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Factors Controlling Temporal Stability of Surface Soil Moisture: A Watershed-Scale Modeling Study

机译:控制表面土壤水分稳定性的因素:流域规模建模研究

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摘要

The spatial variability of soil moisture makes it difficult to represent watershed-scale soil moisture using traditional point-scale soil moisture sensors. In the temporal stability method, the spatial pattern of soil moisture is assumed to persist with time. Hence, measurements at a representative point can be used to represent the mean soil moisture. We investigated the factors that determine temporal stability and attempted to locate these representative points. Long-term simulated high-resolution soil moisture data, at a watershed scale, were used. Results showed that locations with a dominant vegetation cover and a low topographic wetness index (TI) can provide reasonable mean soil moisture estimates. Using vegetation cover and TI information, we minimized the number of the sampling locations needed for identifying the best estimate of the true watershed-scale mean. The sampling period duration is also a key factor. Using random combination tests, the minimum number of required sampling points and shortest sampling time were estimated. When 10 sampling points were used, a sampling period of 10 mo was required for accurately determining the representative point. Our study results will help apply the temporal stability method to the estimation of areal soil moisture and the calibration and validation of remote sensing data.
机译:土壤水分的空间变异使得难以使用传统的点尺度土壤湿度传感器来代表流域尺度的土壤水分。在时间稳定性方法中,假设土壤水分的空间模式持续存在。因此,代表点的测量可用于表示平均土壤水分。我们调查了确定时间稳定并试图找到这些代表点的因素。使用长期模拟的高分辨率土壤水分数据,处于流域尺度。结果表明,具有主要植被覆盖物和低地形湿度指数(TI)的位置可以提供合理的平均土壤水分估算。使用植被覆盖和TI信息,我们最大限度地减少了识别真正的流域级别的最佳估计所需的采样位置的数量。采样周期持续时间也是一个关键因素。使用随机组合测试,估计所需采样点和最短采样时间的最小数量。当使用10个采样点时,准确地确定代表点需要10个MO的采样周期。我们的研究结果将有助于将时间稳定性方法应用于遥感数据的校准和验证估算。

著录项

  • 来源
    《Vadose zone journal VZJ》 |2017年第10期|共15页
  • 作者单位

    Nanjing Univ Informat Sci &

    Technol Coll Hydrometeorol Nanjing Jiangsu Peoples R China;

    USDA ARS Hydrol &

    Remote Sensing Lab Beltsville MD 20705 USA;

    Hohai Univ State Key Lab Hydrol Water Resources &

    Hydraul En Nanjing Jiangsu Peoples R China;

    Hohai Univ State Key Lab Hydrol Water Resources &

    Hydraul En Nanjing Jiangsu Peoples R China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 天文学、地球科学;
  • 关键词

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