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Using distributed search methods for balancing mixed-model assembly lines in the automotive industry

机译:使用分布式搜索方法来平衡汽车行业的混合模型装配线

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摘要

Currently, modern companywide PC networks usually possess significant unused calculation capacity. Since the connected personal computers are mainly used for office applications, considerable off-peak times occur. Consequently, in order to solve planning problems more efficiently, it is promising to apply distributed search procedures that make use of those available off-peak times. This applies in particular to complex problems where insights into the structure of the solution space are lacking. The paper at hand illustrates the application of distributed search methods to automotive assembly line balancing. Modern mass customization programs in the automotive industry frequently comprise more than a billion theoretical variants. Since this causes an oscillating capacity demand at the line, deliberately designing the layout of a mixed-model assembly line is of significant importance. The paper at hand provides a new mixed-model assembly line balancing approach that integrates specific aspects relevant for the automotive industry. However, by integrating several NP{{mathcal NP}} -hard subproblems like a detailed personnel planning or a flexible process planning of each task, the resulting model has significant complexity. Consequently, in order to find appropriate line layouts in reasonable time, specifically designed distributed solution approaches are provided and evaluated. Among these approaches, particularly the use of a specific clustered Tabu Search algorithm attains promising results. By making use of an adaptive dynamic load balancer, substantial improvements of the solution quality can be obtained even under unfavorable circumstances like oscillating background loads in the PC network.
机译:当前,现代公司范围内的PC网络通常具有相当大的未使用计算能力。由于连接的个人计算机主要用于办公应用,因此会出现大量的非高峰时间。因此,为了更有效地解决计划问题,有希望应用利用那些非高峰时间的分布式搜索程序。这尤其适用于缺乏对解决方案空间结构的见解的复杂问题。本文说明了分布式搜索方法在汽车装配线平衡中的应用。汽车行业中的现代大规模定制计划经常包含超过十亿个理论变体。由于这会引起生产线上振荡的容量需求,因此有意设计混合模型装配线的布局非常重要。本文提供了一种新的混合模型装配线平衡方法,该方法集成了与汽车行业相关的特定方面。但是,通过集成几个NP {{mathcal NP}}-困难的子问题(例如详细的人员计划或每个任务的灵活流程计划),所得模型将具有极大的复杂性。因此,为了在合理的时间内找到合适的生产线布局,提供并评估了专门设计的分布式解决方案。在这些方法中,特别是使用特定的聚类禁忌搜索算法可获得可喜的结果。通过使用自适应动态负载平衡器,即使在不利的情况下(例如在PC网络中振荡背景负载),也可以获得解决方案质量的显着改善。

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