BIM 모델 내 공간의 시멘틱 무결성 검증을 위한 그래프 기반 딥러닝 모델 구축에 관한 연구

Translated title of the contribution: Development of Graph based Deep Learning methods for Enhancing the Semantic Integrity of Spaces in BIM Models

Research output: Contribution to journalArticlepeer-review

Abstract

BIM models allow building spaces to be instantiated and recognized as unique objects independently of model elements. These instantiated spaces provide the required semantics that can be leveraged for building code checking, energy analysis, and evacuation route analysis. However, theses spaces or rooms need to be designated manually, which in practice, lead to errors and omissions. Thus, most BIM models today does not guarantee the semantic integrity of space designations, limiting their potential applicability. Recent studies have explored ways to automate space allocation in BIM models using artificial intelligence algorithms, but they are limited in their scope and relatively low classification accuracy. This study explored the use of Graph Convolutional Networks, an algorithm exclusively tailored for graph data structures. The goal was to utilize not only geometry information but also the semantic relational data between spaces and elements in the BIM model. Results of the study confirmed that the accuracy was improved by about 8% compared to algorithms that only used geometric distinctions of the individual spaces.
Translated title of the contributionDevelopment of Graph based Deep Learning methods for Enhancing the Semantic Integrity of Spaces in BIM Models
Original languageKorean
Pages (from-to)45-55
Number of pages11
Journal한국건설관리학회 논문집
Volume23
Issue number3
DOIs
StatePublished - May 2022

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