Quantifying soil variability in GIS applications: II Spatial distribution of soil properties

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Vivekananthan Kokulan ◽  
Olalekan Akinremi ◽  
Alan Pierre Moulin ◽  
Darshani Kumaragamage

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Paulo Milton Barbosa Landim ◽  
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Deng-Xian Wei ◽  
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K. Ramesh Reddy ◽  
Susan Newman

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S. Newman

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Birru Yitaferu ◽  
Kibebew Kibret ◽  
Feras Ziadat

Information about the spatial distribution of soil properties is necessary for natural resources modeling; however, the cost of soil surveys limits the development of high-resolution soil maps. The objective of this study was to provide an approach for predicting soil attributes. Topographic attributes and the normalized difference vegetation index (NDVI) were used to provide information about the spatial distribution of soil properties using clustering and statistical techniques for the 56 km2Gumara-Maksegnit watershed in Ethiopia. Multiple linear regression models implemented within classified subwatersheds explained 6–85% of the variations in soil depth, texture, organic matter, bulk density, pH, total nitrogen, available phosphorous, and stone content. The prediction model was favorably comparable with the interpolation using the inverse distance weighted algorithm. The use of satellite images improved the prediction. The soil depth prediction accuracy dropped gradually from 98% when 180 field observations were used to 65% using only 25 field observations. Soil attributes were predicted with acceptable accuracy even with a low density of observations (1-2 observations/2 km2). This is because the model utilizes topographic and satellite data to support the statistical prediction of soil properties between two observations. Hence, the use of DEM and remote sensing with minimum field data provides an alternative source of spatially continuous soil attributes.


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