Performance comparison of two deep learning models for flood susceptibility map in Beira area, Mozambique

Egyptian Journal of Remote Sensing and Space Science - Tập 25 - Trang 1025-1036 - 2022
Suci Ramayanti1, Arip Syaripudin Nur1, Mutiara Syifa1, Mahdi Panahi1,2, Arief Rizqiyanto Achmad3, Sungjae Park3, Chang-Wook Lee1,3
1Division of Science Education, Kangwon National University, Chuncheon-si, Gangwon-do 24341, Republic of Korea
2Geoscience Platform Division, Korea Institute of Geoscience and Mineral Resources (KIGAM), 124, Gwahak-ro, Yuseong-gu, Daejeon 34132, Republic of Korea
3Department of Smart Regional Innovation, Kangwon National University, Chuncheon-si, Gangwon-do 24341, Republic of Korea

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