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Spatio-temporal soil moisture patterns - A meta-analysis using plot to catchment scale data

机译:时空土壤水分模式-利用样地到流域尺度数据的荟萃分析

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Soil moisture is a key variable in hydrology, meteorology and agriculture. It is influenced by many factors, such as topography, soil properties, vegetation type, management, and meteorological conditions. The role of these factors in controlling the spatial patterns and temporal dynamics is often not well known. The aim of the current study is to analyze spatio-temporal soil moisture patterns acquired across a variety of land use types, on different spatial scales (plot to meso-scale catchment) and with different methods (point measurements, remote sensing, and modeling). We apply a uniform set of tools to determine method specific effects, as well-as site and scale specific controlling factors. Spatial patterns of soil moisture and their temporal development were analyzed using nine different datasets from the Rur catchment in Western Germany. For all datasets we found negative linear relationships between the coefficient of variation and the mean soil moisture, indicating lower spatial variability at higher mean soil moisture. For a forest sub-catchment compared to cropped areas, the offset of this relationship was larger, with generally larger variability at similar mean soil moisture values. Using a geostatistical analysis of the soil moisture patterns we identified three groups of datasets with similar values for sill and range of the theoretical variogram: (i) modeled and measured datasets from the forest sub-catchment (patterns mainly influenced by soil properties and topography), (ii) remotely sensed datasets from the cropped part of the Rur catchment (patterns mainly influenced by the land-use structure of the cropped area), and (iii) modeled datasets from the cropped part of the Rur catchment (patterns mainly influenced by large scale variability of soil properties). A fractal analysis revealed that all analyzed soil moisture patterns showed a multifractal behavior, with at least one scale break and generally high fractal dimensions. Corresponding scale breaks were found between different datasets. The factors causing these scale breaks are consistent with the findings of the geostatistical analysis. Furthermore, the joined analysis of the different datasets showed that small differences in soil moisture dynamics, especially at the upper and lower bounds of soil moisture (at maximum porosity and wilting point of the soils) can have a large influence on the soil moisture patterns and their autocorrelation structure. Depending on the prevalent type of land use and the time of year, vegetation causes a decrease or an increase of spatial variability in the soil moisture pattern. (C) 2014 The Authors. Published by Elsevier B.V.
机译:土壤水分是水文学,气象学和农业中的关键变量。它受地形,土壤属性,植被类型,管理和气象条件等许多因素的影响。这些因素在控制空间格局和时间动态方面的作用通常是未知的。当前研究的目的是分析在不同空间尺度(从中尺度流域到地块)和不同方法(点测量,遥感和建模)的各种土地利用类型下获得的时空土壤水分模式。我们使用一套统一的工具来确定方法的特定效果,以及特定地点和规模的控制因素。使用德国西部Rur流域的九个不同数据集分析了土壤水分的空间格局及其时空发展。对于所有数据集,我们发现变异系数与平均土壤湿度之间呈负线性关系,表明在较高平均土壤湿度下空间变异性较低。与种植面积相比,对于森林次流域而言,这种关系的抵消量更大,在相似的平均土壤湿度值下,变异性通常更大。通过对土壤湿度模式的地统计学分析,我们确定了三组数据集,其底值和理论变异函数的范围相似:(i)来自森林子汇水区的建模和测量数据集(模式主要受土壤特性和地形影响) ,(ii)来自Rur流域裁剪部分的遥感数据集(模式主要受裁剪区域的土地利用结构影响),以及(iii)来自Rur流域裁剪部分的建模数据集(模式主要受Rur集水区影响土壤特性的大规模变化)。分形分析表明,所有分析过的土壤水分模式均表现出多重分形行为,至少具有一个水垢破坏和通常较高的分形维数。在不同的数据集之间发现了相应的尺度断裂。导致这些水垢破坏的因素与地统计分析的结果一致。此外,对不同数据集的联合分析表明,土壤水分动力学的细微差异,特别是在土壤水分的上下边界(在最大孔隙度和土壤萎缩点),可能对土壤水分的格局和变化有很大的影响。它们的自相关结构。根据土地使用的普遍类型和一年中的不同时间,植被会导致土壤湿度模式的空间变异性减少或增加。 (C)2014作者。由Elsevier B.V.发布

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