A Five-Step Approach to Planning Data-Driven Digital Twins for Discrete Manufacturing Systems
A digital twin of a manufacturing system is a digital copy of the physical manufacturing system that consists of various digital models at multiple scales and levels. Digital twins that communicate with their physical counterparts throughout their lifecycle are the basis for data-driven factories. T...
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doaj-495c08806f0d4b23879a12601b03253c2021-04-18T23:01:20ZengMDPI AGApplied Sciences2076-34172021-04-01113639363910.3390/app11083639A Five-Step Approach to Planning Data-Driven Digital Twins for Discrete Manufacturing SystemsMatevz Resman0Jernej Protner1Marko Simic2Niko Herakovic3Faculty of Mechanical Engineering, University of Ljubljana, 1000 Ljubljana, SloveniaFaculty of Mechanical Engineering, University of Ljubljana, 1000 Ljubljana, SloveniaFaculty of Mechanical Engineering, University of Ljubljana, 1000 Ljubljana, SloveniaFaculty of Mechanical Engineering, University of Ljubljana, 1000 Ljubljana, SloveniaA digital twin of a manufacturing system is a digital copy of the physical manufacturing system that consists of various digital models at multiple scales and levels. Digital twins that communicate with their physical counterparts throughout their lifecycle are the basis for data-driven factories. The problem with developing digital models that form the digital twin is that they operate with large amounts of heterogeneous data. Since the models represent simplifications of the physical world, managing the heterogeneous data and linking the data with the digital twin represent a challenge. The paper proposes a five-step approach to planning data-driven digital twins of manufacturing systems and their processes. The approach guides the user from breaking down the system and the underlying building blocks of the processes into four groups. The development of a digital model includes predefined necessary parameters that allow a digital model connecting with a real manufacturing system. The connection enables the control of the real manufacturing system and allows the creation of the digital twin. Presentation and visualization of a system functioning based on the digital twin for different participants is presented in the last step. The suitability of the approach for the industrial environment is illustrated using the case study of planning the digital twin for material logistics of the manufacturing system.https://www.mdpi.com/2076-3417/11/8/3639data-driven factorydigital modeldigital twinmodellingdiscrete-event simulation |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Matevz Resman Jernej Protner Marko Simic Niko Herakovic |
spellingShingle |
Matevz Resman Jernej Protner Marko Simic Niko Herakovic A Five-Step Approach to Planning Data-Driven Digital Twins for Discrete Manufacturing Systems Applied Sciences data-driven factory digital model digital twin modelling discrete-event simulation |
author_facet |
Matevz Resman Jernej Protner Marko Simic Niko Herakovic |
author_sort |
Matevz Resman |
title |
A Five-Step Approach to Planning Data-Driven Digital Twins for Discrete Manufacturing Systems |
title_short |
A Five-Step Approach to Planning Data-Driven Digital Twins for Discrete Manufacturing Systems |
title_full |
A Five-Step Approach to Planning Data-Driven Digital Twins for Discrete Manufacturing Systems |
title_fullStr |
A Five-Step Approach to Planning Data-Driven Digital Twins for Discrete Manufacturing Systems |
title_full_unstemmed |
A Five-Step Approach to Planning Data-Driven Digital Twins for Discrete Manufacturing Systems |
title_sort |
five-step approach to planning data-driven digital twins for discrete manufacturing systems |
publisher |
MDPI AG |
series |
Applied Sciences |
issn |
2076-3417 |
publishDate |
2021-04-01 |
description |
A digital twin of a manufacturing system is a digital copy of the physical manufacturing system that consists of various digital models at multiple scales and levels. Digital twins that communicate with their physical counterparts throughout their lifecycle are the basis for data-driven factories. The problem with developing digital models that form the digital twin is that they operate with large amounts of heterogeneous data. Since the models represent simplifications of the physical world, managing the heterogeneous data and linking the data with the digital twin represent a challenge. The paper proposes a five-step approach to planning data-driven digital twins of manufacturing systems and their processes. The approach guides the user from breaking down the system and the underlying building blocks of the processes into four groups. The development of a digital model includes predefined necessary parameters that allow a digital model connecting with a real manufacturing system. The connection enables the control of the real manufacturing system and allows the creation of the digital twin. Presentation and visualization of a system functioning based on the digital twin for different participants is presented in the last step. The suitability of the approach for the industrial environment is illustrated using the case study of planning the digital twin for material logistics of the manufacturing system. |
topic |
data-driven factory digital model digital twin modelling discrete-event simulation |
url |
https://www.mdpi.com/2076-3417/11/8/3639 |
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