Improving BIM Authoring Process Reproducibility with Enhanced BIM
Logging
- URL: http://arxiv.org/abs/2305.18032v1
- Date: Mon, 29 May 2023 11:52:23 GMT
- Title: Improving BIM Authoring Process Reproducibility with Enhanced BIM
Logging
- Authors: Suhyung Jang and Ghang Lee
- Abstract summary: The authors developed the logger and reproducing algorithm using the Revit C# API.
The enhanced BIM log was evaluated through a case study of Villa Savoye designed by Le Corbusier.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This paper presents an enhanced building information modeling (BIM) logger
that captures building element geometry and attributes to accurately represent
the BIM authoring process. The authors developed the logger and reproducing
algorithm using the Revit C# API based on the analysis of information required
to define building elements and associated attributes. The enhanced BIM log was
evaluated through a case study of Villa Savoye designed by Le Corbusier, and
the results show that it can accurately represent the BIM authoring process to
a substantial level of reproducibility. The study provides a tool for capturing
and reproducing the BIM authoring process. Future research can focus on
improving the accuracy of the logging and reproducing algorithm and exploring
further applications to automate the BIM authoring process using enhanced BIM
logs.
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