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Bi-objective integrating sustainable order allocation and sustainable supply chain network strategic design with stochastic demand using a novel robust hybrid multi-objective metaheuristic

机译:使用新型鲁棒混合多目标元启发式方法将具有随机需求的双目标可持续订单分配和可持续供应链网络战略设计结合起来

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Sustainability has been considered as a growing concern in supply chain network design (SCND) and in the order allocation problem (OAP). Accordingly, there still exists a gap in the quantitative modeling of sustainable SCND that consists of OAP. In this article, we cover this gap through simultaneously considering the sustainable OAP in the sustainable SCND as a strategic decision. The proposed supply chain network is composed of five echelons including suppliers classified in different classes, plants, distribution centers that dispatch products via two different ways, direct shipment, and cross-docks, to satisfy stochastic demand received from a set of retailers. The problem has been mathematically formulated as a multi-objective optimization model that aims at minimizing the total costs and environmental effect of integrating SCND and OAP, simultaneously. To tackle the addressed problem, a novel multi-objective hybrid approach called MOHEV with two strategies for its best particle selection procedure (BPSP), minimum distance, and crowding distance is proposed. MOHEV is constructed through hybridization of two multi-objective algorithms, namely the adapted multi-objective electromagnetism mechanism algorithm (AMOEMA) and adapted multi-objective variable neighborhood search (AMOVNS). According to achieved results, MOHEV achieves better solutions compared with the others, and also crowding distance method for BPSP outperforms minimum distance. Finally, a case study for an automobile industry is used to demonstrate the applicability of the approach. (C) 2015 Elsevier Ltd. All rights reserved.
机译:在供应链网络设计(SCND)和订单分配问题(OAP)中,可持续性已被视为日益关注的问题。因此,在由OAP组成的可持续SCND定量建模中仍然存在差距。在本文中,我们通过同时考虑将可持续SCND中的可持续OAP视为一项战略决策来弥补这一差距。提议的供应链网络由五个梯队组成,其中包括分类为不同类别的供应商,工厂,通过两种方式(直接运输和跨码头)分配产品的配送中心,以满足从一组零售商处收到的随机需求。该问题已通过数学公式化表示为一个多目标优化模型,旨在同时最小化SCND和OAP集成的总成本和环境影响。为了解决这个问题,提出了一种新颖的多目标混合方法,称为MOHEV,该方法具有两种策略,分别是最佳粒子选择程序(BPSP),最小距离和拥挤距离。 MOHEV是通过将两种多目标算法(即自适应多目标电磁机制算法(AMOEMA)和自适应多目标变量邻域搜索(AMOVNS))混合而构建的。根据获得的结果,MOHEV与其他方法相比具有更好的解决方案,并且BPSP的拥挤距离方法优于最小距离。最后,以汽车行业为例,说明了该方法的适用性。 (C)2015 Elsevier Ltd.保留所有权利。

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