Litcius/Paper detail

Examining LightGBM and CatBoost models for wadi flash flood susceptibility prediction

Mohamed Saber, Tayeb Boulmaiz, Mawloud Guermoui, Karim I. Abdrabo, Sameh A. Kantoush, Tetsuya Sumi, Hamouda Boutaghane, Daisuke Nohara, Emad Mabrouk

2021Geocarto International142 citationsDOIOpen Access PDF

Abstract

This study presents two machine learning models, namely, the light gradient boosting machine (LightGBM) and categorical boosting (CatBoost), for the first time for predicting flash flood susceptibility (FFS) in the Wadi System (Hurghada, Egypt). A flood inventory map with 445 flash flood sites was produced and randomly divided into two groups for training (70%) and testing (30%). Fourteen flood controlling factors were selected and evaluated for their relative importance in flood occurrence prediction. The performance of the two models was assessed using various indexes in comparison to the common random forest (RF) method. The results show areas under the receiver operating characteristic curves (AUROC) of above 97% for all models and that LightGBM outperforms other models in terms of classification metrics and processing time. The developed FFS maps demonstrate that highly populated areas are the most susceptible to flash floods. The present study proves that the employed algorithms (LightGBM and CatBoost) can be efficiently used for FFS mapping.

Topics & Concepts

Categorical variableFlash floodWadiRandom forestBoosting (machine learning)Flood mythGradient boostingComputer scienceMachine learningData miningArtificial intelligenceGeographyCartographyArchaeologyFlood Risk Assessment and ManagementHydrology and Drought AnalysisHydrology and Watershed Management Studies
Examining LightGBM and CatBoost models for wadi flash flood susceptibility prediction | Litcius