Predicting gully formation: An approach for assessing susceptibility and future risk
Leila Goli Mokhtari,
Nadiya Baghaei Nejad,
Ali Beheshti
Abstract:Gully erosion is a significant natural hazard and a form of soil erosion. This research aims to predict gully formation in the Kalshour basin, Sabzevar, Iran. Employing the Information Gain Ratio (IGR) index, we identified 13 key factors out of 22 for modeling, with elevation emerging as the most influential factor in gully formation. The study evaluated the performance of individual machine learning algorithms and ensemble algorithms, including the Functional Tree (FT) as the main classifier, Bagging (Bagg), … Show more
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