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A tuned NSGA-II to optimize the total cost and service level for a just-in-time distribution network

机译:调谐的NSGA-II,以优化刚性分配网络的总成本和服务水平

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Distribution network planning has attracted the attention of many studies during last decades. Just-in-time (JIT) distribution has a key role in efficient delivery of products within distribution networks. In modeling of JIT distribution networks, the most frequently applied objectives are related to cost and service level. However, evaluating the impact of simultaneously minimizing total costs and balance between distribution network entities in different echelons still rarely complies with the current literature. To remedy this shortcoming and model reality more accurately, this paper develops a multi-objective mixed-integer nonlinear optimization model for a JIT distribution in three-echelon distribution network. The aims are minimization of total logistics cost along with maximization of capacity utilization balance for distribution centers and manufacturing plants. A non-dominated sorting genetic algorithm-II (NSGA-II) with three different mutation operators namely swap, reversion and insertion is employed to provide a set of near-optimal Pareto solutions. Then, the provided solutions are verified with non-dominated ranked genetic algorithm (NRGA) as well. The Taguchi method in design of experiments tunes the parameters of both algorithms, and their performances are then compared in terms of some multi-objective performance measures. In addition, a genetic algorithm is used to assess Pareto optimal solutions of NSGA-II. Different problems with different sizes are considered to compare the performance of the suggested algorithms. The results show that the proposed solution approach performs efficiently. Finally, the conclusion and some directions for future research are proposed.
机译:分销网络规划在过去几十年中引起了许多研究的注意。即时(JIT)分发在分销网络中有效地提供产品的关键作用。在JIT分发网络的建模中,最常用的目标与成本和服务水平有关。然而,评估同时最小化不同梯队分配网络实体之间的总成本和平衡的影响仍然很少符合目前的文献。为了更准确地解决这种缺点和模型现实,本文开发了三个梯队分布网络中的JIT分布的多目标混合整数非线性优化模型。目的是最大限度地减少总物流成本以及发行中心和制造工厂的能力利用平衡的最大化。采用具有三种不同突变算子的非主导分选遗传算法-II(NSGA-II)即交换,逆转和插入,以提供一组近最佳的Pareto溶液。然后,通过非主导的排名遗传算法(NRGA)验证提供的解决方案。实验设计中的Taguchi方法调整了两种算法的参数,然后在一些多目标性能措施方面进行比较它们的性能。此外,遗传算法用于评估NSGA-II的Pareto最佳溶液。考虑不同尺寸的不同问题,以比较建议算法的性能。结果表明,所提出的解决方案方法有效地执行。最后,提出了未来研究的结论和一些方向。

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