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NTIS 바로가기한국건축시공학회지 = Journal of the Korea Institute of Building Construction, v.21 no.2, 2021년, pp.165 - 174
강경수 (Construction Engineering and Management Institute, Sahmyook University) , 최재현 (School of Architecturral Engineering, Korea University of Technology and Education (Koreatech)) , 류한국 (Department of Architectural, Sahmyook University)
The construction industry causes the most accidents and fatalities among all industries. Although many efforts have been made to reduce safety accidents in construction, the study on the lost workdays that return to work place is insufficient. Therefore, this study proposes a model that classifies t...
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