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Multi-Objective Optimization for Multi-Product Multi-Period Four Echelon Supply Chain Problems Under Uncertainty

机译:不确定性下多产品多时段四梯队供应链问题的多目标优化

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The multi-objective optimization for a multi-product multi-period four-echelon supply chain network consisting of manufacturing plants, distribution centers (DCs) and retailers each with uncertain services and uncertain customer nodes are aimed in this paper. The two objectives are minimization of the total supply chain cost and maximization of the average number of products dispatched to customers. The decision variables are the number and the locations of reliable DCs and retailers, the optimum number of items produced by plants, the optimum quantity of transported products, the optimum inventory of products at DCs, retailers and plants, and the optimum shortage quantity of the customer nodes. The problem is first formulated into the framework of a constrained multi-objective mixed integer linear programming model. After that, the problem is solved by using meta-heuristic algorithms that are Multi-objective Genetic Algorithm (MOGA), Fast Non-dominated Sorting Genetic Algorithms (NSGA-II) and Epsilon Constraint Methods via the MATLAB software to select the best in terms of the total supply chain cost and the total expected number of products dispatched to customers simultaneously. At the end, the performance of the proposed multi-objective optimization model of multi-product multi-period four-echelon supply chain network design is validated through three realizations and an innumerable of various analyses in a real world case study of Bangladesh. The obtained outcomes and their analyses recognize the efficiency and applicability of the proposed model under uncertainty.
机译:本文针对包括制造工厂,分销中心(DCS)和零售商的多产品多时期四梯队供应链网络的多目标优化,包括不确定的服务和不确定的客户节点。这两个目标是最小化总供应链成本和最大化产品的平均产品数量的最大化。决策变量是可靠的DCS和零售商的数量和位置,植物产生的最佳项目数,运输产品的最佳数量,DCS,零售商和植物的产品最佳库存,以及最佳短缺量客户节点。首先将该问题制定为约束的多目标混合整数线性编程模型的框架。之后,通过使用多目标遗传算法(MOGA),快速非主导的分类遗传算法(NSGA-II)和epsilon约束方法通过MATLAB软件来解决问题,以便选择最佳的算法总供应链成本和同时向客户发送的预期产品总数。最后,通过三种实现和孟加拉国真实世界案例研究中的三种实现和无数各种分析验证了拟议的多产品多时期四梯队供应链网络设计的多目标优化模型的性能。获得的结果及其分析认识到拟议模型在不确定性下的效率和适用性。

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