Abstract

When, in 1956, Artificial Intelligence (AI) was officially declared a research field, no one would have ever predicted the huge influence and impact its description, prediction, and prescription capabilities were going to have on our daily lives. In parallel to continuous advances in AI, the past decade has seen the spread of broadband and ubiquitous connectivity, (embedded) sensors collecting descriptive high dimensional data, and improvements in big data processing techniques and cloud computing. The joint usage of such technologies has led to the creation of digital twins, artificial intelligent virtual replicas of physical systems. Digital Twin (DT) technology is nowadays being developed and commercialized to optimize several manufacturing and aviation processes, while in the healthcare and medicine fields this technology is still at its early development stage. This paper presents the results of a study focused on the analysis of the state-of-the-art definitions of DT, the investigation of the main characteristics that a DT should possess, and the exploration of the domains in which DT applications are currently being developed. The design implications derived from the study are then presented: they focus on socio-technical design aspects and DT lifecycle. Open issues and challenges that require to be addressed in the future are finally discussed.

Keywords

Computer scienceData scienceCloud computingField (mathematics)Big dataData mining

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Publication Info

Year
2019
Type
article
Volume
7
Pages
167653-167671
Citations
1225
Access
Closed

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Barbara Rita Barricelli, Elena Casiraghi, Daniela Fogli (2019). A Survey on Digital Twin: Definitions, Characteristics, Applications, and Design Implications. IEEE Access , 7 , 167653-167671. https://doi.org/10.1109/access.2019.2953499

Identifiers

DOI
10.1109/access.2019.2953499