Machine Learning Enhances Soil Aggregate Stability Mapping for Effective Land Management in a Semi-Arid Region
Pegah Khosravani,
Ali Akbar Moosavi,
Majid Baghernejad
et al.
Abstract:Soil aggregate stability (SAS) is needed to evaluate the soil’s resistance to degradation and erosion, especially in semi-arid regions. Traditional laboratory methods for assessing SAS are labor-intensive and costly, limiting timely and cost-effective monitoring. Thus, we developed cost-efficient wall-to-wall spatial prediction maps for two fundamental SAS proxies [mean weight diameter (MWD) and geometric mean diameter (GMD)], across a 5000-hectare area in Southwest Iran. Machine learning algorithms coupled wi… Show more
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