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NTIS 바로가기한국안전학회지 = Journal of the Korean Society of Safety, v.36 no.3, 2021년, pp.31 - 39
최승주 (울산대학교 안전보건전문학과) , 김진현 (한국산업안전보건공단 산업안전보건연구원) , 정기효 (울산대학교 산업경영공학부)
In Korea, more than half of work-related fatalities have occurred on construction sites. To reduce such occupational accidents, safety inspection by government agencies is essential in construction sites that present a high risk of serious accidents. To address this issue, this study developed risk ...
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