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Job Sequencing with One Common and Multiple Secondary Resources: A Problem Motivated from Particle Therapy for Cancer Treatment

机译:具有一个公共和多个辅助资源的作业排序:粒子疗法引发的癌症治疗问题

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We consider in this work the problem of scheduling a set of jobs without preemption, where each job requires two resources: (1) a common resource, shared by all jobs, is required during a part of the job's processing period, while (2) a secondary resource, which is shared with only a subset of the other jobs, is required during the job's whole processing period. This problem models, for example, the scheduling of patients during one day in a particle therapy facility for cancer treatment. First, we show that the tackled problem is NP-hard. We then present a construction heuristic and a novel A~* algorithm, both on the basis of an effective lower bound calculation. For comparison, we also model the problem as a mixed-integer linear program (MILP). An extensive experimental evaluation on three types of problem instances shows that A~* typically works extremely well, even in the context of large instances with up to 1000 jobs. When our A~* does not terminate with proven optimality, which might happen due to excessive memory requirements, it still returns an approximate solution with a usually small optimality gap. In contrast, solving the MILP model with the MILP solver CPLEX is not competitive except for very small problem instances.
机译:我们在这项工作中考虑了在不抢先的情况下调度一组作业的问题,其中每个作业需要两个资源:(1)在作业的处理期间的一部分需要由所有作业共享的公用资源,而(2)在作业的整个处理期间,仅需要与其他作业的子集共享的辅助资源。例如,此问题模拟了在粒子治疗设施中用于癌症治疗的一天中患者的安排。首先,我们表明解决的问题是NP难题。然后,我们在有效的下界计算的基础上,提出了一种构造启发式算法和一种新颖的A〜*算法。为了进行比较,我们还将问题建模为混合整数线性程序(MILP)。对三种类型的问题实例进行的广泛实验评估表明,即使在具有多达1000个工作的大型实例的情况下,A〜*通常也能很好地工作。当我们的A〜*没有以证明的最优性终止时(可能由于过多的内存需求而发生),它仍然返回通常具有较小最优性差距的近似解决方案。相比之下,使用MILP求解器CPLEX求解MILP模型并不具有竞争力,除了非常小的问题实例。

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