4.7 Article

Improved flood susceptibility mapping using a best first decision tree integrated with ensemble learning techniques

Journal

GEOSCIENCE FRONTIERS
Volume 12, Issue 3, Pages -

Publisher

CHINA UNIV GEOSCIENCES, BEIJING
DOI: 10.1016/j.gsf.2020.11.003

Keywords

Machine learning; Ensemble learners; Hybrid modeling

Funding

  1. Vietnam National Foundation for Science and Technology Development (NAFOSTED) [105.08-2019.03]

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Enhancing accuracy in flood prediction and mapping is essential for minimizing flood damage. This study introduced and validated three ensemble models utilizing BFT, with the Decorate-BFT model showing superior performance in predicting flood susceptibility.
Improving the accuracy of flood prediction and mapping is crucial for reducing damage resulting from flood events. In this study, we proposed and validated three ensemble models based on the Best First Decision Tree (BFT) and the Bagging (Bagging-BFT), Decorate (Bagging-BFT), and Random Subspace (RSS-BFT) ensemble learning techniques for an improved prediction of flood susceptibility in a spatially-explicit manner. A total number of 126 historical flood events from the Nghe An Province (Vietnam) were connected to a set of 10 flood influencing factors (slope, elevation, aspect, curvature, river density, distance from rivers, flow direction, geology, soil, and land use) for generating the training and validation datasets. The models were validated via several performance metrics that demonstrated the capability of all three ensemble models in elucidating the underlying pattern of flood occurrences within the research area and predicting the probability of future flood events. Based on the Area Under the receiver operating characteristic Curve (AUC), the ensemble Decorate-BFT model that achieved an AUC value of 0.989 was identified as the superior model over the RSS-BFT (AUC = 0.982) and Bagging-BFT (AUC = 0.967) models. A comparison between the performance of the models and the models previously reported in the literature confirmed that our ensemble models provided a reliable estimate of flood susceptibilities and their resulting susceptibility maps are trustful for flood earlywarning systems aswell as development ofmitigation plans. (C) 2021 ChinaUniversity of Geosciences (Beijing) and Peking University. Production and hosting by Elsevier B.V.

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