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Near-optimal solutions of large-scale single-machine scheduling problems

机译:大规模单机调度问题的近似最优解

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The single-machine scheduling problem (SMSP) with release dates concerns the optimal allocation of a set of jobs on a single machine that is not able to process more than one job at a time. Each job is ready to be processed at a release date and without interruption. The goal is to minimize the total weighted completion time of the jobs. In this paper the time-indexed formulation is considered and a new lagrangean heuristic is proposed, based on the observation that lagrangean relaxation of job constraints leads to a weighted stable set problem on an interval graph. The relaxed problem is polynomially solvable by a dynamic-programming algorithm. We report computational experience, showing that instances up to 400 jobs and maximum processing time 50 (around 5,000,000 variables) are solved in less than 40 minutes on a personal computer, yielding duality gaps never exceeding 3%. We also test a set of hard instances, built to produce bad performances where we yield duality gaps less than 5%.
机译:具有发布日期的单机调度问题(SMSP)与在一台不能一次处理多个作业的机器上优化一组作业有关。每个作业已准备好在发布日期进行处理,并且不会中断。目标是最大程度地减少作业的总加权完成时间。基于工作约束的拉格朗日松弛导致区间图上的加权稳定集问题的观察,本文考虑了时间索引公式并提出了一种新的拉格朗日启发式算法。松弛的问题可以通过动态编程算法多项式解决。我们报告了计算经验,表明在个人计算机上用不到40分钟即可解决多达400个作业和最多50个处理时间(大约5,000,000个变量)的实例,产生的对偶差距从未超过3%。我们还测试了一组硬实例,这些硬实例被构建为产生差的性能,而我们产生的对偶差距小于5%。

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