An expert system to predict intricate saline-sodic subsoil patterns in upland South Australia
2009
Thomas, M. | Fitzpatrick, R.W. | Heinson, G.S.
Digital soil mapping (DSM) offers apparent benefits over more labour-intensive and costly traditional soil survey. Large cartographic scale (e.g. 1:10000 scale) soil maps are rare in Australia, especially in agricultural areas where they are needed to support detailed land evaluation and targeted land management decisions. We describe a DSM expert system using environmental correlation that applies a priori knowledge from a key area (128ha) soil-landscape with a regionally repeating toposequence to predict the distribution of saline-sodic subsoil patterns in the surrounding upland farming region (2275ha) in South Australia. Our predictive framework comprises interrelated and iterative steps, including: (i) consolidating a priori knowledge of the key area soil-landscape; (ii) refining existing mentally held and graphic soil-landscape models; (iii) selecting suitable environmental covariates compatible with geographic information systems (GIS) by interrogation via 3D visualisation using a GIS; (iv) transforming the existing soil-landscape models to a computer model; (v) applying the computer model to the environmental variables using the expert system; (vi) performing the predictive mapping; and (vii) validation. The environmental covariates selected include: digital terrain attributes of slope gradient, topographic wetness index and plan curvature, and airborne gamma-radiometric K%. We apply selected soil profile physiochemical data from a prior soil survey to validate mapping. Results showed that we correctly predicted the saline-sodic subsoils in 10 of 11 reference profiles in the region.
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