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Goal programming technique for solving fully interval-valued intuitionistic fuzzy multiple objective transportation problems

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Abstract

In transportation problems, the cost depends on various irresistible factors like climatic conditions, fuel expenses, etc. Consequently, the transportation problems with crisp parameters fail to handle such situations. However, the construction of the problems under an imprecise environment can significantly tackle these circumstances. The intuitionistic fuzzy number associated with a point is framed by two parameters, namely membership and non-membership degrees. The membership degree determines its acceptance level, while the non-membership measures its non-belongingness (rejection level). However, a person, because of some hesitation, instead of giving a fixed real number to the acceptance and rejection levels, may assign them intervals. This new construction not only generalizes the concept of intuitionistic fuzzy theory but also gives wider scope with more flexibility. In the present article, a balanced transportation problem having all the parameters and variables as interval-valued intuitionistic fuzzy numbers is formulated. Then, a solution methodology based on goal programming approach is proposed. This algorithm not only cares to maximize the acceptance level of the objective functions but simultaneously minimizes the deviational variables attached with each goal. To tackle the interval-valued intuitionistic fuzzy constraints corresponding to each objective function, three membership and non-membership functions, linear, exponential and hyperbolic, are used. Further, a numerical example is solved to demonstrate the computational steps of the algorithm, and a comparison is drawn amidst linear, exponential and hyperbolic membership functions.

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Abbreviations

TP:

Transportation problem

LPP:

Linear programming problem

DM:

Decision maker

MOTP:

Multi-objective transportation problem

GP:

Goal programming

MOLPP:

Multi-objective linear programming problem

IF:

Intuitionistic fuzzy

IFTP:

Intuitionistic fuzzy transportation problem

IVIF:

Interval-valued intuitionistic fuzzy

IVTIFN:

Interval-valued triangular intuitionistic fuzzy number

IVTIF:

Interval-valued triangular intuitionistic fuzzy

IVIFN:

Interval-valued intuitionistic fuzzy number

IVIFTP:

Interval-valued intuitionistic fuzzy transportation problem

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Acknowledgements

We would like to express our sincere thanks to the anonymous referees for their valuable comments and suggestions which helped us to improve the quality and clarity of the paper. The first author is also grateful to the Ministry of Human Resource Development, India, for financial support, to carry out this work.

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Correspondence to S. K. Gupta.

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Malik, M., Gupta, S.K. Goal programming technique for solving fully interval-valued intuitionistic fuzzy multiple objective transportation problems. Soft Comput 24, 13955–13977 (2020). https://doi.org/10.1007/s00500-020-04770-6

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