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review article

A comprehensive review of digital twin - part 1: modeling and twinning enabling technologies

Thelen, Adam
•
Zhang, Xiaoge
•
Fink, Olga  
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December 1, 2022
Structural And Multidisciplinary Optimization

As an emerging technology in the era of Industry 4.0, digital twin is gaining unprecedented attention because of its promise to further optimize process design, quality control, health monitoring, decision and policy making, and more, by comprehensively modeling the physical world as a group of interconnected digital models. In a two-part series of papers, we examine the fundamental role of different modeling techniques, twinning enabling technologies, and uncertainty quantification and optimization methods commonly used in digital twins. This first paper presents a thorough literature review of digital twin trends across many disciplines currently pursuing this area of research. Then, digital twin modeling and twinning enabling technologies are further analyzed by classifying them into two main categories: physical-to-virtual, and virtual-to-physical, based on the direction in which data flows. Finally, this paper provides perspectives on the trajectory of digital twin technology over the next decade, and introduces a few emerging areas of research which will likely be of great use in future digital twin research. In part two of this review, the role of uncertainty quantification and optimization are discussed, a battery digital twin is demonstrated, and more perspectives on the future of digital twin are shared. Code and preprocessed data for generating all the results and figures presented in the battery digital twin case study in part 2 of this review are available on Github.

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Type
review article
DOI
10.1007/s00158-022-03425-4
Web of Science ID

WOS:000889558400002

Author(s)
Thelen, Adam
Zhang, Xiaoge
Fink, Olga  
Lu, Yan
Ghosh, Sayan
Youn, Byeng D.
Todd, Michael D.
Mahadevan, Sankaran
Hu, Chao
Hu, Zhen
Date Issued

2022-12-01

Publisher

SPRINGER

Published in
Structural And Multidisciplinary Optimization
Volume

65

Issue

12

Start page

354

Subjects

Computer Science, Interdisciplinary Applications

•

Engineering, Multidisciplinary

•

Mechanics

•

Computer Science

•

Engineering

•

digital twin

•

optimization

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machine learning

•

enabling technology

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perspective

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industry 4.0

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review

•

lithium-ion batteries

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extended kalman filter

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fault-diagnosis

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neural-network

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system-identification

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reliability-analysis

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bayesian network

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frequency-domain

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surrogate models

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narx models

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
IMOS  
Available on Infoscience
December 19, 2022
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/193407
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