A comparative assessment of flood susceptibility modeling using Multi-Criteria Decision-Making Analysis and Machine Learning Methods
Khabat Khosravi(Sari Agricultural Sciences and Natural Resources University), Indra Prakash(Government of Gujarat), Binh Thai Pham(University of Economics Ho Chi Minh City), Kamran Chapi(University of Kurdistan), Biswajeet Pradhan, Hai‐Bang Ly(University Of Transport Technology), Gyula Gróf(Centre for Energy Research), Ho Huu Loc(Trường ĐH Nguyễn Tất Thành), Haoyuan Hong(Nanjing Normal University), Jan Adamowski(McGill University)
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