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A method to downscale soil moisture to fine-resolutions using topographic, vegetation, and soil data.

机译:一种使用地形,植被和土壤数据将土壤水分缩小至高分辨率的方法。

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摘要

Various remote-sensing and ground-based sensor methods are available to estimate soil moisture over large regions with spatial resolutions greater than 500 m. However, applications such as water management and agricultural production require finer resolutions (10 - 100 m grid cells). To reach such resolutions, soil moisture must be downscaled using supplemental data. Several downscaling methods use only topographic data, but vegetation and soil characteristics also affect fine-scale soil moisture variations. In this thesis, a downscaling model that uses topographic, vegetation, and soil data is presented, which is called the Equilibrium Moisture from Topography, Vegetation, and Soil (EMT+VS) model. The EMT+VS model assumes a steady-state water balance involving: infiltration, deep drainage, lateral flow, and evapotranspiration. The magnitude of each process at each location is inferred from topographic, vegetation, and soil characteristics. To evaluate the model, it is applied to three catchments with extensive soil moisture and topographic data and compared to an Empirical Orthogonal Function (EOF) downscaling method. The primary test catchment is Cache la Poudre, which has variable vegetation cover. Extensive vegetation and soil data were available for this catchment. Additional testing is performed using the Tarrawarra and Nerrigundah catchments where vegetation is relatively homogeneous and limited soil data are available for interpolation. For Cache la Poudre, the estimated soil moisture patterns improve substantially when the vegetation and soil data are used in addition to topographic data, and the performance is similar for the EMT+VS and EOF models. Adding spatially-interpolated soil data to the topographic data at Tarrawarra and Nerrigundah decreases model performance and results in worse performance than the EOF method, in which the soil data are not highly weighted. These results suggest that the soil data must have greater spatial detail to be useful to the EMT+VS model.
机译:各种遥感和基于地面的传感器方法都可以用来估计空间分辨率大于500 m的大区域的土壤湿度。但是,诸如水管理和农业生产等应用需要更高的分辨率(10-100 m网格)。为了达到这样的分辨率,必须使用补充数据缩小土壤湿度。几种缩小尺度的方法仅使用地形数据,但是植被和土壤特征也会影响精细尺度的土壤湿度变化。本文提出了一种利用地形,植被和土壤数据的降尺度模型,称为地形,植被和土壤平衡水分模型(EMT + VS)。 EMT + VS模型假定稳态水平衡涉及:入渗,深层排水,侧向流和蒸散量。根据地理位置,植被和土壤特征,可以推断出每个位置的每个过程的大小。为了评估该模型,将其应用于具有大量土壤水分和地形数据的三个流域,并与经验正交函数(EOF)降尺度方法进行了比较。主要的试验集水区是Cache la Poudre,其植被覆盖范围可变。该流域可获得大量的植被和土壤数据。使用Tarrawarra和Nerrigundah流域进行了额外的测试,这些地区的植被相对均一,有限的土壤数据可供插值。对于Cache la Poudre,除了地形数据外,当使用植被和土壤数据时,估计的土壤水分格局也将大大改善,并且EMT + VS和EOF模型的性能相似。将空间插值的土壤数据添加到Tarrawarra和Nerrigundah的地形数据中会降低模型性能,并导致性能比EOF方法差,因为EOF方法对土壤数据的加权不高。这些结果表明,土壤数据必须具有更大的空间细节,才能对EMT + VS模型有用。

著录项

  • 作者

    Ranney, Kayla J.;

  • 作者单位

    Colorado State University.;

  • 授予单位 Colorado State University.;
  • 学科 Civil engineering.
  • 学位 M.S.
  • 年度 2014
  • 页码 79 p.
  • 总页数 79
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:53:46

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