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Closed-loop supply chain network design for hazardous products with uncertain demands and returns

机译:闭环供应链网络设计危险产品,需求不确定和回报

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The extensive use of hazardous products has resulted in quickly increasing on hazardous wastes. Due to the rising environmental pressure and economic benefit, the reverse supply chain design for hazardous products is becoming increasingly important and urgent. In this paper, we consider the closed-loop supply chain network design for hazardous products (HP-CLSCND), including both forward supply chain and reverse supply chain. The uncertainty inherent in closed-loop supply chain network will significantly influence the overall performance of the closed-loop supply chain network design. This paper focuses on the HP-CLSCND problem with uncertain demands and returns, and a two-stage stochastic programming model (scenario-based) is proposed, in which a risk restriction constraint and reward-penalty mechanism are simultaneously considered. Two solution approaches, parallel enumeration method (PEM) and genetic algorithm (GA) are designed to solve the proposed model. The PEM is an exact solution approach and can rapidly obtain the global optimal solution of the proposed model by utilizing multiply processors. Finally, an application example is provided to demonstrate the applicability of the proposed model and two solution approaches. The performance of PEM is evaluated by speedup radio. In addition, the sensitivity analyses about maximum acceptable risk and reward-penalty intensity are conducted, and some management insights for the government are obtained. (C) 2017 Elsevier B.V. All rights reserved.
机译:广泛使用危险产品导致危险废物迅速增加。由于环境压力和经济效益上升,危险产品的反向供应链设计变得越来越重要和迫切。在本文中,我们考虑了危险产品(HP-CLSCND)的闭环供应链网络设计,包括前进供应链和反向供应链。闭环供应链网络中固有的不确定性会显着影响闭环供应链网络设计的整体性能。本文重点介绍了不确定的需求和返回的HP-CLSCND问题,提出了一种两阶段随机编程模型(基于方案),其中同时考虑风险限制约束和奖励罚款机制。设计了两个解决方案方法,并联枚举方法(PEM)和遗传算法(GA)旨在解决所提出的模型。 PEM是一种精确的解决方案方法,可以通过利用乘法处理器迅速获得所提出的模型的全局最佳解决方案。最后,提供了一个应用示例以证明所提出的模型和两个解决方案方法的适用性。 PEM的性能由加速无线电评估。此外,对最大可接受风险和奖励罚款强度进行了敏感性分析,并获得了政府的一些管理见解。 (c)2017 Elsevier B.v.保留所有权利。

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