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A two-stage stochastic optimization model for reverse logistics network design under dynamic suppliers' locations

机译:动态供应商位置下反物流网络设计的两阶段随机优化模型

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This paper presents a two-stage stochastic programming model for reverse logistics network design (RLND) under uncertainty with dynamic supply sources' locations. The primary objective of the optimization model is to maximize the expected profit generated by selling recycled materials to the secondary markets and to make the landfilling option less attractive. In comparison with the state-of-the-art stochastic optimization models in this area, which mainly focus on the expected optimal value, this paper emphasizes the role of source separation of recyclable materials to increase the productivity level at the collection centers (CC). Indeed, the quantity of materials collected from the supply sources and the recycling rates at the CC are the primary sources of uncertainty considered in this study. A Sample Average Approximation (SAA) procedure is developed to solve the stochastic model and perform sensitivity analyses on the number of supply sources, the sample size and the level of uncertainty targeting the random parameters. Managerial implications are discussed through a case study from the demolition industry in the province of Quebec, Canada. Although the use of source separation centers (SSC) improves the network performance in both rural and urban zones, the additional flexibility provided by these platforms reaches its best efficiency in the case of high-density urban areas. Finally, the results suggest significant RLND adjustments that lead to an increase in the average profit by 17.6% and recycle around 29% of additional building materials waste from demolition.
机译:本文介绍了具有动态供应源位置的不确定性下的逆向物流网络设计(RLND)的两阶段随机编程模型。优化模型的主要目标是最大化通过向二级市场销售回收材料产生的预期利润,并使填埋期权更少吸引。与本领域的最先进的随机优化模型相比,这主要关注预期的最佳价值,本文强调了可回收材料源分离的作用,提高收集中心的生产率水平(CC) 。实际上,从供应来源收集的材料数量和CC的再循环率是本研究中考虑的主要不确定性的主要来源。开发了样本平均近似(SAA)程序以解决随机模型,并对供应源的数量,样本大小和靶向随机参数的不确定性水平进行敏感性分析。通过加拿大魁北克省省拆迁行业的案例研究讨论了管理意义。虽然使用源分离中心(SSC),但在农村和城市区域的网络性能提高了网络性能,但这些平台提供的额外灵活性在高密度城市地区的情况下达到其最佳效率。最后,结果表明,大幅度的RLND调整,导致平均利润的增加17.6%,并回收额外的建筑材料损失的29%左右。

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