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首页> 外文期刊>Geoderma: An International Journal of Soil Science >Analysis and prediction of soil properties using local regression-kriging. (Entering the digital era: special issue of pedometrics 2009, Beijing.)
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Analysis and prediction of soil properties using local regression-kriging. (Entering the digital era: special issue of pedometrics 2009, Beijing.)

机译:使用局部回归克里金法对土壤性质进行分析和预测。 (进入数字时代:《儿童计量学专刊》 2009年,北京。)

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Regression-kriging (RK) is becoming an important tool in geostatistics because of the availability of many covariates at high spatial resolution with the advancement in proximal and remote-sensing with positioning technologies. This paper presents the application of a new local RK algorithm for prediction of soil properties. The algorithm was tested using 985 observations for prediction of soil pH, clay content and carbon content in the lower Hunter Valley of New South Wales in Australia. Environmental covariates for the area were compiled. First, the covariates used in regression analysis for each of the soil properties were obtained through a step-wise regression analysis. Secondly, different spatial prediction methods were examined. Finally, the prediction efficiency of various techniques was tested at validation sites using the standardised squared deviation as a measure of the goodness of theoretical estimates. The results from validation showed that the local RK method does not always present the best predictions, but for specific cases it may be highly accurate. We conclude that local RK performance depends on the actual soil and environmental factor relationships, and in general performs no worse than global RK. Furthermore, the advantage of local RK is that it can provide an approach to understand how much the regression models and variogram models change across a region. We have developed a software programme named RKGuider to carry out the local RK steps automatically. Further investigation and numerous datasets are required to verify the algorithm.
机译:回归克里金法(RK)成为地统计学中的重要工具,因为随着定位技术的近距离和遥感技术的发展,在高空间分辨率下可以使用许多协变量。本文介绍了一种新的局部RK算法在土壤性质预测中的应用。使用985个观测值对算法进行了测试,以预测澳大利亚新南威尔士州下游猎人谷的土壤pH值,粘土含量和碳含量。编译了该区域的环境协变量。首先,通过逐步回归分析获得用于每种土壤性质的回归分析中的协变量。其次,研究了不同的空间预测方法。最后,使用标准化的平方偏差作为对理论估计的良好程度的度量,在验证站点上测试了各种技术的预测效率。验证的结果表明,本地RK方法并不总是能提供最佳的预测,但是对于特定情况,它可能是非常准确的。我们得出结论,当地RK的表现取决于实际的土壤和环境因素之间的关系,并且总体上表现不比全球RK差。此外,局部RK的优势在于它可以提供一种方法来了解整个区域的回归模型和变异函数模型有多少变化。我们已经开发了一个名为RKGuider的软件程序,可以自动执行本地RK步骤。需要进一步研究和大量数据集以验证算法。

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