Challenges of Digital Twin System
Today’s manufacturing and assembly systems have to be flexible to adapt quickly to an increasing number and variety of products. The Industry 4.0 conceptualization has several potentials, i.e. flexibility in business and manufacturing processes, where the intelligent and interconnected systems, in p...
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Széchenyi István University
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doaj-9a9f1c9d33b341f1acd9655cef145e582020-11-25T03:25:49ZengSzéchenyi István UniversityActa Technica Jaurinensis2064-52282019-08-0112325226710.14513/actatechjaur.v12.n3.514514Challenges of Digital Twin SystemCristina Rosaria Monsone0János Jósvai1Széchenyi Istvén University, Doctoral School of Multidisciplinary Engineering Sciences, Egyetem tér 1, 9026 Győr, HungarySzéchenyi István University, Department of Vehicle Manufacturing, Egyetem tér 1, 9026 Győr, HungaryToday’s manufacturing and assembly systems have to be flexible to adapt quickly to an increasing number and variety of products. The Industry 4.0 conceptualization has several potentials, i.e. flexibility in business and manufacturing processes, where the intelligent and interconnected systems, in particular the Cyber-Physical Production System (CPPS), play a vital role in the whole lifecycle of eco-designed products. In particular, the CPPS represents a suitable way for manufacturers that want to involve their customers, delivering instructions to machines about their specific orders and follow its progress along the production line, in an inversion of normal manufacturing. The development of Info Communication Technologies (ICT) and Manufacturing Science and Technology (MST) enables the innovation of Cyber-Physical Production Systems. However, there are still important challenges that need to be addressed in particular at technological and data analysis level with the implementation of Deep Learning analysis.https://acta.sze.hu/index.php/acta/article/view/514digital twincppsaidataindustry 4.0iotcloud |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Cristina Rosaria Monsone János Jósvai |
spellingShingle |
Cristina Rosaria Monsone János Jósvai Challenges of Digital Twin System Acta Technica Jaurinensis digital twin cpps ai data industry 4.0 iot cloud |
author_facet |
Cristina Rosaria Monsone János Jósvai |
author_sort |
Cristina Rosaria Monsone |
title |
Challenges of Digital Twin System |
title_short |
Challenges of Digital Twin System |
title_full |
Challenges of Digital Twin System |
title_fullStr |
Challenges of Digital Twin System |
title_full_unstemmed |
Challenges of Digital Twin System |
title_sort |
challenges of digital twin system |
publisher |
Széchenyi István University |
series |
Acta Technica Jaurinensis |
issn |
2064-5228 |
publishDate |
2019-08-01 |
description |
Today’s manufacturing and assembly systems have to be flexible to adapt quickly to an increasing number and variety of products. The Industry 4.0 conceptualization has several potentials, i.e. flexibility in business and manufacturing processes, where the intelligent and interconnected systems, in particular the Cyber-Physical Production System (CPPS), play a vital role in the whole lifecycle of eco-designed products. In particular, the CPPS represents a suitable way for manufacturers that want to involve their customers, delivering instructions to machines about their specific orders and follow its progress along the production line, in an inversion of normal manufacturing. The development of Info Communication Technologies (ICT) and Manufacturing Science and Technology (MST) enables the innovation of Cyber-Physical Production Systems. However, there are still important challenges that need to be addressed in particular at technological and data analysis level with the
implementation of Deep Learning analysis. |
topic |
digital twin cpps ai data industry 4.0 iot cloud |
url |
https://acta.sze.hu/index.php/acta/article/view/514 |
work_keys_str_mv |
AT cristinarosariamonsone challengesofdigitaltwinsystem AT janosjosvai challengesofdigitaltwinsystem |
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1724595462538788864 |