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Integrated Flood Forecasting and Warning System against Flash Rainfall in the Small-Scaled Urban Stream 원문보기

Atmosphere, v.11 no.9, 2020년, pp.971 -   

Lee, Jung Hwan ,  Yuk, Gi Moon ,  Moon, Hyeon Tae ,  Moon, Young-Il

Abstract AI-Helper 아이콘AI-Helper

The flood forecasting and warning system enable an advanced warning of flash floods and inundation depths for disseminating alarms in urban areas. Therefore, in this study, we developed an integrated flood forecasting and warning system combined inland-river that systematized technology to quantify ...

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