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자연어처리 기반 건설현장 산업재해 관련 법령 자동탐색 연구NLP-based Automated Regulation Search on Safety Accidents in Construction Sites

Other Titles
NLP-based Automated Regulation Search on Safety Accidents in Construction Sites
Authors
홍정화심형택안승준문성현
Issue Date
Aug-2025
Publisher
한국안전학회
Keywords
construction accident; coreference; compliance checking; sentence BERT; NLP; -
Citation
한국안전학회지, v.40, no.4, pp 40 - 53
Pages
14
Indexed
KCI
Journal Title
한국안전학회지
Volume
40
Number
4
Start Page
40
End Page
53
URI
https://scholarworks.gnu.ac.kr/handle/sw.gnu/79715
ISSN
1738-3803
2383-9953
Abstract
In 2024, 25,027 occupational accidents were reported in the construction industry—the highest among all sectors—with 373 fatalities, accounting for 23.8% of all work-related deaths. A significant contributing factor to these accidents is non- compliance with safety regulations. Therefore, effective accident prevention requires accurately identifying relevant regulations and implementing systematic safety measures. However, retrieving appropriate regulations is often hindered by subjective interpretation and misunderstanding, which can lead to errors. Accident reports from construction sites contain unstructured text that reflects causal factors and offers valuable information for legal analysis. In contrast, legal documents are hierarchically structured, with cross-references between upper-level articles and sub-clauses. Ignoring this structure can result in the misapplication of laws. To address these challenges, this study proposes a legal clause retrieval method that accounts for the structural characteristics of legal texts. A dataset was created by dividing legal documents into upper-level articles and their corresponding sub-clauses. We developed a system that automatically retrieves the most relevant regulations from the Occupational Safety and Health Act based on accident narratives recorded in the construction safety information (CSI) system. Using Sentence-BERT, both accident descriptions and legal clauses were embedded as vectors, and semantic similarity was calculated. A two-stage retrieval process was implemented: first, identifying the most relevant article, then selecting the most appropriate sub-clause within it. This approach enables accurate and systematic legal retrieval, enhancing safety management and supporting regulatory compliance in the construction industry.
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공과대학 > Department of Industrial and Systems Engineering > Journal Articles
공학계열 > 산업시스템공학과 > Journal Articles

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Moon, Seonghyeon
공과대학 (산업시스템공학부)
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