New Approach to Solve Fuzzy Linear Programming Problems by the Ranking Function
Journal Title: Bonfring International Journal of Data Mining - Year 2014, Vol 4, Issue 4
Abstract
In this paper, a new method is proposed to find the fuzzy optimal solution of fully fuzzy linear programming problems with triangular fuzzy numbers. A computational method for solving fully fuzzy linear programming problems (FFLPP) is proposed, based upon the new Ranking function. The proposed method is very easy to understand and to apply for fully fuzzy linear programming problems occurring in real life situations as compared to the existing methods. To illustrate the proposed method numerical examples are solved
Authors and Affiliations
A. Karpagam , Dr. P. Sumathi
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