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

3D 레이저 스캐닝과 BIM 연동을 통한 건축물 노후 상태 정보 시각화 프로세스

  • Received : 2022.03.02
  • Accepted : 2022.04.06
  • Published : 2022.04.20

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.

주기적인 건축물 안전진단은 구조적 안전성 및 잠재적 위험을 조기에 파악할 수 있다. 하지만 기존의 수집 방식은 비정형화된 형태의 주관적 데이터가 주로 사용되며, 노동집약적이고 시간 소모적이기 때문에 신뢰성이 떨어진다. 이에 본 연구는 3D 레이저 스캐너를 이용하여 건축물 노후 상태 정보를 수집하고 Building Information Modeling(BIM)으로 통합하여 시각화하는 방안을 제안하며, 순서는 다음과 같다: (1) 3D 레이저 스캐너와 파이썬 스크립트를 통한 데이터 수집, (2) Scan-to-BIM 프로세스, (3) 다이나모를 이용한 상태 데이터 시각화 및 정보 통합. 이를 통해 데이터 저장과 보고서 및 도면 작성 과정의 생략에 따른 시간 단축 효과를 확인하였다. 또한 시각화된 3D 모델은 건축물 유지관리자가 효율적인 결정을 할 수 있도록 한다. 이를 통해 유지관리 업무 효율성이 향상될 것으로 예상된다.

Keywords

Acknowledgement

This work was supported by the National Research Foundation of Korea(NRF) grant funded by the Korea government (MSIT)(No. 2020R1F1A1058136).

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