Travis W. Nauman, Suzann Kienast-Brown, Stephen M. Roecker, Colby Brungard, David White, Jessica Philippe, James A. Thompson
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A hybrid training strategy helped increase training data by roughly 10-fold over previous similar studies by combining commonly used laboratory data with underutilized field descriptions tied to soil survey map unit component property estimates (to help represent within polygon variability) as well as randomly selected soil survey map unit weighted average property estimates. Relative prediction intervals were used to help select which training data sources improved model performance. Conventional and spatial cross-validation strategies yielded generally strong coefficients of determination between 0.5 and 0.7, but with substantial variability and outliers among the various properties, types of training data, and depths. Internal review of the maps highlighted both strengths and weaknesses of the maps, but most of the critical comments were in areas with high model uncertainty that can be used to guide future improvements. 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引用次数: 0
摘要
详细的土壤属性图对于土地管理决策和环境建模越来越重要。美国土壤普查局正在投资制作美国土壤地貌图(SOLUS),这是一套新的全国性预测土壤属性图。本文记录了 20 种土壤属性的 100 米分辨率初始地图,其中包括各种纹理成分、物理参数、化学参数、碳和限制深度。其中许多属性以前从未以这种分辨率绘制过。通过将常用的实验室数据与未充分利用的实地描述相结合,并与土壤勘测图单元成分属性估计值(以帮助表示多边形内的变异性)以及随机选择的土壤勘测图单元加权平均属性估计值相联系,混合训练策略帮助将训练数据比以前的类似研究增加了大约 10 倍。相对预测区间用于帮助选择哪种训练数据源可提高模型性能。常规和空间交叉验证策略得出的确定系数一般在 0.5 到 0.7 之间,但在各种属性、训练数据类型和深度之间存在很大的变异性和异常值。对地图的内部审查强调了地图的优点和缺点,但大多数批评意见都集中在模型不确定性较高的区域,可用于指导未来的改进工作。一般来说,以前的冰川地区和复杂的大型冲积盆地较难建模。新的 SOLUS 100 m 地图将在未来进行更新,以解决已发现的问题和用户与数据交互时的反馈。
Soil landscapes of the United States (SOLUS): Developing predictive soil property maps of the conterminous United States using hybrid training sets
Detailed soil property maps are increasingly important for land management decisions and environmental modeling. The US Soil Survey is investing in production of the Soil Landscapes of the United States (SOLUS), a new set of national predictive soil property maps. This paper documents initial 100-m resolution maps of 20 soil properties that include various textural fractions, physical parameters, chemical parameters, carbon, and depth to restrictions. Many of these properties have not been previously mapped at this resolution. A hybrid training strategy helped increase training data by roughly 10-fold over previous similar studies by combining commonly used laboratory data with underutilized field descriptions tied to soil survey map unit component property estimates (to help represent within polygon variability) as well as randomly selected soil survey map unit weighted average property estimates. Relative prediction intervals were used to help select which training data sources improved model performance. Conventional and spatial cross-validation strategies yielded generally strong coefficients of determination between 0.5 and 0.7, but with substantial variability and outliers among the various properties, types of training data, and depths. Internal review of the maps highlighted both strengths and weaknesses of the maps, but most of the critical comments were in areas with high model uncertainty that can be used to guide future improvements. Generally, previously glaciated areas and complex large alluvial basins were harder to model. The new SOLUS 100-m maps will be updated in the future to address identified issues and feedback as users interact with the data.