Concept of a Machine Learning supported Cross-Machine Control Loop in the Ramp-Up of Large Series Manufacturing

Moritz Meiners, J. Franke
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引用次数: 1

Abstract

With the advancing digitalization of production plants, it becomes possible to use process data across machine boundaries. A machine can adapt its parameters to another machine-measured parameter to increase product quality. The present paper describes the design of an inter-machine control loop with machine learning techniques in order to improve the final quality output. The production ramp-up represents a special application case for this since at this point of time there is only limited knowledge about cause-effect relationships. For this purpose, the paper presents a method for analyzing these interrelations. On the one hand, simple linear regression is used to analyze the linear relationships; on the other hand, machine learning algorithms are used to analyze non-linear relationships. Two independent control loops form the overall control loop, which is capable of deriving holistic prognoses on upstream or downstream process effects.
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大型批量生产中支持机器学习的跨机器控制回路的概念
随着生产工厂数字化的推进,跨机器边界使用过程数据成为可能。一台机器可以使其参数适应另一台机器测量的参数,以提高产品质量。本文描述了一个机器间控制回路的设计与机器学习技术,以提高最终的质量输出。产量上升代表了一个特殊的应用案例,因为在这一点上,关于因果关系的知识是有限的。为此,本文提出了一种分析这些相互关系的方法。一方面,采用简单线性回归分析线性关系;另一方面,机器学习算法用于分析非线性关系。两个独立的控制回路构成整体控制回路,能够对上游或下游过程的影响进行整体预测。
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