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Heuristic method for robust optimization model for green closed-loop supply chain network design of perishable goods

机译:易腐商品绿色闭环供应链网络设计鲁棒优化模型的启发式方法

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In the current study, a green closed-loop supply chain network design for perishable products is investigated under uncertain conditions. The demands, rate of return and the quality of returned products stand as an uncertain parameter. The considered chain, based on the study of a dairy company, is a multi-period and multi-product that comprises suppliers, manufacturers, warehouses, retailers and collection centers. A mixed-integer linear programming (MILP) model is projected to minimize the cost and environmental pollutant, simultaneously. Besides, an innovative MILP robust model is developed for the problem under uncertainty. Due to the NP-hard nature of the problem, the research has developed an efficient heuristic, named YAG, to solve large-sized problems. Computational experiments conducted indicating that the YAG method has an average gap of less than 1.65 percent from the optimal solution within a reasonable time. Also, the YAG method finds the optimal solution in more than 34 percent of instances. The performance of the robust approach and the heuristic method is examined in a real case study and a diverse range of problems. The results revealed that the robust model compared to the deterministic model has better quality and seem quite more reliable. The effect of the product's lifetime, bi-objective modeling and environmental pollutant are considered throughout the study. The results indicate that the effects of products' lifetime and level of uncertainty vary for cost and environmental pollution objectives. (C) 2019 Elsevier Ltd. All rights reserved.
机译:在当前的研究中,研究了在不确定条件下易腐产品的绿色闭环供应链网络设计。需求,退货率和退货产品质量是不确定的参数。根据一家乳品公司的研究,所考虑的链条是一个多时期和多种产品,包括供应商,制造商,仓库,零售商和收集中心。预计将采用混合整数线性规划(MILP)模型以最小化成本和环境污染。此外,针对不确定性问题,开发了创新的MILP鲁棒模型。由于问题的NP难性,该研究开发了一种有效的启发式方法,名为Y​​AG,用于解决大型问题。进行的计算实验表明,YAG方法在合理的时间内与最佳解的平均差距小于1.65%。同样,YAG方法可以在超过34%的实例中找到最佳解决方案。在实际案例研究和各种问题中研究了鲁棒方法和启发式方法的性能。结果表明,与确定性模型相比,鲁棒模型具有更好的质量,并且看起来更可靠。在整个研究过程中,都考虑了产品寿命,双目标建模和环境污染物的影响。结果表明,产品寿命和不确定性水平的影响因成本和环境污染目标而异。 (C)2019 Elsevier Ltd.保留所有权利。

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