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A New European Slope Length and Steepness Factor (LS-Factor) for Modeling Soil Erosion by Water

机译:用于模拟水土流失的新型欧洲边坡长度和陡度因子(LS因子)

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The Universal Soil Loss Equation (USLE) model is the most frequently used model for soil erosion risk estimation. Among the six input layers, the combined slope length and slope angle (LS-factor) has the greatest influence on soil loss at the European scale. The S-factor measures the effect of slope steepness, and the L-factor defines the impact of slope length. The combined LS-factor describes the effect of topography on soil erosion. The European Soil Data Centre (ESDAC) developed a new pan-European high-resolution soil erosion assessment to achieve a better understanding of the spatial and temporal patterns of soil erosion in Europe. The LS-calculation was performed using the original equation proposed by Desmet and Govers (1996) and implemented using the System for Automated Geoscientific Analyses (SAGA), which incorporates a multiple flow algorithm and contributes to a precise estimation of flow accumulation. The LS-factor dataset was calculated using a high-resolution (25 m) Digital Elevation Model (DEM) for the whole European Union, resulting in an improved delineation of areas at risk of soil erosion as compared to lower-resolution datasets. This combined approach of using GIS software tools with high-resolution DEMs has been successfully applied in regional assessments in the past, and is now being applied for first time at the European scale.
机译:通用土壤流失方程(USLE)模型是最常用的土壤侵蚀风险估计模型。在六个输入层中,组合的坡度长度和坡度角(LS因子)在欧洲范围内对土壤流失影响最大。 S因子测量坡度的影响,而L因子定义坡度的影响。组合的LS因子描述了地形对土壤侵蚀的影响。欧洲土壤数据中心(ESDAC)开发了一项新的泛欧洲高分辨率土壤侵蚀评估,以更好地了解欧洲土壤侵蚀的时空格局。 LS计算是使用Desmet and Govers(1996)提出的原始方程式进行的,并使用自动地球科学分析系统(SAGA)进行的,该系统结合了多种流量算法,有助于精确估算流量累积。 LS因子数据集是使用整个欧盟的高分辨率(25 m)数字高程模型(DEM)计算的,与较低分辨率的数据集相比,可以更好地描绘出土壤侵蚀风险区域。过去,这种将GIS软件工具与高分辨率DEM结合使用的方法已成功地应用于区域评估,现在已在欧洲范围内首次应用。

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