学习型工厂方法如何帮助提高对机器学习在生产计划和控制任务中的应用的理解。

Alexander Rokoss, K. Kramer, Matthias Schmidt
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引用次数: 1

摘要

技术进步和日益增长的数字化为生产公司提供了许多机会,但也不断向他们提出新的挑战。制造领域的过程自动化正在取得进展,技术支持系统,如人机协作,正在导致工作流程的重大变化。然而,在公司的其他领域,大部分工作仍然由人类完成。生产数据的使用在一定程度上就是这种情况。虽然许多数据已经被自动收集和分类,但对这些数据的最终评估,特别是决策往往是由人类完成的。特别是,对于无法根据条件编程明确做出的决策,情况就是如此。机器学习(ML)的使用代表了一种有前途的方法来自动做出如此复杂的决策。近年来科学出版物的急剧增加表明,越来越多的公司和机构正在研究在生产中使用机器学习的趋势。由于机器学习被应用于多个行业,因此机器学习领域技术工人的大量短缺必须在短期和中期通过培训和教育生产公司的现有员工来解决。建立处理制造业问题的能力的当代方法是使用学习型工厂作为知识转移的推动者。他们为学习者提供了在现实环境中尝试方法的机会,而不必担心对公司产生负面影响。参与者可以直接体验动作的结果,没有任何时间延迟,与传统的面对面教学相比,学习效果更好。本章展示了学习型工厂如何支持PPC领域的机器学习教学方法。为此目的,使用基于ml的方法来确定使用真实数据集的交货时间。同时,提取了各自任务所需的能力。在此基础上,设计了一个学习工厂的元素,简化了所考虑的过程,使学习者可以很容易地理解问题。本章的最后一部分描述了几个学习工厂游戏阶段,旨在教授识别的能力。所描述的学习工厂使参与者能够在制造环境中设置基于机器学习的项目。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
How a learning factory approach can help to increase the un- derstanding of the application of machine learning on produc- tion planning and control tasks.
Technological progress and increasing digitalization offer many opportunities to production companies, but also continually present them with new challenges. The automation of processes is progressing in manufacturing areas and technical support systems, such as human-robot collaboration, are leading to significant changes in workflows. However, in other areas of companies large parts of the work are still done by humans. This is partly the case with the use of production data. Although much data is already collected and sorted automatically, the final evaluation of this data and especially decision-making is often done by humans. In particular, this is the case for decisions that cannot clearly be made based on conditional programming. The use of machine learning (ML) represents a promising approach to make such complex decisions automatically. A sharp increase in scientific publications in the recent years demonstrates the trend that more and more companies and institutions are looking into the use of machine learning in production. Since ML is beeing applied across several industries, the resulting massive shortage of skilled workers in the field of ML has to be addressed in short and medium terms by training and educating existing employees in production companies. A contemporary approach to building competencies in dealing with problems in the manufacturing sector is the use of learning factories as a knowledge transfer enabler. They offer learners the opportunity to try out methods in a realistic environment without having to fear negative consequences for the company. The results of actions performed by participants can be experienced directly without any time delay, resulting in better learning results compared to conventional face-to-face teaching. This chapter shows how learning factories can support teaching machine learning methods in the field of PPC. For this purpose, the determination of lead times using real data sets is addressed with ML-based methods. Parallelly, the competencies required for the respective tasks were extracted. Based on this, elements of a learning factory were designed that simplifies the considered processes, so that the problem can be easily understood by learners. The last part of the chapter describes several learning factory game phases aiming on teaching the identified competencies. The described learning factory enables participants to setup ML-based projects in the context of manufacturing.
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