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Single-point stochastic search algorithms for the multi-level lot-sizing problem

机译:多级批量问题的单点随机搜索算法

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摘要

Among the most common decisions in manufacturing and distribution companies are probably those regarding Material Requirements Planning. However, that firms are daily confronted with these decisions does not mean they are easy to handle. The multi-level lot-sizing (MLLS) problem is a combinatorial optimization problem which can only be solved optimally within reasonable delays when small instances are considered. This has motivated the search for heuristic techniques achieving a satisfactory balance between computational demands and cost effectiveness. In particular, the MLLS problem has characteristic features thai have permitted the development of specific methods: interdependencies exist among stages in the product structure. In this paper, we examine the performance of single point stochastic techniques and compare them to several problem specific algorithms that exist in the literature. A large set of 280 variants of stochastic search algorithms is designed and applied to a variety of problems of small and large size. We find that these techniques, despite their simplicity and the widespread belief that they are generally efficient, only seldom outperform problem-specific algorithms, and when they do so it is usually associated with a much longer execution time. We also exhibit an efficient combination of search and annealing which is found able to produce significant and consistent improvements over problem-specific algorithms.
机译:在制造和分销公司中,最常见的决策可能是与物料需求计划有关的决策。但是,公司每天都要面对这些决定并不意味着它们易于处理。多级批量大小(MLLS)问题是组合优化问题,当考虑小实例时,只能在合理的延迟内最佳地解决。这激发了寻求启发式技术以在计算需求和成本效益之间取得令人满意的平衡的动机。特别是,MLLS问题具有允许开发特定方法的特征:在产品结构的各个阶段之间存在相互依赖性。在本文中,我们检查了单点随机技术的性能,并将其与文献中存在的几种特定于问题的算法进行比较。设计了280种随机搜索算法的变体,并将其应用于各种大小问题。我们发现,尽管这些技术简单易行,并且普遍认为它们通常是有效的,但它们的性能很少优于特定于问题的算法,而在这样做时,通常需要更长的执行时间。我们还展示了搜索和退火的有效组合,发现该组合能够比特定问题的算法产生显着且一致的改进。

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