Author/Authors :
avak darestani, soroush Department of Industrial Engineering - Qazvin Branch - Islamic Azad University, Qazvin, Iran , pourasadollah, faranak Department of Industrial Engineering - Science and Research Branch - Islamic Azad University, Tehran, Iran
Abstract :
During the last decade, reverse logistics networks received a considerable attention due to economic importance and environmental
regulations and customer awareness. Integration of leading and reverse logistics networks during logistical network design is one of the
most important factors in supply chain. In this research, an Integer Linear Programming model is presented to design a multi-layer reverseleading,
multi-product, and multi-period integrated logistics network by considering multi-capacity level for facilities under uncertainty
condition. This model included three objectives: maximizing profit, minimizing delay of goods delivering to customer, and minimizing
returned raw material from suppliers. This research gives financial incentives to encourage customers in order to return their used product.
Considering that the remaining value of used products is the main incentive of a company to buy second-handed goods, a dynamic pricing
approach is determined to define purchase price for these types of products, and based on that, the percentage of returned products were
collected by customers. In addition, in this study, parameters have uncertainty features and are vague; therefore, at first, they are converted
into exact parameters and, then, because model is multi-objective, the fuzzy mathematical programming approach is used to convert multiobjective
model into a single objective; finally, the model by version 8 of Lingo is run. In order to solve a large-sized model, a nondominated
sorting genetic algorithm II (NSGA-II) was applied. Computational results indicate the effect of the proposed purchase price on
encourage customers to return the used products.
Keywords :
Integrated supply chain network , Fuzzy mathematical programming , Dynamic pricing approach , Integer programming , Quality level