Digital Twin Meets Knowledge Graph for Intelligent Manufacturing Processes

Author:

Stavropoulou Georgia1ORCID,Tsitseklis Konstantinos1ORCID,Mavraidi Lydia1ORCID,Chang Kuo-I2ORCID,Zafeiropoulos Anastasios1ORCID,Karyotis Vasileios3ORCID,Papavassiliou Symeon1ORCID

Affiliation:

1. School of Electrical and Computer Engineering, National Technical University of Athens, 157 80 Athens, Greece

2. Fraunhofer Institute for Mechanics of Materials IWM, 79108 Freiburg, Germany

3. Department of Informatics, Ionian University, 491 00 Corfu, Greece

Abstract

In the highly competitive field of material manufacturing, stakeholders strive for the increased quality of the end products, reduced cost of operation, and the timely completion of their business processes. Digital twin (DT) technologies are considered major enablers that can be deployed to assist the development and effective provision of manufacturing processes. Additionally, knowledge graphs (KG) have emerged as efficient tools in the industrial domain and are able to efficiently represent data from various disciplines in a structured manner while also supporting advanced analytics. This paper proposes a solution that integrates a KG and DTs. Through this synergy, we aimed to develop highly autonomous and flexible DTs that utilize the semantic knowledge stored in the KG to better support advanced functionalities. The developed KG stores information about materials and their properties and details about the processes in which they are involved, following a flexible schema that is not domain specific. The DT comprises smaller Virtual Objects (VOs), each one acting as an abstraction of a single step of the Industrial Business Process (IBP), providing the necessary functionalities that simulate the corresponding real-world process. By executing appropriate queries to the KG, the DT can orchestrate the operation of the VOs and their physical counterparts and configure their parameters accordingly, in this way increasing its self-awareness. In this article, the architecture of such a solution is presented and its application in a real laser glass bending process is showcased.

Funder

European Union’s Horizon Europe research and innovation programme under the project DiMAT

Publisher

MDPI AG

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