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首页> 外文期刊>Journal of Hydrology >Topsoil thickness prediction at the catchment scale by integration of invasive sampling, surface geophysics, remote sensing and statistical modeling
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Topsoil thickness prediction at the catchment scale by integration of invasive sampling, surface geophysics, remote sensing and statistical modeling

机译:通过有创采样,地表地球物理,遥感和统计建模的集成,在集水区规模的表土厚度预测

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Topsoil thickness is a critical input in hydrological modeling because it controls, in conjunction with soil hydraulic properties, the partitioning of water fluxes between the atmosphere and the subsurface. To parameterize a distributed hydrological model that computes groundwater recharge, we developed a data-integration method to predict the clayey topsoil thickness (CTT) that we applied in a small catchment in Portugal (~19km~2). The prediction method is based on the integration of: (i) invasive sampling used as a CTT reference dataset (61 invasive measurements); (ii) surface geophysics applied to complement the time-consuming invasive sampling; (iii) remote sensing (RS) image processing (high resolution QuickBird image, aerial photographs and ASTER GDEM) used to derive soils classes and terrain parameters; (iv) geostatistical mixed linear model (MLM) applied to integrate the CTT variability at the catchment scale using geophysical and RS derived auxiliary variables. The selection of the appropriate statistical model derived from the MLM was based on the verification of model assumptions using diagnostic tools.We first converted 436 Geonics? EM-31 field measurements of soil apparent electrical conductivity (EC. _a) into CTT. This was achieved by building MLM based calibration models that integrated 25 invasive CTT measurements paired with corresponding EC. _a and RS-derived auxiliary variables. Next, we predicted the CTT at the catchment scale by applying the MLM approach and integrating the RS-derived auxiliary variables with: (i) the 436 CTT values derived from surface geophysical dataset; (ii) the 61 CTT values from the reference invasive dataset. The two maps had similar CTT patterns which depicted the spatial variability of the CTT over the geomorphologic catchment features. The prediction map derived from the geophysical dataset resulted in slightly lower CTT values than the reference map (median of 0.87. m against 1.11. m) and a comparable accuracy (RMSE of 0.76. m against 0.88. m). As these differences will be minimized during the calibration process of the hydrological model, the presented methodology is considered suitable for hydrological and environmental studies, in which catchments often need to be investigated over large areas.
机译:表土厚度是水文建模的关键输入,因为它与土壤水力学一起控制了大气与地下之间的水通量分配。为了参数化计算地下水补给的分布式水文模型,我们开发了一种数据集成方法来预测我们在葡萄牙的一个小流域(〜19km〜2)中应用的黏土表土厚度(CTT)。该预测方法基于以下方面的集成:(i)用作CTT参考数据集的侵入性采样(61项侵入性测量); (ii)地表地球物理学被用来补充费时的侵入式采样; (iii)用于得出土壤类别和地形参数的遥感(RS)图像处理(高分辨率QuickBird图像,航拍照片和ASTER GDEM); (iv)地统计学混合线性模型(MLM),用于使用地球物理和RS派生的辅助变量在流域尺度上整合CTT变异性。从MLM得出的适当统计模型的选择是基于使用诊断工具对模型假设的验证。我们首先转换了436 Geonics? EM-31现场测量的土壤表观电导率(EC._a)进入CTT。这是通过建立基于MLM的校准模型来实现的,该模型集成了25种侵入性CTT测量值和相应的EC。 _a和RS派生的辅助变量。接下来,我们通过应用MLM方法并将RS衍生的辅助变量与以下各项相集成来预测集水区规模的CTT:(i)436个来自地面地球物理数据集的CTT值; (ii)来自参考侵入数据集的61个CTT值。这两张地图具有相似的CTT模式,描绘了CTT在地貌流域特征上的空间变异性。从地球物理数据集得出的预测图的CTT值比参考图略低(中位数为0.87。m对1.11。m),并且具有相当的准确性(RMSE为0.76。m对0.88。m)。由于在水文模型的校准过程中这些差异将被最小化,因此所提出的方法被认为适用于水文和环境研究,在这些研究中,流域经常需要在大面积上进行调查。

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