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Bouramtane T., Hilal H., Rezende A. T., Bouramtane K., Barbiéro Laurent, Abraham S., Valles V., Kacimi I., Sanhaji H., Torres-Rondon L., de Castro D. D., Santos J. D. V., Ouardi J., El Beqqali O., Kassou N., Morarech M. (2022). Mapping gully erosion variability and susceptibility using remote sensing, multivariate statistical analysis, and machine learning in South Mato Grosso, Brazil. Geosciences, 12 (6), 235 [25 p.].

Titre du document
Mapping gully erosion variability and susceptibility using remote sensing, multivariate statistical analysis, and machine learning in South Mato Grosso, Brazil
Année de publication
2022
Type de document
Article référencé dans le Web of Science WOS:000819618200001
Auteurs
Bouramtane T., Hilal H., Rezende A. T., Bouramtane K., Barbiéro Laurent, Abraham S., Valles V., Kacimi I., Sanhaji H., Torres-Rondon L., de Castro D. D., Santos J. D. V., Ouardi J., El Beqqali O., Kassou N., Morarech M.
Source
Geosciences, 2022, 12 (6), 235 [25 p.]
In Brazil, the development of gullies constitutes widespread land degradation, especially in the state of South Mato Grosso, where fighting against this degradation has become a priority for policy makers. However, the environmental and anthropogenic factors that promote gully development are multiple, interact, and present a complexity that can vary by locality, making their prediction difficult. In this framework, a database was constructed for the Rio Ivinhema basin in the southern part of the state, including 400 georeferenced gullies and 13 geo-environmental descriptors. Multivariate statistical analysis was performed using principal component analysis (PCA) to identify the processes controlling the variability in gully development. Susceptibility maps were created through four machine learning models: multivariate discriminant analysis (MDA), logistic regression (LR), classification and regression tree (CART), and random forest (RF). The predictive performance of the models was analyzed by five evaluation indices: accuracy (ACC), sensitivity (SST), specificity (SPF), precision (PRC), and Receiver Operating Characteristic curve (ROC curve). The results show the existence of two major processes controlling gully erosion. The first is the surface runoff process, which is related to conditions of slightly higher relief and higher rainfall. The second also reflects high surface runoff conditions, but rather related to high drainage density and downslope, close to the river network. Human activity represented by peri-urban areas, construction of small earthen dams, and extensive rotational farming contribute significantly to gully formation. The four machine learning models yielded fairly similar results and validated susceptibility maps (ROC curve > 0.8). However, we noted a better performance of the random forest (RF) model (86% and 89.8% for training and test, respectively, with an ROC curve value of 0.931). The evaluation of the contribution of the parameters shows that susceptibility to gully erosion is not governed primarily by a single factor, but rather by the interconnection between different factors, mainly elevation, geology, precipitation, and land use.
Plan de classement
Sciences fondamentales / Techniques d'analyse et de recherche [020] ; Sciences du milieu [021] ; Pédologie [068] ; Télédétection [126]
Description Géographique
BRESIL ; MATO GROSSO
Localisation
Fonds IRD [F B010085351]
Identifiant IRD
fdi:010085351
Contact