Title of article
A fuzzy-random programming for integrated closed-loop logistics network design by using priority-based genetic algorithm
Author/Authors
Roghanian، Emad نويسنده , Assistance professor of Industrial Engineering, Tehran, Iran , , Kamandanipour، Keyvan نويسنده ,
Issue Information
دوفصلنامه با شماره پیاپی 12 سال 2013
Pages
16
From page
139
To page
154
Abstract
Recovery of used products has steadily become interesting issue for research due to economic reasons and growing environmental or legislative concern. This paper presents a closed-loop logistics network design based on reverse logistics models. A mixed integer linear programming model is implemented to integrate logistics network design in order to prevent the sub-optimality caused by the separate design of the forward and reverse networks. The study presents a single product and multi-stage logistics network problem for the new and return products not only to determine subsets of logistics centers to be opened, but also to determine transportation strategy, which satisfies demand imposed by facilities and minimizes fixed opening and total shipping costs. Since the deterministic estimation of some parameters such as demand and rate of return of used products in closed loop logistics models is impractical, an uncertain programming is proposed. In this case, we assume there are several economic conditions with predefined probabilities calculated from historical data. Then by means of expertʹs opinion, a fuzzy variable is offered as customerʹs demand under each economic condition. In addition, demand and rate of return of products for each customer zone is presented by fuzzy-random variables, similarly. Therefore, a fuzzy-random programming is used and a priority-based genetic algorithm is proposed to solve large-scale problems.
Journal title
International Journal of Industrial Engineering Computations
Serial Year
2013
Journal title
International Journal of Industrial Engineering Computations
Record number
683450
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