2FSs

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Summary

Introduction

Choosing the best option from a set of possible alternatives is one of the most challenging problems in decisionmaking. T2FSs can handle these uncertainties by employing a fuzzy membership function producing a better performance (Hagras, 2004). They provide more parameters and more design degrees of freedom, reducing the effect of imprecise information. Chen and Lee (2010) modified the technique to handle IT2FSs. In most of the proposed traditional fuzzy TOPSIS methods the weighted ratings are defuzzified to determine the ideal solutions and to compute the closeness coefficient. Rashid et al (2014) modified TOPSIS using trapezoidal IVFSs. They calculated the distances between the alternatives and the ideal solutions by the normalized Euclidean distance. TOPSIS is extended to IT2FSs using similarity measure based on map distance.

A similarity measure for IT2FSs
TOPSIS for IT2FSs
3: Formation of the normalized average decision matrix
Numerical Example
Practical Example
Findings
Conclusion and discussion
Full Text
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