Minimizing total tardiness in a two-machine flowshop with uncertain and bounded processing times

Muberra Allahverdi
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Abstract

The two-machine flowshop scheduling problem with the performance measure of total tardiness is addressed. This performance measure is essential since meeting deadlines is a crucial part of scheduling and a major concern for some manufacturing systems. The processing times on both machines are uncertain variables and within some lower and upper bounds. This is due to uncertainty being an integral part of some manufacturing settings, making it impossible to predict processing times in advance. To the best of the author’s knowledge, this problem is addressed for the first time in this paper. A dominance relation is established and nineteen algorithms, which incorporate the established dominance relation, are presented. These algorithms are extensively evaluated through randomly generated data for different numbers of jobs and four different distributions, representing both symmetric and non-symmetric distributions. Computational experiments show that the presented algorithms perform extremely well when compared with a random solution. In particular, the best of the considered 19 algorithms reduces the error of the random solution by 99.99% and the error of the worst algorithm (among the 19 algorithms) by 99.96%. The results are confirmed by a test of hypothesis and this algorithm is recommended.
在具有不确定和有限加工时间的双机流程车间中最小化总延迟
研究了以总延迟为性能指标的双机流水车间调度问题。这种性能度量是必要的,因为满足最后期限是调度的关键部分,也是一些制造系统的主要关注点。两台机器上的处理时间都是不确定的变量,并且在一些上下边界内。这是由于不确定性是某些制造设置的组成部分,使得无法提前预测加工时间。据作者所知,这是本文第一次讨论这个问题。建立了一种优势关系,并给出了19种结合优势关系的算法。这些算法通过随机生成的数据对不同数量的作业和四种不同的分布(代表对称和非对称分布)进行了广泛的评估。计算实验表明,与随机解相比,所提出的算法性能非常好。其中,19种算法中最好的算法将随机解的误差降低了99.99%,最差的算法(19种算法中)的误差降低了99.96%。通过假设检验验证了结果,并推荐了该算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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