Journal ArticleUnknown
Application of stacking hybrid machine learning algorithms in delineating multi-type flooding in Bangladesh
Authors
Author Affiliations
Chinese Academy of Sciences, Institute of Mountain Hazards and Environment, International University of Business Agriculture and Technology, University of Chinese Academy of Sciences, ...
Published InJournal of Environmental Management
Year2021
Citations112
Abstract
Floods are among the most devastating natural hazards in Bangladesh. The country experiences multi-type floods (i.e., fluvial, flash, pluvial, and surge floods) every year. However, areas prone to multi-type floods have not yet been assessed on a national scale. Here, we used locally weighted linear regression (LWLR), random subspace (RSS), reduced error pruning tree (REPTree), random forest (RF), and M5P model tree algorithms in a hybrid ensemble to assess multi-type flood probabilities at a national scale in Bangladesh. We used historical flood data (1988-2020), remote sensing images (e.g., MODIS, Landsat 5-8, and Sentinel-1), and topography, hydrogeology, and environmental datasets to train and validate the proposed algorithms. According to the results, the stacking ensemble machine learning LWLR-RF algorithm performed better than…
View at Publisher
BORR does not host full-text PDFs. The button above takes you to the original publisher.