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High-resolution digital soil mapping of multiple soil properties: an alternative to the traditional field survey?

机译:多层土壤性能的高分辨率数字土壤映射:传统田间调查的替代方案?

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摘要

Spatial information on soil particle size distribution and soil organic carbon (SOC) are important for land-use management, environmental models and policy-making. Digital soil mapping (DSM) techniques can quantitatively predict these soil propertiesusing minimal resources. However, DSM has not been adequately evaluated at the farm-scale. The aim of this study was to optimise the DSM framework to produce farm-scale soil maps for 366 ha in the Sandspruit catchment, Western Cape, South Africa. Four feature selection techniques and eight predictive models were evaluated on their ability to predict particle size distribution and SOC. A boosted linear feature selection produced the highest accuracy for all but one soil property. The top-performing predictive models were robust linear models for gravel (ridge regression, RMSE 9.01%, R2 0.75), sand (support vector machine, RMSE 4.69%, R2 0.67), clay (quantile regression, RMSE 2.38%, R2 0.52) and SOC (ridge regression, RMSE 0.19%, R2 0.41). Random forestwas the best predictive model for silt content (RMSE 4.12%, R2 0.53). This approach appears to be robust for farm-scale soil mapping where the number of observations is often small but high-resolution soil data are required.
机译:有关土壤粒度分布和土壤有机碳(SoC)的空间信息对于土地利用管理,环境模式和政策制定是重要的。数字土壤映射(DSM)技术可以定量预测这些土壤性质的最小资源。但是,DSM尚未在农业范围内得到充分评估。本研究的目的是优化DSM框架,在南非西开普省桑普林集水区生产366公顷的农业规模土壤图。对其预测粒度分布和SoC的能力进行了四种特征选择技术和八种预测模型。增强的线性特征选择为所有土壤属性的所有含量产生了最高的精度。顶级的预测模型是砾石的强大线性模型(RIDGE回归,RMSE 9.01%,R2 0.75),砂(支持向量机,RMSE 4.69%,R2 0.67),粘土(定量回归,RMSE 2.38%,R2 0.52)和SoC(Ridge回归,RMSE 0.19%,R2 0.41)。随机森林是淤泥含量最佳预测模型(RMSE 4.12%,R2 0.53)。这种方法对于农场规模的土壤映射似乎是鲁棒的,其中观察的数量通常很小,但需要高分辨率的土壤数据。

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