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http://dx.doi.org/10.5345/JKIBC.2022.22.2.171

Integration of 3D Laser Scanner and BIM Process for Visualization of Building Defective Condition  

Choi, Moonyoung (Department of Architecture, Yeungnam University)
Kim, Sangyong (Department of Architecture, Yeungnam University)
Kim, Seungho (Department of Architecture, Yeungnam University College)
Publication Information
Journal of the Korea Institute of Building Construction / v.22, no.2, 2022 , pp. 171-182 More about this Journal
Abstract
The regular assessment of a building is important to understand structural safety and latent risk in the early stages of building life cycle. However, methods of traditional assessment are subjective, atypical, labor-intensive, and time-consuming and as such the reliability of these results has been questioned. This study proposed a method to bring accurate results using a 3D laser scanner and integrate them in Building Information Modeling (BIM) to visualize defective condition. The specific process for this study was as follows: (1) semi-automated data acquisition using 3D laser scanner and python script, (2) scan-to-BIM process, (3) integrating and visualizing defective conditions data using dynamo. The method proposed in this study improved efficiency and productivity in a building assessment through omitting the additional process of measurement and documentation. The visualized 3D model allows building facility managers to make more effective decisions. Ultimately, this is expected to improve the efficiency of building maintenance works.
Keywords
3D laser scanner; reverse engineering; building information modeling; building condition; visualization;
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