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딥러닝을 활용한 건축내역서 자재 데이터베이스 추출

Material Database Extraction Through Deep Learning From Bill of Quantity

  • Miao, Xu (School of Architecture, Kyungil University) ;
  • Eom, Shin-Jo (School of Architecture, Kyungil University)
  • 투고 : 2023.10.29
  • 심사 : 2023.11.27
  • 발행 : 2023.12.31

초록

In construction projects, optimizing material selection is crucial, as over half of the construction cost is allocated to materials. To achieve this, an integrated material information system becomes essential. Creating an efficient material list requires significant investment in manpower and time to register and manage diverse material information. This study introduces a system developed through deep learning-based intelligent material extraction. The system builds a database of building material information from real projects, utilizing a classifier trained with standard construction codes using the FastText method and LSTM model. Through experiments on 40 buildings, the system demonstrated an 86% accuracy rate. The resulting building material information serves as a foundational resource for future applications such as artificial intelligence-based automation of design economic evaluation and design safety assessment.

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과제정보

이 연구는 2020년도 한국연구재단 연구비 지원에 의한 결과의 일부임. 과제번호:2020R1I1A3073663

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