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NTIS 바로가기한국건축시공학회지 = Journal of the Korea Institute of Building Construction, v.23 no.2, 2023년, pp.197 - 207
강경수 (Department of Architecture, Sahmyook University) , 류한국 (Department of Architecture, Sahmyook University)
Concrete is a widely used material due to its excellent compressive strength and durability. However, depending on the surrounding environment and the characteristics of the materials used in the construction, various defects may occur, such as cracks on the surface and subsidence of the structure. ...
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