Flood susceptibility mapping using AutoML and a deep learning framework with evolutionary algorithms for hyperparameter optimization

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Date

2023

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Elsevier Ltd

Abstract

Flooding is one of the most common natural hazards that have extremely detrimental consequences. Understanding which areas are vulnerable to flooding is crucial to addressing these effects. In this work, we use machine learning models and Automated machine learning (AutoML) systems for flood susceptibility mapping in Kerala, India. In particular, we used a three-dimensional convolutional neural network (CNN) architecture for this purpose. The CNN model was assisted with hyperparameter optimization techniques that combine Bayesian optimization with evolutionary algorithms like differential evolution and covariance matrix adaptation evolutionary strategies. The performances of all models are compared in terms of cross-entropy loss, accuracy, precision, recall, area under the curve (AUC) and kappa score. The CNN model shows better performance than the AutoML models. Evolutionary algorithm-assisted hyperparameter optimization methods improved the efficiency of the CNN model by 4 and 9 percent in terms of accuracy and by 0.0265 and 0.0497 with reference to the AUC score. © 2023 Elsevier B.V.

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Keywords

Convolution, Convolutional neural networks, Covariance matrix, Deep learning, Evolutionary algorithms, Learning systems, Mapping, Optimization, Automated machine learning, Automated machines, Bayesian optimization, Convolutional neural network, Flood susceptibility mapping, HPO, Hyper-parameter optimizations, Kerala, Machine-learning, Susceptibility mapping, Floods

Citation

Applied Soft Computing, 2023, 148, , pp. -

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