Spatial assessment of soil salinity in the Harran Plain using multiple kriging techniques

被引:57
|
作者
Bilgili, Ali V. [1 ]
机构
[1] Harran Univ, Sanliurfa, Turkey
关键词
Harran Plain; Soil salinity; Regression kriging; DEM; Disjunctive kriging; Kriging with external drift; SAMPLING STRATEGIES; SALINIZATION RISK; CENTRAL IOWA; PREDICTION; REGRESSION; QUALITY; VARIABILITY; INDICATOR; REGION; DEPTH;
D O I
10.1007/s10661-012-2591-3
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
The Harran Plain is located in the southeastern part of Turkey and has recently been developed for irrigation agriculture. It already faces soil salinity problems causing major yield losses. Management of the problem is hindered by the lack of information on the extent and geography of the salinization problem. A survey was carried out to delineate the spatial distribution of salt-affected areas by randomly selecting 140 locations that were sampled at two depths (0 to 30 and 30 to 60 cm) and analyzed for soil salinity variables: soil electrical conductivity (EC), soluble cations (Ca-2+,Ca- Mg2+, Na+, and K+), soluble anions (SO (4) (2-) , Cl-), exchangeable Na+ (me 100 g(-1)) and exchangeable sodium percentage. Terrain attributes (slope, topographical wetness index) were extracted from the digital elevation model of the study area. Variogram analyses after log transformation and ordinary kriging (OK) were applied to map spatial patterns of soil salinity variables. Multivariate geostatistical methods-regression kriging (RK) and kriging with external drift (KED)-were used using elevation and soil electrical conductivity data as covariates. Performances of the three estimation methods (OK, RK, and KED) were compared using independent validation samples randomly selected from the main dataset. Soils were categorized into salinity classes using disjunctive kriging (DK) and ArcGIS, and classification accuracy was tested using the kappa statistic. Results showed that soil salinity variables all have skewed distribution and are poorly correlated with terrain indices but have strong correlations among each other. Up to 65 % improvement was obtained in the estimations of soil salinity variables using hybrid methods over OK with the best estimations obtained with RK using EC0-30 as covariate. DK-ArcGIS successfully classified soil samples into different salinity groups with overall accuracy of 75 % and kappa of 0.55 (p < 0.001).
引用
收藏
页码:777 / 795
页数:19
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