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Combining Artificial Bee Colony With Ordinal Optimization for Stochastic Economic Lot Scheduling Problem

机译:结合人工蜂群和有序优化求解随机经济批次计划问题

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The stochastic economic lot scheduling problem (SELSP) considers the make-to-stock production of multiple standardized products on a single machine with limited capacity and set-up costs under random demands, random set-up times, and random production times. The SELSP is an NP-hard inventory problem. Current solutions for the SELSP can be classified as analytic or heuristic. In both approaches, however, the computation time needed to obtain an optimal solution is still unsatisfactory. In this paper, the SELSP is first formulated as a fixed-sequence base-stock (FSBS) system with quantity-limited lot-sizing policy. An algorithm combining artificial bee colony (ABC) approach and ordinal optimization (OO) theory, abbreviated as ABCOO, is then proposed to find a good enough base-stock level of the FSBS system using reasonable computation time. The proposed algorithm combines the advantage of multidirectional search in ABC with the advantage of goal softening in OO. Finally, the ABCOO algorithm is used to solve an SELSP involving 12 products and three queuing models. Test results obtained by the ABCOO algorithm are compared with four lot-sizing policies and three meta-heuristic methods. The base-stock level obtained by the ABCOO algorithm is excellent in terms of solution quality and computational efficiency. Furthermore, a time series forecasting technique is used to predict the variant demand rates needed to resolve time-lag problems of the ABCOO algorithm. Tests of the forecasting technique confirm that it considerably improves the performance and enables the proposed algorithm real-time applications.
机译:随机经济批量计划问题(SELSP)考虑在一台机器上按库存生产按库存生产的多个标准化产品,而这些产品的容量和设置成本有限,随机需求,随机设置时间和随机生产时间都是如此。 SELSP是NP难库存问题。 SELSP的当前解决方案可以分类为解析或启发式。但是,在两种方法中,获得最佳解决方案所需的计算时间仍然不能令人满意。本文首先将SELSP公式化为具有数量限制批量策略的固定序列基础库存(FSBS)系统。然后提出一种结合人工蜂群方法和序贯优化理论的算法,简称为ABCOO,以合理的计算时间找到FSBS系统足够好的基础种群水平。所提出的算法结合了ABC中多向搜索的优势和OO中目标软化的优势。最后,使用ABCOO算法求解包含12个乘积和3个排队模型的SELSP。将ABCOO算法获得的测试结果与四种批量策略和三种元启发式方法进行比较。通过ABCOO算法获得的基本库存水平在解决方案质量和计算效率方面非常出色。此外,时间序列预测技术用于预测解决ABCOO算法的时滞问题所需的变量需求率。预测技术的测试证实,它可以显着提高性能,并使所提出​​的算法能够实时应用。

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