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A fuzzy bi-objective mixed-integer programming method for solving supply chain network design problems under ambiguous and vague conditions

机译:含糊不清条件下解决供应链网络设计问题的模糊双目标混合整数规划方法

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Supply chain (SC) network design problems are complex problems with multi-layer levels and dynamic relationships which involve a considerable amount of uncertainty concerning customer demand, facility capacity, or lead times, among others. A large number of optimization methods (i.e., fuzzy mathematical programming, stochastic programming, and interval mathematical programming) have been proposed to cope with the uncertainties in SC network design problems. We propose a fuzzy bi-objective mixed-integer linear programming (MILP) model to enhance the material flow in dual-channel, multi-item, and multi-objective SCs with multiple echelons under both ambiguous and vague conditions, concurrently. We use a computationally efficient ranking method to resolve the ambiguity of the parameters and propose two methods for resolving the vagueness of the objective functions in the proposed fuzzy MILP model. The preferences of the decision makers (DMs) on the priority of the fuzzy goals are represented with crisp importance weights in the first method and fuzzy preference relations in the second method. The fuzzy preference relations in the second method present a unique practical application of type-II fuzzy sets. The performance of the two methods is compared using comprehensive statistical analysis. The results show the perspicuous dominance of the method which uses fuzzy preference relations (i.e., type-II fuzzy sets). We present a case study in the food industry to demonstrate the applicability of the proposed model and exhibit the efficacy of the procedures and algorithms. To the best of our knowledge, a concurrent interpretation of both ambiguous and vague uncertainties, which is applicable to many real-life problems, is novel and has not been reported in the literature.
机译:供应链(SC)网络设计问题是具有多层级别和动态关系的复杂问题,其中涉及与客户需求,设施容量或交货时间有关的大量不确定性。为了应对SC网络设计问题的不确定性,已经提出了许多优化方法(即,模糊数学规划,随机规划和区间数学规划)。我们提出了模糊双目标混合整数线性规划(MILP)模型,以在模棱两可和模糊的条件下同时增强具有多个梯级的双通道,多项目和多目标SC中的物料流。我们使用计算效率高的排序方法来解决参数的歧义,并提出了两种方法来解决所提出的模糊MILP模型中目标函数的模糊性。决策者(DM)对模糊目标优先级的偏好在第一种方法中以清晰的重要性权重表示,在第二种方法中以模糊偏好关系表示。第二种方法中的模糊偏好关系提出了II型模糊集的独特实际应用。使用综合统计分析比较这两种方法的性能。结果显示了使用模糊偏好关系(即II型模糊集)的方法的明显优势。我们目前在食品行业的案例研究,以证明所提出的模型的适用性,并展示了程序和算法的功效。据我们所知,对模棱两可和不确定性的不确定性的同时解释适用于许多现实生活中的问题,这是新颖的,而且尚未在文献中报道。

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