Enhancing Cognition for Digital Twins

Pavlos Eirinakis, K. Kalaboukas, Stavros Lounis, I. Mourtos, Jože M. Rožanec, Nenad Stojanovic, G. Zois
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引用次数: 22

Abstract

In the era of Industry 4.0, Digital Twins (DTs) pave the way for the creation of the Cognitive Factory. By virtualizing and twinning information stemming from the real and the digital world, it is now possible to connect all parts of the production process by having virtual copies of physical elements interacting with each other in the digital and physical realms. However, this alone does not imply cognition. Cognition requires modelling not only the physical characteristics but also the behavior of production elements and processes. The latter can be founded upon data-driven models produced via Data Analytics and Machine Learning techniques, giving rise to the so-called Cognitive (Digital) Twin. To further enable the Cognitive Factory, a novel concept, dubbed as Enhanced Cognitive Twin (ECT), is proposed in this paper as a way to introduce advanced cognitive capabilities to the DT artefact that enable supporting decisions, with the end goal to enable DTs to react to inner or outer stimuli. The Enhanced Cognitive Twin can be deployed at different hierarchical levels of the production process, i.e., at sensor-, machine-, process-, employee- or even factory-level, aggregated to allow both horizontal and vertical interplay. The ECT notion is proposed in the context of process industries, where cognition is particularly important due to the continuous, non-linear, and varied nature of the respective production processes.
增强对数字孪生的认知
在工业4.0时代,数字孪生(DTs)为认知工厂的创建铺平了道路。通过对来自真实世界和数字世界的信息进行虚拟化和孪生,现在可以通过在数字和物理领域中相互作用的物理元素的虚拟副本来连接生产过程的所有部分。然而,这并不意味着认知。认知不仅需要建模物理特征,而且需要建模生产要素和过程的行为。后者可以建立在通过数据分析和机器学习技术产生的数据驱动模型上,从而产生所谓的认知(数字)双胞胎。为了进一步实现认知工厂,本文提出了一个新概念,称为增强认知孪生(ECT),作为将高级认知能力引入DT人工产物的一种方式,使DT能够支持决策,最终目标是使DT能够对内部或外部刺激做出反应。增强型认知孪生体可以部署在生产过程的不同层次上,即传感器、机器、过程、员工甚至工厂级别,聚合起来允许水平和垂直的相互作用。ECT概念是在过程工业的背景下提出的,在过程工业中,由于各自生产过程的连续性、非线性和多样性,认知尤为重要。
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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