Abstract

In this manuscript, spherical fuzzy set (SFS) and T-spherical fuzzy set (TSFS) are discussed, which are two generalizations of fuzzy set (FS), intuitionistic fuzzy set (IFS), Pythagorean fuzzy set (PFS) and picture fuzzy set (PFS). As TSFS is more capable of processing and expressing unknown information in unknown environment, it is widely used in various areas. However, how to accurately measure the distance between TSFSs is still an unsolved problem. This manuscript discusses some limitations of the existing divergence measures and the problems that the existing divergence measures cannot be applied to the information provided in the TSFSs environment by some numerical examples. Therefore, a new divergence measure under TSFSs structure is proposed by utilizing the advantages of Jensen-Shannon divergence, which is called TSFSJS distance. This TSFSJS distance not only satisfies the distance measurement axiom, but also can better distinguish the difference between TSFSs than other distance measures. More importantly, this TSFSJS distance can avoid counter-intuitive results through the argument of some numerical results in the paper. The proposed approach can deal with more types of uncertain information as demonstrated by establishing a comparative study.

Highlights

  • Zadeh introduced the theory of fuzzy set [1], and fuzzy set theory has been widely used in the practical applications of uncertainty modeling

  • This paper details the background of intuitionistic fuzzy set (IFS), picture fuzzy set (PFS) and PFSs to analyze their structural deficiencies

  • In order to solve this problem, we developed the standardized distance measure between T-spherical fuzzy set (TSFS) in this manuscript for the first time

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Summary

INTRODUCTION

Zadeh introduced the theory of fuzzy set [1], and fuzzy set theory has been widely used in the practical applications of uncertainty modeling. A multi-attribute decision making method based on the interval-valued T-spherical fuzzy set (IVTSFS) was developed by Ullah et al [29] and applied to policy evaluation. A novel method based on generalized T-spherical fuzzy weighted aggregation operators on neutrosophic sets was proposed by Quek et al [30] and applied to multi-attribute decision making problem. Ullah [45] developed similarity measures of T-spherical fuzzy sets, and applied it to pattern recognition This manuscript discussed some limitations of the existing divergence measures [37] and the problems that the existing divergence measures cannot be applied to the information provided in the TSFSs environment.

PRELIMINARIES
SIMILARITY MEASURES
NORMALIZED HAMMING AND EUCLIDEAN DISTANCES
DIVERGENCE MEASURE OF TSFS
APPLICATION IN BUILDING MATERIAL RECOGNITION
CONCLUSION
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