Digital Twins for Construction Assets Using BIM Standard Specifications
Abstract
:1. Introduction
2. Systematic Review Methodology
- Publication year: 2016 to 2021;
- Document type: articles and review articles;
- Source type: journals;
- Language: English;
- Others: subject areas limited to engineering, energy, and environmental sciences.
3. Digital Twins—State of the Art
3.1. Digital Twins: Origin and Concept
3.2. Digital Twins in the AEC Industry
3.2.1. Status of Digital Twins
3.2.2. Digital Twin Concept Evolution (BIM Dependency)
- The significant increase in BIM adoption and implementation in the AEC industry;
- The increase in BIM software packages currently on the market due to the pressing need to integrate BIM in the management of building information;
- Scope;
- Communication;
- Structure.
3.3. Clustering DT Studies
4. Framework Proposal
4.1. Standards in DTs
- Overview and general principles;
- Reference architecture;
- Digital representation of manufacturing elements;
- Information exchange.
4.2. Limitations of Current Research and Standards Pertaining to DTs
4.3. A Framework for DT Development for Construction Assets Using BIM ISO 19650 Standard Specifications
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Group 1 | Group 2 | Group 3 | Group 4 | Group X1 | Group X2 | Group X3 |
---|---|---|---|---|---|---|
“Digital Twin” | BIM | AEC | Monitoring | “Safety Monitoring” | Construction | “BIM Standards” |
“Digital replica” | “Building information modelling” | “Architecture engineering and construction” | Sensors | “Heritage” | “Operation and Maintenance” | “ISO 19650” |
“Digital counterpart” | “Construction industry” | Simulation | “Renewable Energy” | Circularity | “PAS 1192” | |
“Virtual Twin” | Utilities | Dynamo | “Energy Efficiency” | Demolition | IFC | |
“Building services” | IoT | “Indoor Environmental Quality” | Design | “ISO 16739” | ||
Infrastructures | “Internet of things” | IEQ | ||||
“Asset management” | “Real-time data” | “Structural Health Monitoring” | ||||
“Facility” | SHM | |||||
“Performance Monitoring” | ||||||
Productivity | ||||||
“Sustainable Management” |
Combinations * |
---|
G1 AND G2 |
G1 AND G3 |
G2 AND G3 AND G4 |
G1 AND GX1 |
G1 AND GX2 |
G1 AND GX3 |
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Nour El-Din, M.; Pereira, P.F.; Poças Martins, J.; Ramos, N.M.M. Digital Twins for Construction Assets Using BIM Standard Specifications. Buildings 2022, 12, 2155. https://doi.org/10.3390/buildings12122155
Nour El-Din M, Pereira PF, Poças Martins J, Ramos NMM. Digital Twins for Construction Assets Using BIM Standard Specifications. Buildings. 2022; 12(12):2155. https://doi.org/10.3390/buildings12122155
Chicago/Turabian StyleNour El-Din, Mohamed, Pedro F. Pereira, João Poças Martins, and Nuno M. M. Ramos. 2022. "Digital Twins for Construction Assets Using BIM Standard Specifications" Buildings 12, no. 12: 2155. https://doi.org/10.3390/buildings12122155