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Multiscale influences of soil properties on soil water content distribution in a watershed on the Chinese Loess Plateau.

机译:黄土高原流域土壤性质对土壤水分分布的多尺度影响。

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摘要

The characterization of hydrological and biological processes requires information on the scaling properties of soil water content (SWC). In this regard, accurate estimation of nonstationary and nonlinear SWC distribution for various scales is a challenge. In this study, multivariate empirical mode decomposition (MEMD) was applied to reveal the multiscale influences of soil properties on SWC distribution in the Loess Plateau landscapes. Seven data sets analyzed in this study were SWC of 0 to 100 cm measured at seven different periods from two transects with obvious differences in five soil properties, that is, soil organic matter, clay, silt, sand, and bulk density. Soil water content and soil properties were separated into different numbers (four in Transect 1 and three in Transect 2) of intrinsic mode functions (IMF) and residue representing different "common" scales by MEMD. Scale-specific relationships between SWC and soil properties varied with scales and measurement periods. The influence of soil properties on SWC was more deterministic at greater scales. Soil water content at each IMF (specific scale) or residue was predicted from the scale-specific controlling factors and the summing up of all the predicted IMF, and residue simulated well the SWC distribution at the measurement scale. Soil organic matter and soil particle composition were the main explanatory variables for the overall SWC estimation, respectively, for the two transects. The overall SWC prediction using MEMD outperformed the SWC predictions using the traditional method based on the original data.
机译:水文和生物过程的表征需要有关土壤含水量(SWC)的水垢性质的信息。在这方面,对于各种尺度的非平稳和非线性SWC分布的准确估计是一个挑战。在这项研究中,运用多元经验模式分解(MEMD)揭示了土壤性质对黄土高原景观SWC分布的多尺度影响。在这项研究中分析的七个数据集是在两个不同的样带的七个不同时期内测量的SWC为0至100 cm,在五个土壤特性(即土壤有机质,粘土,粉砂,沙子和容重)方面存在明显差异。通过MEMD将土壤水分和土壤特性分为不同数量的固有模式函数(IMF)(在Transect 1中为四个,在Transect 2中为三个)和代表不同“公共”标度的残留物。 SWC与土壤特性之间的尺度特定关系随尺度和测量周期而变化。在更大范围内,土壤性质对SWC的影响更具确定性。根据规模特定的控制因素以及所有预测的IMF的总和,预测每个IMF(特定规模)或残留物的土壤含水量,残留物很好地模拟了测量规模的SWC分布。对于两个样带,土壤有机质和土壤颗粒组成分别是整体SWC估算的主要解释变量。使用MEMD的整体SWC预测要优于使用基于原始数据的传统方法的SWC预测。

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