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Linking snowfall and snow accumulation to generate spatial maps of SWE and snow depth

机译:将降雪和积雪联系起来以生成SWE和积雪深度的空间图

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It is critically important but challenging to estimate the amount of snow on the ground over large areas due to its strong spatial variability. Point snow data are used to generate or improve (i.e., blend with) gridded estimates of snow water equivalent (SWE) by using various forms of interpolation; however, the interpolation methodologies often overlook the physical mechanisms for the snow being there in the first place. Using data from the Snow Telemetry and Cooperative Observer networks in the western United States, we show that four methods for the spatial interpolation of peak of winter snow water equivalent (SWE) and snow depth based on distance and elevation can result in large errors. These errors are reduced substantially by our new method, i.e., the spatial interpolation of these quantities normalized by accumulated snowfall from the current or previous water years. Our method results in significant improvement in SWE estimates over interpolation techniques that do not consider snowfall, regardless of the number of stations used for the interpolation. Furthermore, it can be used along with gridded precipitation and temperature data to produce daily maps of SWE over the western United States that are comparable to existing estimates (which are based on the assimilation of much more data). Our results also show that not honoring the constraint between SWE and snowfall when blending in situ data with gridded data can lead to the development and propagation of unrealistic errors.
机译:至关重要的是,由于其很大的空间可变性,估计大面积地面雪的数量具有挑战性。点雪数据用于通过使用各种形式的插值来生成或改善(即与之混合)雪水当量(SWE)的网格化估计。但是,插值方法常常忽略了最初存在积雪的物理机制。使用来自美国西部的Snow Telemetry和合作观察者网络的数据,我们显示了基于距离和海拔高度对冬季雪水当量(SWE)峰值和雪深进行空间插值的四种方法会导致较大的误差。这些误差可以通过我们的新方法大大降低,即通过从当前或先前水年累计降雪对这些数量进行空间插值归一化。相对于不考虑降雪的插值技术,无论插值所用的站数如何,我们的方法均会显着改善SWE估计。此外,它可以与栅格化的降水和温度数据一起使用,以生成美国西部SWE的每日地图,这些地图可与现有估算(基于更多数据的同化)进行比较。我们的结果还表明,在将原位数据与网格数据混合时,如果不遵守SWE和降雪之间的约束条件,可能会导致不切实际的错误的发生和传播。

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