Digital Twins of Manufacturing Systems as a Base for Machine Learning

Florian Jaensch, A. Csiszar, Christian Scheifele, A. Verl
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引用次数: 43

Abstract

In the engineering phase of modern manufacturing systems, simulation-based methods and tools have been established to face the increasing demands on time-efficiency and profitability. In the application of these simulation solutions, model-based digital twins are created, as multi-domain simulation models to describe the behavior of the manufacturing system. During the production process, a data-driven digital twin arises in the context of industry 4.0 based on an increasing networking and new cloud technologies. Recent developments in machine learning of fer new possibilities in conjunction with the digital twin. These range from data-based learning of models to learning control logic of complex systems. This paper proposes a combined model-based and data-driven concept of a digital twin. It shows how to use machine learning in connection with these models, in order to archive faster development times of manufacturing systems.
制造系统的数字孪生作为机器学习的基础
在现代制造系统的工程阶段,基于仿真的方法和工具已经建立,以面对日益增长的时间效率和盈利能力的要求。在这些仿真解决方案的应用中,创建了基于模型的数字孪生,作为描述制造系统行为的多域仿真模型。在生产过程中,在工业4.0的背景下,基于日益增长的网络和新的云技术,数据驱动的数字孪生出现了。机器学习的最新发展为数字孪生提供了新的可能性。这些范围从基于数据的模型学习到复杂系统的控制逻辑学习。本文提出了基于模型和数据驱动相结合的数字孪生概念。它展示了如何将机器学习与这些模型相结合,以加快制造系统的开发时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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