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Journal ArticleOpen Access

A novel framework for addressing uncertainties in machine learning-based geospatial approaches for flood prediction

Author Affiliations
Chittagong University of Engineering & Technology, Presidency University, National University of Malaysia, University of Newcastle Australia, ...
Published InJournal of Environmental Management
Year2022
Citations75

Abstract

Globally, many studies on machine learning (ML)-based flood susceptibility modeling have been carried out in recent years. While majority of those models produce reasonably accurate flood predictions, the outcomes are subject to uncertainty since flood susceptibility models (FSMs) may produce varying spatial predictions. However, there have not been many attempts to address these uncertainties because identifying spatial agreement in flood projections is a complex process. This study presents a framework for reducing spatial disagreement among four standalone and hybridized ML-based FSMs: random forest (RF), k-nearest neighbor (KNN), multilayer perceptron (MLP), and hybridized genetic algorithm-gaussian radial basis function-support vector regression (GA-RBF-SVR). Besides, an optimized model was developed combining the outcomes of those four models. The southwest coastal region of Bangladesh was…
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