Applied and Computational Mathematics
Volume 9, Issue 5, October 2020, Pages: 146-154
Received: Jul. 14, 2020;
Accepted: Aug. 3, 2020;
Published: Sep. 3, 2020
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Abdelmonem Mohamed Kozae, Department of Mathematics, Faculty of Science, Tanta University, Tanta, Egypt
Mohamed Shokry, Department of Physics and Engineering Mathematics, Tanta University, Tanta, Egypt
Manar Omran, Department of Physics and Engineering Mathematics, Tanta University, Tanta, Egypt
Intuitionistic Fuzzy set (IFS) theory plays an important role in real life and engineering problems. There are many model involving fuzzy matrices to deal with different complicated aspects. Intuitionistic fuzzy set (IFS) is useful in providing a flexible model for developing the uncertainty and vagueness involved in making decisions where the theories of uncertainty are very useful to treat with mathematics that needs to address. In other words, the application of intuitionistic fuzzy sets instead of fuzzy sets means the introduction of another degree of freedom into a set description. Intuitionistic fuzzy set (IFS) called the generalization of fuzzy sets was proposed in K. T. Atanassov. So, we can use it in decision making. We examined the definition of IFS and puts new definitions of IFS (Intuitionistic fuzzy set) in this paper and suggested its implementation in the Corona Covid-19. For several similar real-life cases the suggested approach can be applied.
Abdelmonem Mohamed Kozae,
Intuitionistic Fuzzy Set and Its Application in Corona Covid-19, Applied and Computational Mathematics.
Vol. 9, No. 5,
2020, pp. 146-154.
Copyright © 2020 Authors retain the copyright of this article.
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