INVESTIGADORES
ALESSO Carlos Agustin
congresos y reuniones científicas
Título:
Mapping soil depth in southern pampas Argentina using ancillary data and statistical learning
Autor/es:
PERALTA, NAHUEL RAUL; ALESSO C.A.; COSTA, JOSE LUIS; MARTIN, N.F.
Reunión:
Congreso; XXVIII Congreso Argentino de la Ciencia del Suelo; 2022
Resumen:
Hardpans limit the soil water and nutrients available for crops. In the southern Argentinean pampas, petrocalcic hardpans are found at variable depth within the field. Mapping the spatial distribution of soil depth is important for proper land evaluation, use, and management. This study’s objective was to evaluate the potential of soil electrical conductivity (ECa) and terrain attributes to map within-field spatial variation of soil depth using statistical learning techniques. Soil depth measurements up to 1-m depth were taken in eight fields at spatial sampling density ranging from 2 to 12 points ha–1. Spatially dense data of elevation, terrain attributes, and ECa were migrated to soil depth sampling points and also spatially aggregated to include spatial information into the featured space. Then, random forest regression models were used to predict soil depth from collocated ECa and ter- rain data. Models were cross-validated using a k-fold approach using entire fields as folds. The overall model (using all data) resulted in out-of-the bag R2 and RMSE of .66 and 22.8 cm respectively. Shallow (0–30 cm) and deep (0–90 cm) ECa values were the most important variables, accounting for variability at different ranges, but the importance varied between the soil types. These results suggested that field-scale ECa data and terrain attributes have potential to predict soil depth to hardpan. Further research is needed to improve the generalization of these models and improve the representation of spatial effects in order to implement site-specific management based on soil depth maps.