基于蚁群优化的半导体生产线调度方法

Wuzhao Li, Weian Guo, Lei Wang, Xingjuan Cai
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引用次数: 2

摘要

众所周知,半导体制造是最复杂的制造过程之一。它可以看作是一个作业车间调度问题(Job shop Scheduling Problem, JSP),属于np完全问题。在这类问题中,由于任务之间存在更大的搜索空间和更多的约束,目标和资源的结合会使复杂性呈指数级增长。蚁群优化是一种有效的肉启发式算法,可以用来寻找最优解。本文采用蚁群算法求解半导体生产线的调度问题。结果表明,蚁群算法的性能优于其他一些已知算法,可以很好地解决问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A scheduling method in semiconductor manufacturing lines based on ant colony optimization
As is well known, the semiconductor manufacturing is one of the most complicated manufacturing processes. It can be considered as a Job shop Scheduling Problem(JSP), which is classified NP-complete problem. In this kind of problem, the combination of goals and resources can exponential increase the complexity, because a much larger searching space and more constrains exist among tasks. Ant colony optimization, as an effective meat-heuristic technique, can be adopted to find a optimized solution. In this paper, the scheduling problem of semiconductor manufacturing lines is solved by adopting ant colony optimization. The result shows that ACO performs better than some other well known algorithms and the problem can be well solved by ACO.
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