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Flood risk mapping and analysis using an integrated framework of machine learning models and analytic hierarchy process
Authors:Quynh Duy Bui  Chinh Luu  Sy Hung Mai  Hang Thi Ha  Huong Thu Ta  Binh Thai Pham
Institution:1. Faculty of Bridges and Roads, Hanoi University of Civil Engineering, Hanoi, Vietnam;2. Faculty of Hydraulic Engineering, Hanoi University of Civil Engineering, Hanoi, Vietnam;3. Institute of Geodesy Engineering Technology, Hanoi University of Civil Engineering, Hanoi, Vietnam;4. Centre for Water Resources Software, VietNam Academy for Water Resources, Hanoi, Vietnam;5. Geotechnical Engineering Division, University of Transport Technology, Hanoi, Vietnam
Abstract:In this study, a new approach of machine learning (ML) models integrated with the analytic hierarchy process (AHP) method was proposed to develop a holistic flood risk assessment map. Flood susceptibility maps were created using ML techniques. AHP was utilized to combine flood vulnerability and exposure criteria. We selected Quang Binh province of Vietnam as a case study and collected available data, including 696 flooding locations of historical flooding events in 2007, 2010, 2016, and 2020; and flood influencing factors of elevation, slope, curvature, flow direction, flow accumulation, distance from river, river density, land cover, geology, and rainfall. These data were used to construct training and testing datasets. The susceptibility models were validated and compared using statistical techniques. An integrated flood risk assessment framework was proposed to incorporate flood hazard (flood susceptibility), flood exposure (distance from river, land use, population density, and rainfall), and flood vulnerability (poverty rate, number of freshwater stations, road density, number of schools, and healthcare facilities). Model validation suggested that deep learning has the best performance of AUC = 0.984 compared with other ensemble models of MultiBoostAB Ensemble (0.958), Random SubSpace Ensemble (0.962), and credal decision tree (AUC = 0.918). The final flood risk map shows 5075 ha (0.63%) in extremely high risk, 47,955 ha (5.95%) in high-risk, 40,460 ha (5.02%) in medium risk, 431,908 ha (53.55%) in low risk areas, and 281,127 ha (34.86%) in very low risk. The present study highlights that the integration of ML models and AHP is a promising framework for mapping flood risks in flood-prone areas.
Keywords:Flood risk map  flood susceptibility  machine learning  AHP  Vietnam
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