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首页> 外文期刊>Water resources research >Validating reconstruction of snow water equivalent in California's Sierra Nevada using measurements from the NASA Airborne Snow Observatory
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Validating reconstruction of snow water equivalent in California's Sierra Nevada using measurements from the NASA Airborne Snow Observatory

机译:使用NASA空中降雪天文台的测量数据验证加利福尼亚内华达山脉的雪水当量重建

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摘要

Accurately estimating basin-wide snow water equivalent (SWE) is the most important unsolved problem in mountain hydrology. Models that rely on remotely sensed inputs are especially needed in ranges with few surface measurements. The NASA Airborne Snow Observatory (ASO) provides estimates of SWE at 50 m spatial resolution in several basins across the Western U.S. during the melt season. Primarily, water managers use this information to forecast snowmelt runoff into reservoirs; another impactful use of ASO measurements lies in validating and improving satellite-based snow estimates or models that can scale to whole mountain ranges, even those without ground-based measurements. We compare ASO measurements from 2013 to 2015 to four methods that estimate spatially distributed SWE: two versions of a SWE reconstruction method, spatial interpolation from snow pillows and courses, and NOAA's Snow Data Assimilation System (SNODAS). SWE reconstruction downscales energy forcings to compute potential melt, then multiplies those values by satellite-derived estimates of fractional snow-covered area to calculate snowmelt. The snowpack is then built in reverse from the date the snow is observed to disappear. The two SWE reconstruction models tested include one that employs an energy balance calculation of snowmelt, and one that combines net radiation and degree-day approaches to estimate melt. Our full energy balance model, without ground observations, performed slightly better than spatial interpolation from snow pillows, having no systematic bias and 26% mean absolute error when compared to SWE from ASO. Both reconstruction models and interpolation were more accurate than SNODAS.
机译:准确估算流域范围的雪水当量(SWE)是山区水文学中最重要的未解决问题。在很少进行表面测量的范围内,尤其需要依赖于遥感输入的模型。 NASA空中降雪天文台(ASO)在融化季节期间在美国西部多个盆地中以50 m空间分辨率提供了SWE的估计值。首先,水管理者使用此信息来预测融雪径流进入水库; ASO测量的另一个有影响的用途是验证和改进可扩展到整个山脉的基于卫星的降雪估计或模型,即使没有基于地面的测量也是如此。我们将2013年至2015年的ASO测量值与四种估计空间分布SWE的方法进行了比较:SWE重建方法的两种版本,雪枕和航线的空间插值以及NOAA的雪数据同化系统(SNODAS)。 SWE重建降低了能量强迫以计算潜在的融化,然后将这些值乘以卫星推算的积雪面积分数估算值来计算融雪。然后从观察到雪消失的日期起反向建造雪堆。测试的两个SWE重建模型包括一个使用融雪的能量平衡计算的模型,以及一个结合净辐射和度日方法估算融雪的模型。与ASO的SWE相比,我们没有地面观测的完整能量平衡模型的性能要优于雪枕的空间插值,没有系统偏差,平均绝对误差为26%。重建模型和插值均比SNODAS更为准确。

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  • 来源
    《Water resources research》 |2016年第11期|8437-8460|共24页
  • 作者单位

    Univ Calif Santa Barbara, Earth Res Inst, Santa Barbara, CA 93106 USA;

    Natl Snow & Ice Data Ctr, Boulder, CO USA;

    US Army Corps Engineers, Cold Reg Res & Engn Lab, Hanover, NH USA;

    CALTECH, Jet Prop Lab, Pasadena, CA USA;

    Univ Calif Santa Barbara, Bren Sch Environm Sci & Management, Santa Barbara, CA 93106 USA;

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