Fuzzy Goal Programming with an Imprecise Intuitionistic Fuzzy Preference Relations
Fuzzy goal programming (FGP) is applied to solve fuzzy multi-objective optimization problems. In FGP, the weights are associated with fuzzy goals for the preference among them. However, the hierarchy within the fuzzy goals depends on several uncertain criteria, decided by experts, so the preference...
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doaj-916c688c509840d4b0fd36975891c1992020-11-25T02:30:41ZengMDPI AGSymmetry2073-89942020-09-01121548154810.3390/sym12091548Fuzzy Goal Programming with an Imprecise Intuitionistic Fuzzy Preference RelationsAbdul Razzaq Abdul Ghaffar0Md. Gulzarul Hasan1Zubair Ashraf2Mohammad Faisal Khan3Department of Statistics and Operations Research, College of Science, King Saud University, Riyadh 11451, Saudi ArabiaDepartment of Mathematics, Madanapalle Institute of Technology and Science, Madanapalle 517325, IndiaDepartment of Computer Science, South Asian University, New Delhi 110021, IndiaCollege of Science and Theoretical studies, Saudi Electronic University, Riyadh 11673, Saudi ArabiaFuzzy goal programming (FGP) is applied to solve fuzzy multi-objective optimization problems. In FGP, the weights are associated with fuzzy goals for the preference among them. However, the hierarchy within the fuzzy goals depends on several uncertain criteria, decided by experts, so the preference relations are not always easy to associate with weight. Therefore, the preference relations are provided by the decision-makers in terms of linguistic relationships, i.e., goal A is slightly or moderately or significantly more important than goal B. Due to the vagueness and ambiguity associated with the linguistic preference relations, intuitionistic fuzzy sets (IFSs) are most efficient and suitable to handle them. Thus, in this paper, a new fuzzy goal programming with intuitionistic fuzzy preference relations (FGP-IFPR) approach is proposed. In the proposed FGP-IFPR model, an achievement function has been developed via the convex combination of the sum of individual grades of fuzzy objectives and amount of the score function of IFPRs among the fuzzy goals. As an extension, we presented the linear and non-linear, namely, exponential and hyperbolic functions for the intuitionistic fuzzy preference relations (IFPRs). A study has been made to compare and analyze the three FGP-IFPR models with intuitionistic fuzzy linear, exponential, and hyperbolic membership and non-membership functions. For solving all three FGP-IFPR models, the solution approach is developed that established the corresponding crisp formulations, and the optimal solution are obtained. The validations of the proposed FGP-IFPR models have been presented with an experimental investigation of a numerical problem and a banking financial statement problem. A newly developed distance measure is applied to compare the efficiency of proposed models. The minimum value of the distance function represents a better and efficient model. Finally, it has been found that for the first illustrative problem considered, the exponential FGP-IFPR model performs best, whereas for the second problem, the hyperbolic FGP-IFPR model performs best and the linear FGP-IFPR model shows worst in both cases.https://www.mdpi.com/2073-8994/12/9/1548fuzzy goal programmingintuitionistic fuzzy setscore functionimprecise goal hierarchypreference relationsdistance function |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Abdul Razzaq Abdul Ghaffar Md. Gulzarul Hasan Zubair Ashraf Mohammad Faisal Khan |
spellingShingle |
Abdul Razzaq Abdul Ghaffar Md. Gulzarul Hasan Zubair Ashraf Mohammad Faisal Khan Fuzzy Goal Programming with an Imprecise Intuitionistic Fuzzy Preference Relations Symmetry fuzzy goal programming intuitionistic fuzzy set score function imprecise goal hierarchy preference relations distance function |
author_facet |
Abdul Razzaq Abdul Ghaffar Md. Gulzarul Hasan Zubair Ashraf Mohammad Faisal Khan |
author_sort |
Abdul Razzaq Abdul Ghaffar |
title |
Fuzzy Goal Programming with an Imprecise Intuitionistic Fuzzy Preference Relations |
title_short |
Fuzzy Goal Programming with an Imprecise Intuitionistic Fuzzy Preference Relations |
title_full |
Fuzzy Goal Programming with an Imprecise Intuitionistic Fuzzy Preference Relations |
title_fullStr |
Fuzzy Goal Programming with an Imprecise Intuitionistic Fuzzy Preference Relations |
title_full_unstemmed |
Fuzzy Goal Programming with an Imprecise Intuitionistic Fuzzy Preference Relations |
title_sort |
fuzzy goal programming with an imprecise intuitionistic fuzzy preference relations |
publisher |
MDPI AG |
series |
Symmetry |
issn |
2073-8994 |
publishDate |
2020-09-01 |
description |
Fuzzy goal programming (FGP) is applied to solve fuzzy multi-objective optimization problems. In FGP, the weights are associated with fuzzy goals for the preference among them. However, the hierarchy within the fuzzy goals depends on several uncertain criteria, decided by experts, so the preference relations are not always easy to associate with weight. Therefore, the preference relations are provided by the decision-makers in terms of linguistic relationships, i.e., goal A is slightly or moderately or significantly more important than goal B. Due to the vagueness and ambiguity associated with the linguistic preference relations, intuitionistic fuzzy sets (IFSs) are most efficient and suitable to handle them. Thus, in this paper, a new fuzzy goal programming with intuitionistic fuzzy preference relations (FGP-IFPR) approach is proposed. In the proposed FGP-IFPR model, an achievement function has been developed via the convex combination of the sum of individual grades of fuzzy objectives and amount of the score function of IFPRs among the fuzzy goals. As an extension, we presented the linear and non-linear, namely, exponential and hyperbolic functions for the intuitionistic fuzzy preference relations (IFPRs). A study has been made to compare and analyze the three FGP-IFPR models with intuitionistic fuzzy linear, exponential, and hyperbolic membership and non-membership functions. For solving all three FGP-IFPR models, the solution approach is developed that established the corresponding crisp formulations, and the optimal solution are obtained. The validations of the proposed FGP-IFPR models have been presented with an experimental investigation of a numerical problem and a banking financial statement problem. A newly developed distance measure is applied to compare the efficiency of proposed models. The minimum value of the distance function represents a better and efficient model. Finally, it has been found that for the first illustrative problem considered, the exponential FGP-IFPR model performs best, whereas for the second problem, the hyperbolic FGP-IFPR model performs best and the linear FGP-IFPR model shows worst in both cases. |
topic |
fuzzy goal programming intuitionistic fuzzy set score function imprecise goal hierarchy preference relations distance function |
url |
https://www.mdpi.com/2073-8994/12/9/1548 |
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