Online Parallel-Batch Scheduling of Learning Effect Jobs with Incompatible Job Families for Prefabricated Components

Na Li, Ran Ma
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Abstract

In the production scheduling of prefabricated components, we study an online [Formula: see text] parallel-batch machines scheduling model considering learning effect jobs with [Formula: see text] incompatible job families to minimize the makespan in this paper, where the capacity of batch is unbounded. Job families indicate that a job must belong to some job family and jobs of distinct job families are incapable to be executed in the same batch. The information of each job including its basic processing time [Formula: see text] and release time [Formula: see text] is unknown in advance and is revealed at the instant of its arrival. Moreover, the actual processing time of job [Formula: see text] with learning effect is [Formula: see text], where [Formula: see text] and [Formula: see text] are non-negative parameters and [Formula: see text] denotes the starting time of prefabricated job [Formula: see text], respectively. When [Formula: see text], we propose an online algorithm with a competitive ratio of [Formula: see text]. Furthermore, the performance of the online algorithm is demonstrated by numerical experiments.
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预制构件不兼容作业族学习效果作业的在线并行批调度
在预制件生产调度中,研究了考虑学习效应作业的在线[公式:见文]并行批机调度模型,该模型具有[公式:见文]不相容作业族,且批容量无界,以最小化完工时间。作业族是指作业必须属于某个作业族,不同作业族的作业不能在同一批中执行。每个作业的基本加工时间[公式:见文]和放行时间[公式:见文]等信息是事先未知的,在作业到达的那一刻才会显示出来。具有学习效果的作业[公式:见文]的实际加工时间为[公式:见文],其中[公式:见文]和[公式:见文]为非负参数,[公式:见文]分别为预制作业[公式:见文]的开始时间。当[公式:见文]时,我们提出了一个竞争比为[公式:见文]的在线算法。最后,通过数值实验验证了该算法的有效性。
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