A COMPARISON OF KRIGING, CO-KRIGING AND KRIGING COMBINED WITH REGRESSION FOR SPATIAL INTERPOLATION OF HORIZON DEPTH WITH CENSORED OBSERVATIONS

被引:235
作者
KNOTTERS, M [1 ]
BRUS, DJ [1 ]
VOSHAAR, JHO [1 ]
机构
[1] DLO,AGR MATH GRP,6700 AC WAGENINGEN,NETHERLANDS
关键词
D O I
10.1016/0016-7061(95)00011-C
中图分类号
S15 [土壤学];
学科分类号
0903 ; 090301 ;
摘要
We compared the performances of kriging and two methods of interpolation which allow to account for an auxiliary variable: co-kriging, and kriging combined with regression. These two methods were applied to improve the interpolation of the soft layers depth (D-sl) measured by augering, using the bulk soil electrical conductivity (EC(a)) measured by an electromagnetic instrument as auxiliary variable, We predicted D-sl from observations of EC(a) using an exponential regression model. These predictions were treated as uncertain measurements of D-sl in kriging. Results of this type of kriging were compared with those of co-kriging for grids of various spacing for D-sl. As the analysis of the spatial structure showed the presence of a drift of degree 2, IRF-2 kriging using generalized covariance functions was applied. Soft layers were not detected within the augering depth of 1.20 m at 10% of the locations. We paid special attention to these so-called censored observations of D-sl in the fitting of the regression model and in the interpolations. Kriging combined with regression gave better results than co-kriging. Moreover, in kriging combined with regression fewer model parameters needed to be estimated. This would be even more advantageous if two or more auxiliary variables were used.
引用
收藏
页码:227 / 246
页数:20
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