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Re-tooling of regression kriging in R for improved digital mapping of soil properties

机译:对R中的回归克里金法进行重新设计以改进土壤特性的数字制图

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Regression analysis and kriging are popular spatial estimation methods often used in soil science to provide soil information at different spatial resolutions and extent. Attempts have been made to combine them into a method known as regression kriging (RK). With the increasing acceptance of digital soil mapping paradigm, utilization of spatial estimation method such as RK is bound to rise. Although RK is versatile and popular, its current format has deficiencies which can hinder the quality of estimated soil properties. One of the deficiencies of RK is the failure of its regression model to recognize that natural soil occurs in groups with unique response characteristics to soil forming factors. Ideally, these groups should be represented as a family of curves when modelling the landscape. However, the current applications tend to use average models which either block/control the grouping effects or do not statistically recognize them. In this paper, mixed-effects modelling technique is shown for ingenious recognition of soil groupings and consequent improvement of RK accuracy. Mixed-effects modelling allows for simultaneous regression estimation for individual models in a group and for different groups in the landscape. Its implementation in RK has been illustrated using executable scripts in R. It gives better mapping accuracy and reliable maps than the current application in RK. The new RK and its easy implementation in R software are anticipated to provide potential for wide application and eventual contribution to improved soil mapping and application of DSM.
机译:回归分析和克里金法是土壤科学中常用的空间估计方法,用于以不同的空间分辨率和程度提供土壤信息。已经尝试将它们组合成一种称为回归克里金法(RK)的方法。随着数字土壤制图范式的日益普及,空间估计方法(如RK)的使用必将增加。尽管RK用途广泛且广受欢迎,但其当前格式存在不足之处,可能会影响估计的土壤特性的质量。 RK的不足之一是其回归模型未能认识到天然土壤以对土壤形成因子具有独特响应特征的群体存在。理想情况下,在对景观建模时,应将这些组表示为一组曲线。但是,当前的应用程序倾向于使用平均模型,该模型要么阻止/控制分组效果,要么不统计地识别它们。在本文中,展示了混合效果建模技术,可以巧妙地识别土壤组,从而提高RK的准确性。混合效果建模允许同时对一组中的单个模型和景观中的不同组进行回归估计。已在R中使用可执行脚本说明了其在RK中的实现。与RK中的当前应用程序相比,它提供了更好的映射精度和可靠的映射。预计新的RK及其在R软件中的轻松实现将为广泛的应用提供潜力,并最终为改进土壤图和DSM的应用做出贡献。

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