The drying of wetlands in Iran due to climate change and indiscriminate
human activities has increased dust production. Dust
storms have become a major problem in arid and semi-arid
regions and cause adverse social, economic, and environmental
effects. The Jazmurian wetland in Kerman Province is one such
area. To identify dust sources in the Jazmurian basin, high resolution
Sentinel 2 data were used. From these, sediment supply
was mapped. Three artificially intelligent algorithms—artificial
neural network (ANN), support vector machine (SVM), and deeplearning
neural network (DLNN)—were used to model dust-production
potential in the study area. The results show that portions
of the Jazmurian basin that have dried up in recent years have a
very high potential for dust production. Evaluation of the models’
performances using area-under-curve (AUC) statistics revealed
that the DLNN model is more efficient (AUC ¼ 0.97) than either
the ANN (AUC ¼ 0.91) or SVM (AUC ¼ 0.92). All three models
reveal that NDVI, elevation, annual rainfall, and windspeed are the
four most important factors influencing dust-production potential
in the study area. This remote sensing-artificial intelligence framework
should be tested for mapping dust-production potential in
other regions as this study demonstrates highly accurate, highresolution
results. This study yielded fundamental information to
identify locations in need of desertification management and mitigation
of dust production in the Jazmurian basin.