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Optimizing production smoothing decisions via batch selection for mixed-model just-in-time manufacturing systems with arbitrary setup and processing times

机译:通过批量选择为具有任意设置和处理时间的混合模型即时制造系统优化生产平滑决策

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This paper is concerned with the production smoothing problem that arises in the context of just-in-time manufacturing systems. The production smoothing problem can be solved by employing a two-phase solution methodology, where optimal batch sizes for the products and a sequence for these batches are specified in the first and second phases, respectively. In this paper, we focus on the problem of selecting optimal batch sizes for the products. We propose a dynamic programming (DP) algorithm for the exact solution of the problem. Our computational experiments demonstrate that the DP approach requires significant computational effort, rendering its use in a real environment impractical. We develop three meta-heuristics for the near-optimal solution of the problem, namely strategic oscillation, scatter search and path relinking. The efficiency and efficacy of the methods are tested via a computational study. The computational results show that the meta-heuristic methods considered in this paper provide near-optimal solutions for the problem within several minutes. In particular, the path relinking method can be used for the planning of mixed-model manufacturing systems in real time with its negligible computational requirement and high solution quality.
机译:本文关注的是在即时制造系统的背景下出现的生产平滑问题。可以通过采用两阶段解决方法来解决生产平滑问题,其中在第一阶段和第二阶段分别指定了产品的最佳批次大小和这些批次的顺序。在本文中,我们关注于为产品选择最佳批次大小的问题。我们为该问题的精确解决方案提出了一种动态规划(DP)算法。我们的计算实验表明,DP方法需要大量的计算工作,因此在实际环境中使用它是不切实际的。我们针对问题的最佳解决方案开发了三种元启发式方法,即战略振荡,分散搜索和路径重新链接。该方法的效率和功效通过计算研究进行了测试。计算结果表明,本文所考虑的元启发式方法可在几分钟内为问题提供最佳解决方案。特别是,路径重新链接方法可以忽略不计的计算需求和较高的解决方案质量,可用于混合模型制造系统的实时规划。

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