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Part of the book series: Studies in Computational Intelligence ((SCI,volume 1034))

Abstract

Modelling and real-time control methods continue to face major challenges like the lack of models capable of accurately replicating the physical systems while integrating real-time manufacturing data. In this context, the digital twin has widely emerged to address this challenge to connect the physical and digital worlds. The interdependent combination of digital model and physical assets must be harmonized with one another to work efficiently. For this reason, the virtual model needs to be thoroughly evaluated and validated before implementing it in the general framework. In this paper, we discuss the different modelling methods for the virtual model and the various approaches to validate its use in literature.

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Correspondence to Olivier Cardin .

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Abdoune, F., Cardin, O., Nouiri, M., Castagna, P. (2022). About Perfection of Digital Twin Models. In: Borangiu, T., Trentesaux, D., Leitão, P., Cardin, O., Joblot, L. (eds) Service Oriented, Holonic and Multi-agent Manufacturing Systems for Industry of the Future. SOHOMA 2021. Studies in Computational Intelligence, vol 1034. Springer, Cham. https://doi.org/10.1007/978-3-030-99108-1_7

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