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위성영상을 활용한 시공간 분포 적설 연구 동향  

Park, Jong-Min (오하이오 주립대학교 자원환경공학과)
Jeon, Hyeon-Ho (성균관대학교 건설환경시스템공학과)
Jo, Seong-Geun (성균관대학교 수자원학과)
Choe, Min-Ha (성균관대학교 건설환경공학부)
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Water for future / v.55, no.6, 2022 , pp. 38-46 More about this Journal
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