Affiliation:
1. The KPA Group, Raanana 4365413, Israel
2. The Samuel Neaman Institute, Technion, Haifa 32000, Israel
Abstract
Developments in digital twins are driven by the availability of sensor technologies, big data, first principles knowledge, and advanced analytics. In this paper, we discuss these changes at a conceptual level, presenting a shift from nominal engineering, aiming at design optimisation, to performance engineering, aiming at adaptable monitoring diagnostic, prognostic, and prescriptive capabilities. A key element introduced here is the role of emulators in this transformation. Emulators, also called surrogate models or metamodels, provide monitoring and diagnostic capabilities. In particular, we focus on an optimisation goal combining optimised and robust performance derived from stochastic emulators. We demonstrate the methodology using two open-source examples and show how emulators can be used to complement finite element and computational fluid dynamic models in digital twin frameworks. The case studies consist of a mechanical system and a biological production process.
Reference32 articles.
1. The digital twin in Industry 4.0: A wide-angle perspective;Kenett;Qual. Reliab. Eng. Int.,2022
2. Virtual, Digital and Hybrid Twins: A New Paradigm in Data-Based Engineering and Engineered Data;Chinesta;Arch. Comput. Methods Eng.,2018
3. Development of an Operational Digital Twin of a Locomotive Parking Brake for Fault Diagnosis;Gabriel;Sci. Rep.,2023
4. Digital twin: Manufacturing excellence through virtual factory replication;Grieves;White Pap.,2014
5. Van der Valk, H., Haße, H., Möller, F., Arbter, M., Henning, J.L., and Otto, B. (2020, January 10–14). A Taxonomy of Digital Twins. Proceedings of the AMCIS, Virtual.