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Estimating the spatial distribution of snow water equivalent and simulated snowmelt runoff modeling in headwater basins of the semi-arid Southwest.

机译:估算西南半干旱水源盆地雪水当量的空间分布并模拟融雪径流模型。

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The spatial distribution of snowpack in relation to snow water equivalent (SWE) and covered extent is highly variable in time both seasonally and interannually. In order to assess basin water resources, SWE must be distributed to areal estimates. This spatially distributed SWE connects the point scale to the larger scale of the basin (i.e. macro-scale), requiring a combination approach of statistical interpolation techniques and snowpack extent constraint from remote sensing. This research connects those multiple spatial scales and applies the combined remote sensing and ground-based SWE products in a hydrologic model setting to aid in improving streamflow forecasting in the mountainous terrain of snowmelt-dominated basins, a current modeling gap. Four specific advancements were achieved: (1) a comprehensive assessment of spatial distribution techniques in interpolating point snow water equivalent (SWE) measurements at snow telemetry (SNOTEL) stations to the macro-scale was made and an optimal technique for distributing SWE on this scale was obtained; (2) differences between two major data sources of SWE (SNOTEL and snowcourse) were quantified for both point-scale variability and interpolated macro-scale variability to determine spatial and temporal differences in data sources for dry, average and wet years to better inform water resources management applications; (3) basin-scale estimates of ground-based SWE and snow covered area (SCA) from remote sensing were evaluated relative to equivalent fields calculated by a hydrologic model and the effect of assimilating the remote sensing products into the model were investigated; and (4) in the context of (3), improvements were made in macro-scale SCA estimates through both a canopy correction and a low pass statistical filter in an effort to correct for the relatively low resolution of remotely sensed estimates.
机译:积雪相对于雪水当量(SWE)和覆盖范围的空间分布在季节和季节上随时间变化很大。为了评估流域水资源,必须将SWE分配给面积估算。这种空间分布的SWE将点尺度连接到盆地的更大尺度(即宏观尺度),这需要统计插值技术和来自遥感的积雪范围约束的组合方法。这项研究将这些多个空间尺度联系起来,并在水文模型设置中应用组合的遥感和地面SWE产品,以帮助改善以融雪为主的盆地山区的水流预报,这是当前的模型空白。取得了四个具体的进展:(1)全面评估了将雪遥测(SNOTEL)站的点雪水当量(SWE)测量值内插到宏观尺度的空间分布技术,并提出了在该尺度上分布SWE的最佳技术获得; (2)对SWE的两个主要数据源(SNOTEL和雪道)之间的差异进行了定量的点尺度变异性和内插宏观尺度变异性定量分析,以确定干旱,平均和湿润年份数据源的时空差异,以更好地为水提供信息资源管理应用程序; (3)相对于水文模型计算的当量场,评估了基于遥感的地面SWE和积雪面积(SCA)的流域规模估计,并研究了将遥感产品吸收到模型中的效果; (4)在(3)的背景下,通过冠层校正和低通统计过滤器对宏观尺度SCA估计进行了改进,以校正遥感估计的较低分辨率。

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