The Digital Twin (DT) is one of the most promising technologies in the digital transformation market. A digital twin is a virtual copy of a physical system that emulates its behaviour to predict failures and opportunities for change, prescribe actions in real-time, and optimise and/or mitigate unexpected events. Modelling the virtual copy of a physical system is a rather complex task and requires the availability of a large amount of information and a set of accurate models that adequately represent the reality to model. At present, the modelling depends on the specific use case. Hence, the need to design a modelling solution suitable for virtual reality modelling in the context of a digital twin. The paper proposes a new approach to design a DT by endeavouring the concept of "modelling patterns" and their invariance property. Modelling patterns are here thought of as data-driven, as they can be derived autonomously from data using a specific approach devised to reach an invariance feature, to allow these to be used (and re-used) in modelling situations and/or problems with any given degree of similarity. The potentialities of invariance modelling patterns are proved here by the grace of a real industrial application, where a dedicated DT has been built using the approach proposed here.

Data-driven invariant modelling patterns for digital twin design / Semeraro, Concetta; Lezoche, Mario; Panetto, Herve; Dassisti, Michele. - In: JOURNAL OF INDUSTRIAL INFORMATION INTEGRATION. - ISSN 2452-414X. - STAMPA. - 31:(2023). [10.1016/j.jii.2022.100424]

Data-driven invariant modelling patterns for digital twin design

Dassisti, Michele
Conceptualization
2023

Abstract

The Digital Twin (DT) is one of the most promising technologies in the digital transformation market. A digital twin is a virtual copy of a physical system that emulates its behaviour to predict failures and opportunities for change, prescribe actions in real-time, and optimise and/or mitigate unexpected events. Modelling the virtual copy of a physical system is a rather complex task and requires the availability of a large amount of information and a set of accurate models that adequately represent the reality to model. At present, the modelling depends on the specific use case. Hence, the need to design a modelling solution suitable for virtual reality modelling in the context of a digital twin. The paper proposes a new approach to design a DT by endeavouring the concept of "modelling patterns" and their invariance property. Modelling patterns are here thought of as data-driven, as they can be derived autonomously from data using a specific approach devised to reach an invariance feature, to allow these to be used (and re-used) in modelling situations and/or problems with any given degree of similarity. The potentialities of invariance modelling patterns are proved here by the grace of a real industrial application, where a dedicated DT has been built using the approach proposed here.
2023
Data-driven invariant modelling patterns for digital twin design / Semeraro, Concetta; Lezoche, Mario; Panetto, Herve; Dassisti, Michele. - In: JOURNAL OF INDUSTRIAL INFORMATION INTEGRATION. - ISSN 2452-414X. - STAMPA. - 31:(2023). [10.1016/j.jii.2022.100424]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11589/257140
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