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首页> 外文期刊>European Journal of Operational Research >On risk management of a two-stage stochastic mixed 0-1 model for the closed-loop supply chain design problem
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On risk management of a two-stage stochastic mixed 0-1 model for the closed-loop supply chain design problem

机译:关于闭环供应链设计问题的两级随机混合0-1模型的风险管理

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摘要

In this work, the design and operation planning of a multi-period, multi-product closed-loop supply chain is addressed. Recovered end-of-life products from customers are evaluated in disassembly centers and accordingly are sent back to factories for remanufacturing, or leave the network either by being sold to third parties or by being sent to disposal. Typical uncertain parameters are product demand, production cost, and returned product volume and evaluation, among others. So, stochastic optimization approaches should be used for problem solving, where different topology decisions on the timing, location and capacity of some entities (factories, and distribution and sorting centers) are to be considered along a time horizon. A two-stage multi-period stochastic mixed 0-1 bilinear optimization model is introduced, where the combined definition of the available entities at the periods and the products' flow among the entities, maximizes the net present value of the expected total profit along the time horizon. A version of the mixture of chance-constrained and second order stochastic dominance risk averse measures is considered for risk management at intermediate periods of the time horizon. Given the high dimensions of the model it is unrealistic to look for the optimality of the solution in an affordable computing effort for current hardware and optimization software resources. So, a decomposition approach is considered, namely a Fix-and-Relax decomposition algorithm. For assessing the computational validation of the modeling and algorithmic proposals, pilot cases are taken from a real-life glass supply chain network whose main features are retained. (C) 2018 Elsevier B.V. All rights reserved.
机译:在这项工作中,解决了多个多个产品闭环供应链的设计和操作规划。从客户恢复的寿命终端产品在拆卸中心进行评估,因此被送回工厂进行再制造,或者通过销售给第三方或通过被派遣离开网络。典型的不确定参数是产品需求,生产成本和退回产品体积和评估等。因此,随机优化方法应用于解决问题,其中一些实体(工厂和分发和分拣中心的定时,位置和容量的不同拓扑决策将被考虑在时间范围内。介绍了两阶段多时期随机混合0-1双线性优化模型,其中各个时期的可用实体的结合定义和实体中的产品流动,最大化了预期总利润的净目前价值时间地平线。机会受约束和二阶随机优势风险风险厌恶措施的一个版本被认为是时间周期的风险管理。鉴于模型的高维度,在当前硬件和优化软件资源中寻找可实惠的计算工作中的解决方案的最优性是不现实的。因此,考虑了一种分解方法,即固定和放松分解算法。为了评估建模和算法建议的计算验证,试点案例从Real-Life玻璃供应链网络中取出,其主要特征是保留的。 (c)2018年elestvier b.v.保留所有权利。

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