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Title A comparative assessment of flood susceptibility modeling using Multi-Criteria Decision-Making Analysis and Machine Learning Methods
Type JournalPaper
Keywords Flood susceptibility Machine Learning Multi-Criteria Decision-Making GIS China
Abstract Floods around the world are having devastating effects on human life and property. In this paper, three Multi-Criteria Decision-Making (MCDM) analysis techniques (VIKOR, TOPSIS and SAW), along with two machine learning methods (NBT and NB), were tested for their ability to model flood susceptibility in one of China’s most flood-prone areas, the Ningdu Catchment. Twelve flood conditioning factors were used as input parameters: Normalized Difference Vegetation Index (NDVI), lithology, land use, distance from river, curvature, altitude, Stream Transport Index (STI), Topographic Wetness Index (TWI), Stream Power Index (SPI), soil type, slope and rainfall. The predictive capacity of the models was evaluated and validated using the Area Under the Receiver Operating Characteristic curve (AUC). While all models showed a strong flood prediction capability (AUC > 0.95), the NBT model performed best (AUC = 0.98), suggesting that, among the models studied, the NBT model is a promising tool for the assessment of flood-prone areas and can allow for proper planning and management of flood hazards.
Researchers Indra Prakash (Not In First Six Researchers), Kamran Chapi (Not In First Six Researchers), Haoyuan Hong (Not In First Six Researchers), Huu Loc Ho (Not In First Six Researchers), Gyula Gróf (Not In First Six Researchers), Hai-Bang Ly (Not In First Six Researchers), Jie Dou (Not In First Six Researchers), Biswajeet Pradhan (Not In First Six Researchers), Ataollah Shirzadi (Fifth Researcher), Jan Adamowski (Fourth Researcher), Binh Thai Pham (Third Researcher), Himan Shahabi (Second Researcher), Khabat Khosravi (First Researcher)