Industrial digitalization in the industry 4.0 era: Classification, reuse and authoring of digital models on Digital Twin platforms

Valentina Zambrano, Johannes Mueller-Roemer, Michael Sandberg, Prasad Talasila, Davide Zanin, Peter Gorm Larsen, Elke Loeschner, Wolfgang Thronicke, Dario Pietraroia, Giuseppe Landolfi, Alessandro Fontana, Manuel Laspalas, Jibinraj Antony, Valerie Poser, Tamas Kiss, Simon Bergweiler, Sebastian Pena Serna, Salvador Izquierdo, Ismael Viejo, Asier Juan, Francisco Serrano, André Stork

In: Array 14 Page 100176 Elsevier 7/2022.


Digital Twins (DTs) are real-time digital models that allow for self-diagnosis, self-optimization and self-configuration without the need for human input or intervention. While DTs are a central aspect of the ongoing fourth industrial revolution (I4.0), this leap forward may be reserved for the established, large-cap companies since the adoption of digital technologies among Small and Medium-size Enterprises (SMEs) is still modest. The aim of the H2020 European Project DIGITbrain is to support a modular construction of DTs by reusing their fundamental building blocks, i.e., the Models that describe the behavior of the DT, their associated Algorithms and the Data required for the evaluation. By offering these building blocks as a service via a DT Platform (a Digital Twin Environment), the technical barriers among SMEs to adopt these technologies are lowered. This paper describes how digital models can be classified, reused and authored on such DT Platforms. Through experimental analyses of three industrial cases, the paper exemplifies how DTs are employed in relation to product assembly of agricultural robots, polymer injection molding, as well as laser-cutting and sheet-metal forming of aluminum.


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German Research Center for Artificial Intelligence
Deutsches Forschungszentrum für Künstliche Intelligenz