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A Nomograph to Incorporate Geophysical Heterogeneity in Soil Moisture Downscaling

机译:将土壤物理异质性纳入土壤水分降尺度的Nomograph

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Hydrological applications require robust and periodic spatially distributed soil moisture data. Radiometer-based soil moisture (similar to 30-60-km resolution), after being appropriately downscaled (5-km resolution), can be a valuable resource for providing such data globally. However, the accuracy of available downscaling algorithms is severely affected by subgrid variability in geophysical factors and precipitation within a satellite footprint. In this work, we introduce a scaling nomograph that incorporates the scale and site specific dependence of soil moisture on geophysical heterogeneity and antecedent wetness conditions to overcome this limitation. We developed functional scaling relationships to estimate the semivariogram of downscaled soil moisture change without any available fine-scale soil moisture data. The nomograph enables these relationships to be specific to the geophysical heterogeneity and antecedent wetness within a radiometer-based satellite footprint through footprint specific heterogeneity and wetness indices. The heterogeneity index quantifies the subgrid scale variability and covariability of soil, vegetation, and topography within the footprint, and the wetness index is a measure of antecedent precipitation. The nomograph was developed for Arizona, Iowa, and Oklahoma and can enable downscaling to scales varying between 0.8 and 6.4km. The true power of the nomograph is to enable the use of static dominant factors like soil to define dynamic scale specific scaling relationships for soil moisture for different kinds of land use and land cover in a data driven yet scientific approach, thus providing spatial transferability to the downscaling scheme. The spatial transferability of the nomograph was validated by downscaling Soil Moisture Ocean Salinity data in Manitoba, Canada.Plain Language Summary The launch of numerous satellites like National Aeronautics and Space Administration's (NASA) Soil Moisture Active Passive satellite and European Space Agency's (ESA) Soil Moisture Ocean Salinity satellite has opened avenues for the use of remotely sensed soil moisture in operational modeling scenarios. However, these data sets require some degree of downscaling before being effectively incorporated into models for operational use. In this study, we devised a new technique to downscale satellite based remotely sensed soil moisture data to useful operational scales. The technique proposed in this study is a first demonstration for a data-driven method to incorporate subgrid variability of land-surface heterogeneity and precipitation into the scaling technique which have extensively been established as limiting factors for the performance of scaling algorithms. The technique is based on a novel nomograph (look-up graph) introduced in this study that enables the scaling algorithm to be dynamic based on the local heterogeneity and prevalent wetness conditions and has the potential for spatial transferability.
机译:水文应用需要稳定且周期性的空间分布的土壤湿度数据。基于辐射计的土壤湿度(类似于30-60 km分辨率),经过适当缩减(<5 km分辨率),可以成为在全球范围内提供此类数据的宝贵资源。但是,可用的降尺度算法的准确性受到地球物理因素的亚网格变异性和卫星覆盖范围内降水的严重影响。在这项工作中,我们引入了标度列线图,它结合了土壤水分对地球物理非均质性和前期湿润条件的尺度和位置的特定依赖性,以克服这一局限性。我们建立了函数比例关系,以估算没有任何可用的细尺度土壤水分数据的土壤水分下降尺度的半变异函数。 nomograph通过足迹特定的​​异质性和湿度指数,使这些关系特定于基于辐射计的卫星足迹内的地球物理异质性和先验湿度。异质性指数量化了足迹内土壤,植被和地形的亚网格尺度变异性和协变性,而湿度指数则是前期降水的量度。列线图仪是为亚利桑那州,爱荷华州和俄克拉荷马州开发的,可以将比例尺缩小到0.8至6.4公里之间。 nomograph的真正功能是能够以数据驱动的科学方法,利用诸如土壤之类的静态主导因素来定义土壤水分的动态比例特定比例关系,以针对不同类型的土地利用和土地覆被,从而为土壤提供空间转移性。缩减方案。平版图的空间转移性通过缩减加拿大曼尼托巴省的土壤水分海洋盐度数据得到验证。普通语言摘要发射了许多卫星,例如国家航空航天局(NASA)的土壤水分主动无源卫星和欧洲航天局(ESA)的土壤水分海洋盐度卫星为在操作建模方案中使用遥感土壤水分开辟了道路。但是,在将这些数据集有效合并到模型中以进行操作之前,需要对它们进行一定程度的缩减。在这项研究中,我们设计了一种新技术,可以将基于卫星的遥感土壤水分数据缩减为有用的操作规模。这项研究中提出的技术是一种数据驱动方法的首次演示,该方法将土地网非均质性和降水的亚网格变异性纳入比例缩放技术,该方法已被广泛确立为限制比例缩放算法性能的因素。该技术基于本研究中引入的新型诺模图(查找图),该诺模图使缩放算法能够基于局部异质性和普遍的湿度条件而动态变化,并具有空间可传递性的潜力。

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