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Optimization Methods for Large-Scale Production Scheduling Problems

机译:大规模生产计划问题的优化方法

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摘要

In this paper we present a computational study of optimization methods for production scheduling problems which can be described by a job shop model. Contrary to most existing publications in this field our research focuses on the performance of these methods with respect to large-scale problem instances. The examined methods rely on a graph model as a solution representation and have originally been designed for problems of small size. We apply them to a set of semi-randomly generated problem instances whose properties have been transferred from common (smaller) benchmarks. The experiments are based on tardiness minimization and the results are evaluated in relation to a priority rule based heuristic.
机译:在本文中,我们对生产调度问题的优化方法进行了计算研究,可以用车间模型来描述。与该领域中大多数现有出版物相反,我们的研究重点在于针对大型问题实例的这些方法的性能。所研究的方法依赖于图形模型作为解决方案表示,并且最初是针对小尺寸问题设计的。我们将它们应用于一组半随机生成的问题实例,这些实例的属性已从常见(较小)基准中转移。实验基于拖延最小化,并且相对于基于启发式优先级规则的评估结果。

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