首页> 外文会议>International Symposium on Stochastic Algorithms: Foundations and Applications(SAGA 2005); 20051020-22; Moscow(RU) >Solving a Dynamic Cell Formation Problem with Machine Cost and Alternative Process Plan by Memetic Algorithms
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Solving a Dynamic Cell Formation Problem with Machine Cost and Alternative Process Plan by Memetic Algorithms

机译:用模因算法解决带有机器成本和替代工艺计划的动态单元形成问题

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In this paper, we present a new model of a cell formation problem (CFP) for a multi-period planning horizon where the product mix and demand are different in each period, but they are deterministic. As a consequence, the formed cells in the current period may be not optimal for the next period. This evolution results from reformulation of part families, manufacturing cells, and reconfiguration of the CFP as required. Reconfiguration consists of reforming part families, machine groups, and machine relocations. The objective of the model is to determine the optimal number of cells while minimizing the machine amortization/relocation costs as well as the inter-cell movements in each period. In the proposed model, parts have alternative process plans, operation sequence, and produce as batch. The machine capacity is also limited and machine duplication is allowed. The proposed model for real-world instances cannot be solved optimally within a reasonable amount of computational time. Thus, we propose an efficient memetic algorithm (MA) with a simulated annealing-based local search engine for solving the proposed model. This model is solved optimally by the Lingo software then the optimal solution is compared with the MA implementation.
机译:在本文中,我们提出了一个新的模型,该模型适用于多阶段规划阶段,其中产品组合和需求在每个时期都不相同,但是它们是确定性的。结果,当前周期中形成的单元对于下一周期可能不是最佳的。这种演变是由于零件族,制造单元的重新配方以及根据需要重新配置CFP所致。重新配置包括重整零件族,机器组和机器重定位。该模型的目的是确定最佳的单元数量,同时最大程度地减少机器摊销/搬迁成本以及每个周期中的单元间移动。在建议的模型中,零件具有替代的工艺计划,操作顺序和成批生产。机器容量也受到限制,并且允许复制机器。不能在合理的计算时间内优化求解实际实例的模型。因此,我们提出了一种基于模拟退火的本地搜索引擎的有效模因算法(MA),用于求解所提出的模型。该模型由Lingo软件进行最佳求解,然后将最佳解决方案与MA实现进行比较。

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