A network analysis-based approach for as-built BIM generation and inspection
With the rapid advancement in Building Information Modelling (BIM) technology to strengthen the Building and Construction (B&C) industry, effective methods are required for the analysis and improvement of as-built BIM, which reflects the completed building project and captures all deviations and...
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sg-ntu-dr.10356-1805712024-10-19T16:48:44Z A network analysis-based approach for as-built BIM generation and inspection Hu, Wei Xie, Zhuoheng Cai, Yiyu School of Mechanical and Aerospace Engineering Engineering Network analysis Community detection With the rapid advancement in Building Information Modelling (BIM) technology to strengthen the Building and Construction (B&C) industry, effective methods are required for the analysis and improvement of as-built BIM, which reflects the completed building project and captures all deviations and updates from the initial design. However, most existing studies are focused on as-designed BIM, while the analysis and inspection of as-built BIM rely on labour-intensive visual and manual approaches that overlook interdependent relationships among components. To address these issues, we propose a network analysis-based approach for managing and improving as-built BIM. Networks are generated from geometric attributes extracted from Industry Foundation Classes (IFC) documents, and network analytical techniques are applied to facilitate BIM analysis. In addition, a practical dataset is utilised to verify the feasibility of the proposed approach. The results demonstrate that our method significantly enhances the analysis and comparison of as-built BIM from model analysis and matching. Specifically, the innovative contribution leverages global information and interdependent relations, providing a more comprehensive understanding of the as-built BIM for effective management and optimisation. Our findings suggest that network analysis can serve as a powerful tool for structure and asset management in the B&C industry, offering new perspectives and methodologies for as-built BIM analysis and comparison. Finally, detailed discussion and future suggestions are presented. Published version 2024-10-14T00:51:02Z 2024-10-14T00:51:02Z 2024 Journal Article Hu, W., Xie, Z. & Cai, Y. (2024). A network analysis-based approach for as-built BIM generation and inspection. Applied Sciences, 14(15), 6587-. https://dx.doi.org/10.3390/app14156587 2076-3417 https://hdl.handle.net/10356/180571 10.3390/app14156587 2-s2.0-85200745793 15 14 6587 en Applied Sciences © 2024 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https:// creativecommons.org/licenses/by/ 4.0/). application/pdf |
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Engineering Network analysis Community detection Hu, Wei Xie, Zhuoheng Cai, Yiyu A network analysis-based approach for as-built BIM generation and inspection |
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With the rapid advancement in Building Information Modelling (BIM) technology to strengthen the Building and Construction (B&C) industry, effective methods are required for the analysis and improvement of as-built BIM, which reflects the completed building project and captures all deviations and updates from the initial design. However, most existing studies are focused on as-designed BIM, while the analysis and inspection of as-built BIM rely on labour-intensive visual and manual approaches that overlook interdependent relationships among components. To address these issues, we propose a network analysis-based approach for managing and improving as-built BIM. Networks are generated from geometric attributes extracted from Industry Foundation Classes (IFC) documents, and network analytical techniques are applied to facilitate BIM analysis. In addition, a practical dataset is utilised to verify the feasibility of the proposed approach. The results demonstrate that our method significantly enhances the analysis and comparison of as-built BIM from model analysis and matching. Specifically, the innovative contribution leverages global information and interdependent relations, providing a more comprehensive understanding of the as-built BIM for effective management and optimisation. Our findings suggest that network analysis can serve as a powerful tool for structure and asset management in the B&C industry, offering new perspectives and methodologies for as-built BIM analysis and comparison. Finally, detailed discussion and future suggestions are presented. |
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School of Mechanical and Aerospace Engineering |
author_facet |
School of Mechanical and Aerospace Engineering Hu, Wei Xie, Zhuoheng Cai, Yiyu |
format |
Article |
author |
Hu, Wei Xie, Zhuoheng Cai, Yiyu |
author_sort |
Hu, Wei |
title |
A network analysis-based approach for as-built BIM generation and inspection |
title_short |
A network analysis-based approach for as-built BIM generation and inspection |
title_full |
A network analysis-based approach for as-built BIM generation and inspection |
title_fullStr |
A network analysis-based approach for as-built BIM generation and inspection |
title_full_unstemmed |
A network analysis-based approach for as-built BIM generation and inspection |
title_sort |
network analysis-based approach for as-built bim generation and inspection |
publishDate |
2024 |
url |
https://hdl.handle.net/10356/180571 |
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1814777705781002240 |