A Computer Science Perspective on Digital Transformation in Production

IF 3.5 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
P. Brauner, M. Dalibor, M. Jarke, Ike Kunze, I. Koren, G. Lakemeyer, M. Liebenberg, Judith Michael, J. Pennekamp, C. Quix, Bernhard Rumpe, Wil M.P. van der Aalst, Klaus Wehrle, A. Wortmann, M. Ziefle
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引用次数: 37

Abstract

The Industrial Internet-of-Things (IIoT) promises significant improvements for the manufacturing industry by facilitating the integration of manufacturing systems by Digital Twins. However, ecological and economic demands also require a cross-domain linkage of multiple scientific perspectives from material sciences, engineering, operations, business, and ergonomics, as optimization opportunities can be derived from any of these perspectives. To extend the IIoT to a true Internet of Production, two concepts are required: first, a complex, interrelated network of Digital Shadows which combine domain-specific models with data-driven AI methods; and second, the integration of a large number of research labs, engineering, and production sites as a World Wide Lab which offers controlled exchange of selected, innovation-relevant data even across company boundaries. In this article, we define the underlying Computer Science challenges implied by these novel concepts in four layers: Smart human interfaces provide access to information that has been generated by model-integrated AI. Given the large variety of manufacturing data, new data modeling techniques should enable efficient management of Digital Shadows, which is supported by an interconnected infrastructure. Based on a detailed analysis of these challenges, we derive a systematized research roadmap to make the vision of the Internet of Production a reality.
从计算机科学的角度看生产中的数字化转型
工业物联网(IIoT)通过促进数字孪生制造系统的集成,有望为制造业带来重大改善。然而,生态和经济需求也需要材料科学、工程、运营、商业和人体工程学等多个科学观点的跨领域联系,因为优化机会可以从这些观点中得到。要将工业物联网扩展到真正的生产互联网,需要两个概念:首先,一个复杂的、相互关联的数字阴影网络,将特定领域的模型与数据驱动的人工智能方法相结合;第二,将大量的研究实验室、工程和生产基地整合为一个世界范围的实验室,提供选定的、与创新相关的数据的受控交换,甚至跨越公司边界。在本文中,我们从四个层面定义了这些新概念所隐含的潜在计算机科学挑战:智能人机界面提供对由模型集成人工智能生成的信息的访问。鉴于制造数据的多样性,新的数据建模技术应该能够有效地管理数字阴影,这是由互联基础设施支持的。在对这些挑战进行详细分析的基础上,我们得出了一个系统化的研究路线图,以使生产互联网的愿景成为现实。
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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来源期刊
CiteScore
5.20
自引率
3.70%
发文量
0
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