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NTIS 바로가기한국구조물진단유지관리공학회 논문집 = Journal of the Korea Institute for Structural Maintenance and Inspection, v.26 no.5, 2022년, pp.30 - 42
이태희 ((주)케이엠티엘 기술연구소) , 박진태 ((주)케이엠티엘 기술연구소) , 이승훈 ((주)케이엠티엘 시스템사업부) , 박신전 ((주)케이엠티엘 기술연구소)
Due to the increase in construction of tunnels, the burdens of maintenance works for tunnel structures have been increasing in Korea. In addition, the increase of traffic volume and aging of materials also threatens the safety of tunnel facilities, therefore, maintenance costs are expected to increa...
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