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Scaling snow observations from the point to the grid element: Implications for observation network design

机译:从点到网格元素缩放雪景观测:对观测网络设计的启示

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The spatial distribution of snow water equivalent (SWE) within 16-, 4-, and 1-km~2 grid elements surrounding six snow telemetry (SNOTEL) stations in the Rio Grande headwaters was characterized using field observations of snowpack properties, satellite data, binary regression tree models, and a spatially distributed net radiation/temperature index snowpack mass balance model. In some cases, SNOTEL SWE values were 200% greater than mean grid element SWE. Analyses designed to identify the optimal location for measuring mean grid element SWE accumulation indicated that only 2.4% of each grid element satisfied the criteria of optimality. Similar analyses for the ablation season showed that point SWE and mean grid element SWE were highly correlated (r = 0.73) in areas with relatively persistent snow cover. These locations did not overlap in space with areas deemed optimal at maximum accumulation; areas with persistent snow cover have relatively high accumulation rates. Therefore future observations may need to be placed with the specific objective of representing either accumulation or ablation season processes. These results have implications for large-scale studies that require ground observations for updating purposes; we show an example of this utility using the SWE product of the National Operational Hydrologic Remote Sensing Center. Furthermore, the relatively consistent spatial patterns of snow accumulation and melt have implications for future observation network design in that results from short-term studies (e.g., 2 years) can be used to design long-term observation networks.
机译:利用对积雪性质,卫星数据,实地观测的实地观测,对围绕里奥格兰德河上游六个雪遥测(SNOTEL)站的16、4和1 km〜2网格单元中的雪水当量(SWE)进行空间分布。二元回归树模型,以及空间分布的净辐射/温度指数积雪质量平衡模型。在某些情况下,SNOTEL SWE值比平均网格元素SWE大200%。为确定用于测量平均网格元素SWE积累的最佳位置而进行的分析表明,每个网格元素中只有2.4%满足最优标准。对消融季节的类似分析表明,在积雪相对持久的地区,点SWE和平均网格元素SWE高度相关(r = 0.73)。这些位置在空间上没有重叠,最大积累的区域被认为是最佳的;积雪持续的地区堆积率较高。因此,未来的观察可能需要以代表蓄积或消融季节过程的特定目标为基础。这些结果对需要地面观测以进行更新的大规模研究具有影响;我们使用国家水文遥感中心的SWE产品展示了该实用程序的示例。此外,积雪和融雪的相对一致的空间格局对未来的观测网络设计有影响,因为短期研究(例如2年)的结果可用于设计长期观测网络。

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