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Influence of Elevation Data Resolution on Spatial Prediction of Colluvial Soils in a Luvisol Region

机译:海拔数据分辨率对卢维索尔地区冲积土壤空间预测的影响

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摘要

The development of a soil cover is a dynamic process. Soil cover can be altered within a few decades, which requires updating of the legacy soil maps. Soil erosion is one of the most important processes quickly altering soil cover on agriculture land. Colluvial soils develop in concave parts of the landscape as a consequence of sedimentation of eroded material. Colluvial soils are recognised as important soil units because they are a vast sink of soil organic carbon. Terrain derivatives became an important tool in digital soil mapping and are among the most popular auxiliary data used for quantitative spatial prediction. Prediction success rates are often directly dependent on raster resolution. In our study, we tested how raster resolution (1, 2, 3, 5, 10, 20 and 30 meters) influences spatial prediction of colluvial soils. Terrain derivatives (altitude, slope, plane curvature, topographic position index, LS factor and convergence index) were calculated for the given raster resolutions. Four models were applied (boosted tree, neural network, random forest and Classification/Regression Tree) to spatially predict the soil cover over a 77 ha large study plot. Models training and validation was based on 111 soil profiles surveyed on a regular sampling grid. Moreover, the predicted real extent and shape of the colluvial soil area was examined. In general, no clear trend in the accuracy prediction was found without the given raster resolution range. Higher maximum prediction accuracy for colluvial soil, compared to prediction accuracy of total soil cover of the study plot, can be explained by the choice of terrain derivatives that were best for Colluvial soils differentiation from other soil units. Regarding the character of the predicted Colluvial soils area, maps of 2 to 10 m resolution provided reasonable delineation of the colluvial soil as part of the cover over the study area.
机译:土壤覆盖的发展是一个动态的过程。土壤覆盖率可以在几十年内改变,这需要更新旧的土壤图。土壤侵蚀是迅速改变农业用地土壤覆盖率的最重要过程之一。由于侵蚀物质的沉积,在景观的凹面部分形成了冲积土壤。冲积土壤被认为是重要的土壤单元,因为它们是土壤有机碳的巨大汇。地形导数已成为数字土壤制图的重要工具,并且是用于定量空间预测的最受欢迎的辅助数据之一。预测成功率通常直接取决于栅格分辨率。在我们的研究中,我们测试了栅格分辨率(1、2、3、5、10、20和30米)如何影响河流土壤的空间预测。对于给定的栅格分辨率,计算了地形导数(海拔,坡度,平面曲率,地形位置指数,LS因子和会聚指数)。应用了四个模型(增强树,神经网络,随机森林和分类/回归树)来在77公顷的大型研究区上空间预测土壤覆盖率。模型训练和验证基于在常规采样网格上调查的111个土壤剖面。此外,还检查了预计的实际砂土范围和形状。通常,如果没有给定的栅格分辨率范围,则在精度预测中找不到明确的趋势。相较于研究样地的总土壤覆盖率的预测准确度,共生土壤的最大预测准确度更高,可以通过选择最适合于使生土与其他土壤单元区分开的地形导数来解释。关于预计的河床土壤面积的特征,分辨率为2至10 m的地图提供了河床土壤合理的轮廓,作为研究区域覆盖的一部分。

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