2021
DOI: 10.3390/en14144235
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Digital Twin Concepts with Uncertainty for Nuclear Power Applications

Abstract: Digital Twins (DTs) are receiving considerable attention from multiple disciplines. Much of the literature at this time is dedicated to the conceptualization of digital twins, and associated enabling technologies and challenges. In this paper, we consider these propositions for the specific application of nuclear power. Our review finds that the current DT concepts are amenable to nuclear power systems, but benefit from some modifications and enhancements. Further, some areas of the existing modeling and simul… Show more

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Cited by 60 publications
(26 citation statements)
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“…Their interpretation more and more often requires the help of artificial intelligence for pattern recognition [142]. This approach contributes crucially to a thorough plant lifecycle assessment and resonates and connects with the digitalization trend in the nuclear (and not only) industry, which also involves the development of digital twins for the key plant components [143]. These are virtual copies that, by combining in situ data collection with either physical or data-driven computer simulation techniques and models (see Section 3.2), allow the behaviour of the component in operation, or under off-normal conditions, to be anticipated, thereby optimizing its functioning, while enabling timely interventions and, if needed, replacements, whenever required [144].…”
Section: General Materials-related Issues For Improved Circularity An...mentioning
confidence: 99%
“…Their interpretation more and more often requires the help of artificial intelligence for pattern recognition [142]. This approach contributes crucially to a thorough plant lifecycle assessment and resonates and connects with the digitalization trend in the nuclear (and not only) industry, which also involves the development of digital twins for the key plant components [143]. These are virtual copies that, by combining in situ data collection with either physical or data-driven computer simulation techniques and models (see Section 3.2), allow the behaviour of the component in operation, or under off-normal conditions, to be anticipated, thereby optimizing its functioning, while enabling timely interventions and, if needed, replacements, whenever required [144].…”
Section: General Materials-related Issues For Improved Circularity An...mentioning
confidence: 99%
“…The infrastructure, components and data flows required for the digital twin to enable Smart Assembly 4.0 are detailed and highlighted [95], [96] 2017 [118] 2022 Yongli Wei Shandong University…”
Section: Smart Assemblymentioning
confidence: 99%
“…Intelligent operation and maintenance of industrial equipment is an important part of Industry 4.0 [158]. Intelligent operation and maintenance has been penetrated into various fields with the development of information technology, such as intelligent power station [159], intelligent network [160], engineering vehicles [161], green buildings group [162], micro-grid technology [163], communication network [164], nuclear power [118,[165][166][167][168], alleviation photovoltaic [169], bridge maintenance [170].…”
Section: The Applicationsmentioning
confidence: 99%
“…The review article [51] focuses on uncertainty quantification (UQ) and software risk analysis of machine learning (ML) generated digital twin for the nearly autonomous management and control of nuclear power systems for prognostics and diagnostics supporting purposes. A more detailed discussion on digital twin concepts with uncertainty for nuclear power applications can be found in [47]. Additionally, the work [65] focuses on the development of technologies that enable digital-twinning efforts in nuclear proliferation detection.…”
Section: Introductionmentioning
confidence: 99%