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首页> 外文期刊>Stochastic environmental research and risk assessment >A novel downscaling procedure for compositional data in the Aitchison geometry with application to soil texture data
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A novel downscaling procedure for compositional data in the Aitchison geometry with application to soil texture data

机译:具有应用于土壤纹理数据的Aithison几何中的组成数据的新型缩小程序

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摘要

In this work, we present a novel downscaling procedure for compositional quantities based on the Aitchison geometry. The method is able to naturally consider compositional constraints, i.e. unit-sum and positivity, accounting for the scale invariance and relative scale of these data. We show that the method can be used in a block sequential Gaussian simulation framework in order to assess the variability of downscaled quantities. Finally, to validate the method, we test it first in an idealized scenario and then apply it for the downscaling of digital soil maps on a more realistic case study. The digital soil maps for the realistic case study are obtained from SoilGrids, a system for automated soil mapping based on state-of-the-art spatial predictions methods.
机译:在这项工作中,我们提出了一种基于Aitchison几何的组成量的小说次编制程序。 该方法能够自然地考虑组成约束,即单位和和积极性,占这些数据的尺度不变性和相对规模。 我们表明该方法可用于块顺序高斯仿真框架,以评估较低量的可变性。 最后,为了验证方法,我们首先在理想化的场景中测试,然后在更现实的案例研究中应用数字土壤图的缩小。 基于最先进的空间预测方法,从瓦格车,一个自动化土壤映射系统获得了现实案例研究的数字土壤图。

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