2023
DOI: 10.1002/ldr.4721
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Scrutinizing gully erosion hotspots using hybridized deep‐learning analysis to avoid land degradation

Abstract: Despite the importance of the prediction of land susceptibility to gully erosion, there is a lack of research studies adopting the deep‐learning approach. This study aimed to predict gully susceptibility hotspots using hybridized deep‐learning models and evaluate their efficiency. Field records of gully occurrences in a gully‐prone region, the Talwar watershed (6468 km2), eastern Kurdistan province, Iran, were used to generate a gully inventory dataset. A total of 14 geomorphometric, environmental, and topo‐hy… Show more

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Cited by 3 publications
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References 106 publications
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