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Optimizing a bi-objective inventory model for a two-echelon supply chain management using a tuned meta-heuristic algorithm

机译:使用调整后的元启发式算法优化两级供应链管理的双目标库存模型

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Since vendor-managed inventory strategy plays an important role to reduce total inventory costs, the focus of this paper is to develop an economic order quantity model presented for a two-echelon supply chain management including one vendor and one retailer. In this bi-objective model, the vendor delivers several products to the retailer while shortages are allowed. The aim of this paper is to determine order sizes and maximum backorder levels for each product to simultaneously minimize total inventory costs and a storage space. Moreover, two main constraints, namely budget and the number of orders, are considered to simulate real-world operating conditions for the proposed model. Since the presented model belongs to integer non-linear programming problems, a meta-heuristic algorithm, particle swarm optimization (PSO), is employed to optimize it. In addition, because the quality of solutions depends on the values of parameters of meta-heuristics, the parameters of PSO are tuned using the Taguchi method. Then, the proposed algorithm is compared to branch and bound method.
机译:由于供应商管理的库存策略在降低总库存成本中起着重要作用,因此本文的重点是开发一种经济订单数量模型,该模型针对两级供应链管理(包括一个卖方和一个零售商)提出。在这种双目标模型中,卖方在允许短缺的情况下向零售商提供了几种产品。本文的目的是确定每种产品的订单大小和最大延期交货水平,以同时最小化总库存成本和存储空间。此外,考虑了两个主要约束条件,即预算和订单数量,以模拟所建议模型的实际操作条件。由于所提出的模型属于整数非线性规划问题,因此采用元启发式算法粒子群优化(PSO)对其进行优化。另外,由于解决方案的质量取决于元启发式方法的参数值,因此使用Taguchi方法调整PSO的参数。然后,将该算法与分支定界法进行了比较。

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