生产调度调度规则选择的高斯过程:学习技术的比较

B. Scholz-Reiter, Jens Heger, T. Hildebrandt
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引用次数: 16

摘要

具有调度规则的分散调度应用于物流和生产的许多领域,特别是半导体制造业,其特点是高复杂性和动态性。已经发现了许多调度规则,它们在不同的场景下表现良好,但是没有发现任何规则在不同的目标上表现优于其他规则。为了解决这一问题,提出了根据当前系统条件选择调度规则的方法。其中大多数使用学习技术在有关当前系统状态的规则之间切换。由于Rasmussen[1]的研究表明,高斯过程作为一种机器学习技术在某些条件下优于神经网络等其他技术,因此我们建议将其用于动态场景中调度规则的选择。我们的分析表明,高斯过程在这一领域的应用表现非常好。此外,我们还证明了高斯过程提供的预测质量可以成功地使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gaussian Processes for Dispatching Rule Selection in Production Scheduling: Comparison of Learning Techniques
Decentralized scheduling with dispatching rules is applied in many fields of logistics and production, especially in semiconductor manufacturing, which is characterized by high complexity and dynamics. Many dispatching rules have been found, which perform well on different scenarios, however no rule has been found, which outperforms other rules across various objectives. To tackle this drawback, approaches, which select dispatching rules depending on the current system conditions, have been proposed. Most of these use learning techniques to switch between rules regarding the current system status. Since the study of Rasmussen [1] has shown that Gaussian processes as a machine learning technique have outperformed other techniques like neural networks under certain conditions, we propose to use them for the selection of dispatching rules in dynamic scenarios. Our analysis has shown that Gaussian processes perform very well in this field of application. Additionally, we showed that the prediction quality Gaussian processes provide could be used successfully.
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