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2019 | 133 | 234-247
Article title

Solving Hexagonal Intuitionistic Fuzzy Fractional Transportation Problem Using Ranking and Russell’s Method

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This paper presents a solution for fractional transportation problem in an intuitionistic fuzzy environment in which cost are represented by hexagonal intuitionistic fuzzy numbers. Fuzzy fractional transportation is a special kind of optimization problem which is associated with our day to day activities. An optimal solution is found out to show the effectiveness of this method. In this, the problem is solved using ranking and Russell’s method for hexagonal intuitionistic fuzzy numbers. An illustrative example is provided to demonstrate the feasibility of this method.
Physical description
  • Department of Mathematics, PSG College of Arts and Science, Coimbatore - 641014, Tamil Nadu, India
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