Abstract

Hamacher operation is a generalization of the algebraic and Einstein operation and expresses a family of binary operation in the unit interval [0,1]. Heronian mean can deal with correlations of different criteria or input arguments and does not bring out repeated calculation. The normal intuitionistic fuzzy numbers (NIFNs) can depict normal distribution information in practical decision making. A decision-making problem was researched under the NIFN environment in this study, and a new multi-criteria group decision-making (MCGDM) approach is herein introduced on the basis of Hamacher operation. Firstly, according to Hamacher operation, some operational laws of NIFNs are presented. Secondly, it is noted that Heronian mean not only takes into account mutuality between the attribute values once, but also considers the correlation between input argument and itself. Therefore, in order to aggregate NIFN information, we developed some operators and studied their properties. These operators include Hamacher Heronian mean (NIFHHM), Hamacher weighted Heronian mean (NIFHWHM), Hamacher geometric Heronian mean (NIFHGHM), and Hamacher weighted geometric Heronian mean (NIFHWGHM). Furthermore, we applied the proposed operators to the MCGDM problem and developed a new MCGDM approach. The characteristics of this new approach are that: (1) it is suitable for making a decision under the NIFN environment and it is more reasonable for aggregating the normal distribution data; (2) it utilizes Hamacher operation to provide an effective and powerful MCGDM algorithm and to make more reliable and more flexible decisions under the NIFN circumstance; (3) it uses the Heronian mean operator to deal with interrelations between the attributes or input arguments, and it does not bring about repeated calculation. Therefore, the proposed method can describe the interaction of the different criteria or input arguments and offer some reasonable and reliable MCGDM aggregation operators, which can open avenues for decision making and broaden perspectives of the decision experts. Lastly, an application is given for showing the effectiveness and feasibility of the approach presented in this paper.

Highlights

  • In the multi-criteria group decision-making (MCGDM) procedure, because a lot of problems are uncertain or fuzzy, the value of the input argument is not always a real number and may be more effectively described as a fuzzy value

  • normal intuitionistic fuzzy numbers (NIFNs) environment and it is more reasonable for aggregating the normal distribution data; (2) it utilizes Hamacher operation to provide an effective and powerful MCGDM algorithm and to make more reliable and more flexible decisions under the NIFN circumstance; (3) it uses the Heronian mean operator to deal with interrelations between the attributes or input arguments, and it does not bring about repeated calculation

  • In this work, enlightened by Heronian mean, we significantly investigated a family of generalized fuzzy HM operators based on Hamacher operation for NIFNs, including normal intuitionistic fuzzy Hamacher Heronian mean (NIFHHM), NIFHWHM, normal intuitionistic fuzzy Hamacher geometric Heronian mean (NIFHGHM), and NIFHWGHM operators, and we discuss various properties of the proposed operators which have the desirable quality of dealing with the normal intuitionistic fuzzy information, and considering the correlations of two input arguments once

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Summary

Introduction

In the MCGDM procedure, because a lot of problems are uncertain or fuzzy, the value of the input argument is not always a real number and may be more effectively described as a fuzzy value. Lin et al [14] proposed some prioritized operators for the FNIF data They presented a method to deal with fuzzy number intuitionistic fuzzy MCGDM problems. It is very important to determine how to depict simultaneously stochastic and fuzzy information and how to capture the interaction of the different criteria or input arguments in order to make a reasonable decision by more general and more flexible MCGDM approach. The NIFNs can simultaneously describe the fuzzy and random information, and the HM operator can better capture and handle the correlation between the different criteria or input data and relieve the redundant computation at the same time.

Normal Intuitionistic Fuzzy Number
Hamacher t-Norm and Hamacher t-Conorm
Heronian Mean
Hamacher Operational Laws of the NIFNs
Normal Intuitionistic Fuzzy Hamacher Geometric Heronian Mean Operator and Its
An Application Example
An MCGDM Procedure Related to the NIFHWHM and NIFHWGHM Operators
Sensitivity Analysis
Comparison Analysis
A Comparison with Decision-Making Methods Using the NIFNs
Conclusions
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