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NTIS 바로가기Journal of KIBIM = 한국BIM학회논문집, v.10 no.2, 2020년, pp.21 - 28
한만석 (인하대학교 토목공학과) , 신수봉 (인하대학교 사회인프라공학과) , 안효준 (인하대학교 토목공학과)
As the number of aging bridges increases, more studies are being conducted on developing effective and reliable methods for the assessment and maintenance of bridges. With the advancement in new sensing systems and data learning techniques through AI technology, there is growing interests in how to ...
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