Field based index of flood vulnerability (IFV): A new validation technique for flood susceptible models

Geoscience Frontiers - Tập 12 - Trang 101175 - 2021
Susanta Mahato1, Swades Pal1, Swapan Talukdar1, Tamal Kanti Saha1, Parikshit Mandal1
1Department of Geography, University of GourBanga, Malda, India

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