Mapping land degradation risk due to land susceptibility to dust emission and water erosion
Author:
Boroughani Mahdi, Mirchooli Fahimeh, Hadavifar Mojtaba, Fiedler StephanieORCID
Abstract
Abstract. Land degradation is a cause of many social, economic, and environmental
problems. Therefore identification and monitoring of high-risk areas for
land degradation are necessary. Despite the importance of land degradation
due to wind and water erosion in some areas of the world, the combined study
of both types of erosion in the same area receives relatively little
attention. The present study aims to create a land degradation map in terms
of soil erosion caused by wind and water erosion of semi-dry land. We focus
on the Lut watershed in Iran, encompassing the Lut Desert that is influenced
by both monsoon rainfalls and dust storms. Dust sources are identified using
MODIS satellite images with the help of four different indices to quantify
uncertainty. The dust source maps are assessed with three machine learning
algorithms encompassing the artificial neural network (ANN), random forest (RF),
and flexible discriminant analysis (FDA) to map dust sources paired with
soil erosion susceptibility due to water. We assess the accuracy of the maps
from the machine learning results with the area under the curve (AUC)
of the receiver operating characteristic (ROC) metric. The water and aeolian soil
erosion maps are used to identify different classes of land degradation
risks. The results show that 43 % of the watershed is prone to land
degradation in terms of both aeolian and water erosion. Most regions
(45 %) have a risk of water erosion and some regions (7 %) a risk of
aeolian erosion. Only a small fraction (4 %) of the total area of the
region had a low to very low susceptibility for land degradation. The
results of this study underline the risk of land degradation for in an
inhabited region in Iran. Future work should focus on land degradation
associated with soil erosion from water and storms in larger regions to
evaluate the risks also elsewhere.
Funder
Hakim Sabzevari University
Publisher
Copernicus GmbH
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