Premium
Map Quality for Ordinary Kriging and Inverse Distance Weighted Interpolation
Author(s) -
Mueller T. G.,
Pusuluri N. B.,
Mathias K. K.,
Cornelius P. L.,
Barnhisel R. I.,
Shearer S. A.
Publication year - 2004
Publication title -
soil science society of america journal
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.836
H-Index - 168
eISSN - 1435-0661
pISSN - 0361-5995
DOI - 10.2136/sssaj2004.2042
Subject(s) - kriging , variogram , cross validation , interpolation (computer graphics) , statistics , multivariate interpolation , mathematics , scale (ratio) , sampling (signal processing) , geostatistics , grid , spatial variability , environmental science , computer science , geography , cartography , geometry , animation , computer graphics (images) , filter (signal processing) , computer vision , bilinear interpolation
The selection of a spatial interpolation methods will impact the quality of site‐specific soil fertility maps. The objective of this study was to describe and predict the relative performance of inverse distance weighted (IDW) and ordinary kriging. Soil samples were collected on 30.5‐m grids for fields in five Kentucky counties and analyzed for pH, buffer pH, P, K, Ca, and Mg. From these data sets, 61‐m grid subsets were extracted. Data were interpolated with IDW and kriging procedures. Prediction efficiency (PE) was determined using an independent dataset (PE validation ) and with cross‐validation (PE cross‐validation ). Multiple stepwise regression was used to develop models that described the relative performance of ordinary kriging and IDW with statistical properties of the data. At the 30.5‐m grid scale, the performance of ordinary kriging relative to IDW improved as the range of spatial correlation increased and fit of the semivariogram model improved. However, at the 61.0‐m grid scale, the performance of ordinary kriging relative to IDW diminished as the degree of spatial structure increased and the fit of the semivariogram model improved. Alone, PE cross‐validation poorly describes the performance of PE validation across locations, soil properties, and sampling intervals ( r 2 = 0.18). However, in combination with the range of spatial correlation, substantial variability at the 30.5‐m grid scale was described for variables with sample semivariograms that reached plateaus ( R 2 = 0.61). In some situations, better decisions will be made regarding the use of these methods by considering the range of spatial correlation and cross‐validation statistics.