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Designing a sustainable supply chain network integrated with vehicle routing: A comparison of hybrid swarm intelligence metaheuristics

机译:设计与车辆路线整合的可持续供应链网络:混合群智能元启发式算法的比较

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Recently, a growing concern with sustainability has become a consideration in business operations. However, there is a lack of mathematical models that quantify environmental effects and, in particular, social impacts of supply chains because of the inherently subjective nature of these aspects. To fill this gap, this paper models a distribution network in which the triple bottom lines of sustainability are captured. Different impacts of the network on the stakeholders, including company owners, workers, consumers and society, are considered as whole. In the current model, a multi-product vehicle routing problem with time windows (MPVRPTW) as an operational decision is integrated with strategic decisions related to the network design. To solve this model, three hybrid swarm intelligence techniques (particle swarm optimization (PSO), electromagnetism mechanism algorithm (EMA), and artificial bee colony (ABC)) are proposed, and each is hybridized with variable neighborhood search (VNS) are proposed. Because metaheuristic methods are sensitive to input parameters, response surface methodology (RSM) with the multi-objective decision making (MODM) approach is applied for tuning the parameters. The proposed approaches are compared with the hybrid of genetic algorithm (GA) and VNS as the benchmark algorithm. A fair comparison is conducted by employing six metrics to evaluate the quality of the Pareto frontier obtained by the algorithms on the test problems. According to the results, the predominance of EMA is enhanced by VNS local search. (C) 2018 Elsevier Ltd. All rights reserved.
机译:最近,对可持续性的日益关注已成为企业运营中的考虑因素。但是,由于这些方面的内在主观性,因此缺乏数学模型来量化环境影响,尤其是供应链的社会影响。为了填补这一空白,本文对分销网络进行了建模,其中捕获了可持续性的三重底线。整个网络对利益相关者(包括公司所有者,工人,消费者和社会)的不同影响被视为一个整体。在当前模型中,将具有时间窗(MPVRPTW)作为操作决策的多产品车辆路由问题与与网络设计相关的战略决策集成在一起。为了解决该模型,提出了三种混合群智能技术(粒子群优化(PSO),电磁机制算法(EMA)和人工蜂群(ABC)),并分别与可变邻域搜索(VNS)混合。由于元启发式方法对输入参数敏感,因此采用具有多目标决策(MODM)方法的响应面方法(RSM)来调整参数。将提出的方法与遗传算法(GA)和VNS作为基准算法的混合进行了比较。通过采用六个指标来评估算法在测试问题上获得的帕累托边界的质量,从而进行公平的比较。根据结果​​,通过VNS本地搜索增强了EMA的优势。 (C)2018 Elsevier Ltd.保留所有权利。

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