A Semi-Automatic Ontology Development Framework for Knowledge Transformation of Construction Safety Requirements

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Publicado en:Buildings vol. 15, no. 4 (2025), p. 569
Autor principal: Wu, Zhijiang
Otros Autores: Liu, Mengyao, Ma, Guofeng
Publicado:
MDPI AG
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Acceso en línea:Citation/Abstract
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Descripción
Resumen:Construction safety requirements (SRs), which serve as critical information encapsulating a wide range of safety-related issues, constitute a fundamental basis for effective construction safety management. The constraints of the complex information characteristics and uncertainty of knowledge migration, however, lead to the failure to transform most of the requirement information into effective knowledge. This study proposes a multi-stage knowledge transformation framework for realizing the transformation of SRs from abstract information to canonical knowledge, and it accurately completes the knowledge transformation through document matching, knowledge extraction, and knowledge representation. Meanwhile, a semi-automated model was introduced into this study to develop a domain ontology knowledge base for SRs and to represent each type of knowledge through class definitions. The proposed framework was validated by testing project documents collected from two types of building projects, and the results show that the RD-based association rules can accurately match documents associated with SRs and adapt to match different types of sentiment attribute documents. Moreover, the improved TF-IDF algorithm improved by 20% in precision and recall, showing that the algorithm can extract tacit knowledge by combining knowledge points. Further, the domain ontology knowledge base facilitates normative documentation and representation for each type of knowledge in SRs.
ISSN:2075-5309
DOI:10.3390/buildings15040569
Fuente:Engineering Database