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Erschienen in: Water Resources Management 12/2022

25.08.2022

New Machine Learning Ensemble for Flood Susceptibility Estimation

verfasst von: Romulus Costache, Alireza Arabameri, Iulia Costache, Anca Crăciun, Binh Thai Pham

Erschienen in: Water Resources Management | Ausgabe 12/2022

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Abstract

Floods are among the most severe natural hazard phenomena that affect people around the world. Due to this fact, the identification of zones highly susceptible to floods became a very important activity in the researcher’s work. In this context, the present research work aimed to propose the following 3 novel ensembles to estimate the flood susceptibility in Putna river basin from Romania: UltraBoost-Weights of Evidence (U-WOE), Stochastic Gradient Descending-Weights of Evidence (SGD-WOE) and Cost Sensitive Forest-Weights of Evidence (CSForest-WOE). In this regard, a sample of 132 flood locations and 14 flood predictors was used as input datasets in the 3 aforementioned models. The modeling procedure performed through a ten-fold cross-validation method revealed that the SGD-WOE ensemble model achieved the highest performance in terms of ROC Curve-AUC (0.953) and also in terms of Accuracy (0.94). The slope and distance from river flood predictors achieved the highest importance in terms of flood susceptibility genesis, while the aspect, TPI, hydrological soil groups, and plan curvature have the lowest influence in terms of flood occurrence. The area with high and very high susceptibility represents between 21% and 24% of the Putna river basin from Romania.

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Metadaten
Titel
New Machine Learning Ensemble for Flood Susceptibility Estimation
verfasst von
Romulus Costache
Alireza Arabameri
Iulia Costache
Anca Crăciun
Binh Thai Pham
Publikationsdatum
25.08.2022
Verlag
Springer Netherlands
Erschienen in
Water Resources Management / Ausgabe 12/2022
Print ISSN: 0920-4741
Elektronische ISSN: 1573-1650
DOI
https://doi.org/10.1007/s11269-022-03276-0

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