Flood susceptibility evaluation through deep learning optimizer ensembles and GIS techniques

R. Costache, A. Arabameri, I. Costache, A. Crăciun, A.R. Md Towfiqul Islam, S.I. Abba, M. Sahana, B.T. Pham

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Abstract

It is difficult to predict and model with an accurate model the floods, that are one of the most destructive risks across the earth's surface. The main objective of this research is to show the prediction power of three ensemble algorithms with respect to flood susceptibility estimation. These algorithms are: Iterative Classifier Optimizer – Alternating Decision Tree – Frequency Ratio (ICO-ADT-FR), Iterative Classifier Optimizer – Deep Learning Neural Network – Frequency Ratio (ICO-DLNN-FR) and Iterative Classifier Optimizer – Multilayer Perceptron – Frequency Ratio (ICO-MLP-FR). The first stage of the manuscript consisted of the collection and processing of the geodatabase needed in the present study. The geodatabase comprises a number of 14 flood predictors and 132 known flood locations. The Correlation-based Feature Selection (CFS) method was used in order to assess the prediction capacity of the 14 predictors in terms of flood susceptibility estimation. The training and validation of the three ensemble models constitute the next stage of the scientific workflow. Several statistical metrics and ROC curve method were involved in the evaluation of the model's performance and accuracy. According to ROC curves all the models achieved high performances since their AUC had values above 0.89. ICO-DLNN-FR proved to be the most accurate model (AUC = 0.959). The outcomes of the study can be used to guide future flood risk management and sustainable land-use planning in the designated area.
Original languageEnglish
Article number115316
JournalJournal of Environmental Management
Volume316
Issue number2
Early online date19 May 2022
DOIs
Publication statusPublished - 15 Aug 2022

Keywords

  • Flood susceptibility
  • Iterative classifier optimizer
  • Neural networks
  • Decision tree

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