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Ensemble-based assimilation of fractional snow-covered area satellite retrievals to estimate the snow distribution at Arctic sites

机译:基于集合的同化部分被雪覆盖区域卫星取回,以估计北极站点的积雪

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With its high albedo, low thermal conductivity and large water storing capacity, snow strongly modulates the surface energy and water balance, which makes it a critical factor in mid- to high-latitude and mountain environments. However, estimating the snow water equivalent (SWE) is challenging in remote-sensing applications already at medium spatial resolutions of 1?km. We present an ensemble-based data assimilation framework that estimates the peak subgrid SWE distribution (SSD) at the 1?km scale by assimilating fractional snow-covered area (fSCA) satellite retrievals in a simple snow model forced by downscaled reanalysis data. The basic idea is to relate the timing of the snow cover depletion (accessible from satellite products) to the peak SSD. Peak subgrid SWE is assumed to be lognormally distributed, which can be translated to a modeled time series of fSCA through the snow model. Assimilation of satellite-derived fSCA facilitates the estimation of the peak SSD, while taking into account uncertainties in both the model and the assimilated data sets. As an extension to previous studies, our method makes use of the novel (to snow data assimilation) ensemble smoother with multiple data assimilation (ES-MDA) scheme combined with analytical Gaussian anamorphosis to assimilate time series of Moderate Resolution Imaging Spectroradiometer (MODIS) and Sentinel-2 fSCA retrievals. The scheme is applied to Arctic sites near Ny-?lesund (79° N, Svalbard, Norway) where field measurements of fSCA and SWE distributions are available. The method is able to successfully recover accurate estimates of peak SSD on most of the occasions considered. Through the ES-MDA assimilation, the root-mean-square error (RMSE) for the fSCA, peak mean SWE and peak subgrid coefficient of variation is improved by around 75, 60 and 20 %, respectively, when compared to the prior, yielding RMSEs of 0.01, 0.09?m water equivalent (w.e.) and 0.13, respectively. The ES-MDA either outperforms or at least nearly matches the performance of other ensemble-based batch smoother schemes with regards to various evaluation metrics. Given the modularity of the method, it could prove valuable for a range of satellite-era hydrometeorological reanalyses.
机译:由于雪具有高的反照率,低的热导率和大的蓄水能力,雪强烈地调节了表面能和水的平衡,这使其成为中高纬度和山区环境的关键因素。但是,在已经具有1?km中等空间分辨率的遥感应用中,估算雪水当量(SWE)面临挑战。我们提出了一个基于集合的数据同化框架,该框架通过在由降尺度的再分析数据推动的简单积雪模型中同化积雪覆盖面积(fSCA)卫星反演结果,估算了1?km规模的峰值子网格SWE分布(SSD)。基本思想是将积雪枯竭的时间(可从卫星产品中获取)与峰值SSD关联起来。假定峰值子网格SWE是对数正态分布的,可以通过雪模型将其转换为fSCA的建模时间序列。卫星衍生的fSCA的同化有助于估计峰值SSD,同时考虑到模型和同化数据集的不确定性。作为对先前研究的扩展,我们的方法利用新颖的(对雪数据同化)集成更平滑,多数据同化(ES-MDA)方案与高斯分析相结合,同化了中分辨率成像光谱仪(MODIS)和Sentinel-2 fSCA检索。该方案适用于Ny-lesund附近的北极站点(北纬79°,挪威斯瓦尔巴特群岛),那里可以进行fSCA和SWE分布的现场测量。在大多数考虑的情况下,该方法都能成功恢复峰值SSD的准确估算。通过ES-MDA同化,与先前相比,fSCA的均方根误差(RMSE),峰值平均SWE和峰值子网格变异系数分别提高了约75%,60%和20%。 RMSE分别为0.01、0.09?m水当量(we)和0.13。在各种评估指标方面,ES-MDA的性能优于或至少接近其他基于整体的批处理平滑器方案。鉴于该方法的模块化,对于一系列卫星时代的水文气象重新分析而言,它可能是有价值的。

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