2019
DOI: 10.1109/access.2019.2953499
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A Survey on Digital Twin: Definitions, Characteristics, Applications, and Design Implications

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 u… Show more

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Cited by 904 publications
(550 citation statements)
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References 90 publications
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“…Thanks to seamless connection and continuous interaction with their PT and with the external environment, DTs are able to continuously simulate the conditions of the PT. Simultaneously, they analyze the received data, which describes both the PT's condition and the external environment, in order to predict future statuses and trigger optimizing and/or preventive actions in case of predicted failures [1], [4].…”
Section: Research Background a Literature Review 1) Digital Twinmentioning
confidence: 99%
See 1 more Smart Citation
“…Thanks to seamless connection and continuous interaction with their PT and with the external environment, DTs are able to continuously simulate the conditions of the PT. Simultaneously, they analyze the received data, which describes both the PT's condition and the external environment, in order to predict future statuses and trigger optimizing and/or preventive actions in case of predicted failures [1], [4].…”
Section: Research Background a Literature Review 1) Digital Twinmentioning
confidence: 99%
“…The success of DT technology in manufacturing, documented in the extensive survey reported in [4], has motivated several studies aimed at extending it to humans, by designing human DTs, that is computer models of humans tailored to any patient to allow researchers and clinicians to monitor the patient's health, for providing and test treatment protocols [4]. Human DTs differ from DTs developed and used in Industry 4.0 [5] because they are not continuously connected to their physical twin.…”
Section: Introductionmentioning
confidence: 99%
“…Up to our current knowledge, the scientific literature does not provide a unique nor standardized definition of the Digital Twin (DT). As explained in a recent survey on the DT topic concept [3], there are works that define it as a virtual entity that can be substituted to the actual system in order to perform (at least some of) its tasks. In other works, a DT is described as a digital representation of a system for observation and prediction purposes mostly.…”
Section: A Multi-paradigm Modeling Approachmentioning
confidence: 99%
“…One major barrier to the employment of DTs is the process for building or implementing them is a very use‐case–specific endeavor, so exploration of the academic literature yields very few resources that provide interested stakeholders with a repeatable and generalizable process or strategy for employment. DTs in the literature often cover systems that are already in their operations and maintenance phase, so the development is entirely an after‐deployment consideration 27 . This ad hoc nature presents engineers and data scientists with challenges in the lack of a common process for defining requirements for the DT, an unclear path for development, and a steep learning curve for the early stages of implementation.…”
Section: Introductionmentioning
confidence: 99%