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首页> 外文期刊>Remote Sensing >A Self-Calibrating Runoff and Streamflow Remote Sensing Model for Ungauged Basins Using Open-Access Earth Observation Data
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A Self-Calibrating Runoff and Streamflow Remote Sensing Model for Ungauged Basins Using Open-Access Earth Observation Data

机译:基于开放获取地球观测数据的无规盆地自校准径流与流量遥感模型

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Due to increasing pressures on water resources, there is a need to monitor regional water resource availability in a spatially and temporally explicit manner. However, for many parts of the world, there is insufficient data to quantify stream flow or ground water infiltration rates. We present the results of a pixel-based water balance formulation to partition rainfall into evapotranspiration, surface water runoff and potential ground water infiltration. The method leverages remote sensing derived estimates of precipitation, evapotranspiration, soil moisture, Leaf Area Index, and a single F coefficient to distinguish between runoff and storage changes. The study produced significant correlations between the remote sensing method and field based measurements of river flow in two Vietnamese river basins. For the Ca basin, we found R 2 values ranging from 0.88–0.97 and Nash–Sutcliffe efficiency (NSE) values varying between 0.44–0.88. The R 2 for the Red River varied between 0.87–0.93 and NSE values between 0.61 and 0.79. Based on these findings, we conclude that the method allows for a fast and cost-effective way to map water resource availability in basins with no gauges or monitoring infrastructure, without the need for application of sophisticated hydrological models or resource-intensive data.
机译:由于对水资源的压力增加,因此需要以时空上明确的方式来监测区域水资源的可用性。但是,对于世界许多地区,没有足够的数据来量化河流流量或地下水的渗透率。我们介绍了基于像素的水平衡公式的结果,该公式将降雨划分为蒸散量,地表水径流和潜在的地下水入渗。该方法利用遥感得出的降水,蒸散量,土壤湿度,叶面积指数和单个F系数的估算值来区分径流和储水量变化。该研究在两个越南流域的遥感方法与基于流量的野外测量之间产生了显着的相关性。对于Ca盆地,我们发现R 2值在0.88-0.97之间,纳什-萨特克利夫效率(NSE)值在0.44-0.88之间变化。红河的R 2在0.87至0.93之间变化,NSE值在0.61至0.79之间变化。基于这些发现,我们得出结论,该方法提供了一种快速且经济高效的方式来绘制无需计量器或监控基础设施的流域水资源可用性的地图,而无需应用复杂的水文模型或资源密集型数据。

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