Assessment of spatial variability of cation exchange capacity with kriging and cokriging

Desert Pub Date : 2019-06-01 DOI:10.22059/JDESERT.2019.72444
S. Jalali, F. Sarmadian, Z. Esmaiel, M. Navidi
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Abstract

Cation exchange capacity (CEC) is one of the most important soil attributes which control some basic properties of soil such as acidity, water and nutrient retaining capacity. However, the measurement of cation exchange capacity in large areas is time consuming and requires high expenses. One way to save time and expenses is to use simple soil covariates and geostatistical methods in mapping CEC. Therefore, the aim of the present research was to investigate the role of soil covariates in the improvement of spatial variability of CEC. The study area is located in southwest Iran on the Aghili plain, Gotvand, Khuzestan province. In this study, ordinary kriging and cokriging methods were used to predict CEC. 107 soil samples were gathered on a random grid of 200-700 m. 74 samples were used for training and 33 samples for testing the results. A principle component analysis was performed for covariate selection. Clay was selected as a covariate in cokriging due to high correlation between clay and CEC[FE1]  in the first principle component analysis. Based on the cross validation result of predicted dataset, RMSE and ME for cokriging were 2.16 and 0.03 cmol (+)/kg respectively, and 3.36 and 0.09 cmol (+)/kg for kriging, respectively. Based on these results, cokriging performed better than kriging for predition of cation exchange capacity since it used a covariate such as clay, for the improvement of CEC spatial prediction.
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用kriging和cokriging评价阳离子交换容量的空间变异性
阳离子交换容量(CEC)是土壤最重要的属性之一,它控制着土壤的酸度、水分和养分保持能力等基本性质。但测量大面积阳离子交换容量耗时长,费用高。一种节省时间和费用的方法是使用简单的土壤协变量和地质统计方法来绘制CEC。因此,本研究的目的是探讨土壤协变量在改善土壤土壤承载力空间变异性中的作用。研究区位于伊朗西南部胡齐斯坦省Gotvand的Aghili平原上。本研究采用普通克里格法和共同克里格法预测CEC。在200-700 m的随机网格上收集107个土壤样本,其中74个样本用于训练,33个样本用于测试结果。对协变量选择进行主成分分析。由于在第一主成分分析中粘土与CEC[FE1]高度相关,因此在共克里格法中选择粘土作为协变量。交叉验证结果表明,共克里格的RMSE和ME分别为2.16和0.03 cmol (+)/kg, kriging的RMSE和ME分别为3.36和0.09 cmol (+)/kg。基于这些结果,cokriging方法在预测阳离子交换容量方面优于kriging方法,因为它使用了粘土等协变量来改进CEC的空间预测。
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32 weeks
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