Hybrid Machine Learning Approach for Gully Erosion Mapping Susceptibility at a Watershed Scale
Sliman Hitouri(Université Ibn-Tofail), Ana Cláudia Teodoro(Universidade do Porto), Sasi Kiran Palateerdham(Engineering (Italy)), Mirza Waleed(Hong Kong Baptist University), Narjisse Essahlaoui(Université Moulay Ismail de Meknes), Sk Ajim Ali(Aligarh Muslim University), Ali Essahlaoui(Université Moulay Ismail de Meknes), Antonietta Varasano(Construction Technologies Institute), Meriame Mohajane(Construction Technologies Institute), Quoc Bao Pham(University of Silesia in Katowice), Safae Ijlil(Université Moulay Ismail de Meknes)
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