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Solving linear programming problems under fuzziness and randomness environment using attainment values. (English) Zbl 1178.90363
Summary: The author presents a model to measure attainment values of fuzzy numbers/fuzzy stochastic variables. These new measures are then used to convert the fuzzy linear programming problem or the fuzzy stochastic linear programming problem into the corresponding deterministic linear programming problem. Numerical comparisons are provided to illustrate the effectiveness of the proposed method.

MSC:
90C70 Fuzzy and other nonstochastic uncertainty mathematical programming
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