基于粒子群算法的作业车间调度规则演化超启发式算法

Su Nguyen, Mengjie Zhang
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引用次数: 9

摘要

自动化启发式作业车间调度设计是近十年来一个有趣而富有挑战性的研究课题。各种机器学习和优化技术,通常被称为超启发式,已被应用于促进设计任务。两种主要的方法是利用一般结构进行调度规则并对其参数进行优化,或者同时寻找合适的结构及其参数。每种方法都有自己的优点和缺点。在本文中,我们专注于第一种方法,并开发了新的表示,这些表示足够灵活,可以表示各种规则,并且足够强大,可以应对复杂的车间条件。提出的超启发式算法采用粒子群优化算法,根据表示找到最优规则。结果表明,与遗传规划的规则相比,新的规则表示对不同的车间条件是有效的,并且所得到的规则具有很强的竞争力。分析还表明,所提出的超启发式算法比基于遗传规划的超启发式算法要快得多。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A PSO-based hyper-heuristic for evolving dispatching rules in job shop scheduling
Automated heuristic design for job shop scheduling has been an interesting and challenging research topic in the last decade. Various machine learning and optimising techniques, usually referred to as hyper-heuristics, have been applied to facilitate the design task. Two main approaches are either to utilise a general structure for dispatching rules and optimise its parameters or to simultaneously search for suitable structures and their parameters. Each approach has its own advantages and disadvantages. In this paper, we focus on the first approach and develop new representations that are flexible enough to represent diverse rules and powerful enough to cope with complex shop conditions. Particle swarm optimisation is used in the proposed hyper-heuristic to find optimal rules based on the representations. The results suggest that the new representations are effective for different shop conditions and obtained rules are very competitive as compared to those evolved by genetic programming. Analyses also show that the proposed hyper-heuristic is significantly faster than genetic programming based hyper-heuristic.
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