Article ID Journal Published Year Pages File Type
1134086 Computers & Industrial Engineering 2013 10 Pages PDF
Abstract

This paper considers inventory models for items with imperfect quality and shortage backordering in fuzzy environments by employing two types of fuzzy numbers, which are trapezoidal and triangular. Two fuzzy models are developed. In the first model the input parameters are fuzzified, while the decision variables are treated as crisp variables. In the second model, not only the input parameters but also the decision variables are fuzzified. For each fuzzy model, a method of defuzzification, namely the graded mean integration method, is employed to find the estimate of the profit function in the fuzzy sense, and then the optimal policy for the each model is determined. The optimal policy for the second model is determined by using the Kuhn–Tucker conditions after the defuzzification of the profit function. Numerical examples are provided in order to ascertain the sensitiveness in the decision variables with respect to fuzziness in the components.

► Fuzzy Inventory problems for items with imperfect quality and shortages is considered. ► Input parameters and decision variables are fuzzy numbers. ► Graded Mean Integration method is used for defuzzification of the profit functions. ► Kuhn–Tucker conditions are used to solve the method. ► Numerical examples validate the models.

Related Topics
Physical Sciences and Engineering Engineering Industrial and Manufacturing Engineering
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