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NTIS 바로가기한국습지학회지 = Journal of wetlands research, v.25 no.3, 2023년, pp.167 - 175
한희찬 (조선대학교 토목공학과) , 김창주 (조선대학교 토목공학과) , 김동현 (인하대학교 수자원시스템연구소)
Precipitation data is one of the essential input datasets used in various fields such as wetland management, hydrological simulation, and water resource management. In order to efficiently manage water resources using precipitation data, it is essential to secure as much data as possible by minimizi...
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