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A Joint Landsat- and MODIS-Based Reanalysis Approach for Midlatitude Montane Seasonal Snow Characterization

机译:基于阳台和MODIS的中态山地季节性雪特征

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摘要

A new snow reanalysis method is presented that is designed to jointly assimilate Landsat- and MODIS-derived (MODSCAG) fractional snow covered area (fSCA) to characterize seasonal snow in remote regions like High Mountain Asia (HMA) where in situ data is severely lacking. The method leverages existing readily available global datasets for forcing a snow model and uses the fSCA retrievals along with the ensemble prior model estimates to derive posterior estimates using a Bayesian framework. The method addresses MODIS viewing-geometry effects on the fSCA retrievals by accounting for viewing angle dependent measurement errors and using a CDF-matching technique to improve the joint fSCA measurement consistency before assimilation. The method was verified through comparison with the Airborne Snow Observatory (ASO) snow water equivalent (SWE) estimates over the Tuolumne River watershed in California. The posterior SWE estimates were shown to be much more consistent with the independent ASO estimates across the three WYs examined. Tests over Tuolumne showed that in cases where sufficient Landsat observations are available (i.e., with multiple sensors and in areas of overlapping Landsat tiles), assimilation of only Landsat data may be optimal, which is attributable primarily to the higher spatial resolution of the raw Landsat data, but that in cases with fewer Landsat measurements (i.e., with single Landsat tiles and/or significant reduction due to clouds), the additional screened and CDF-matched MODIS-based measurements can have a positive (albeit marginal) impact. Illustrative results are presented for nine HMA test tiles to illustrate how the method can provide posterior estimates of the space-time climatology of SWE storage in areas where in situ data does not generally exist. Ongoing work is being conducted to use the method outlined herein to generate an HMA-wide reanalysis dataset that will provide an opportunity for a more thorough characterization of HMA seasonal snow storage and dynamics over the joint Landsat-MODIS era. The method is generalizable to any midlatitude montane region where seasonal snow is important.
机译:提出了一种新的雪解析方法,旨在共同同化Landsat和Modis-errived(Modscag)分数雪覆盖区域(FSCA),以在高山亚洲(HMA)这样的偏远地区的季节性雪中,其中缺乏缺乏数据。该方法利用现有的易于使用的全局数据集来强制雪模型,并使用FSCA检索以及集合现有模型估计来使用贝叶斯框架来导出后估计。该方法通过算用于查看角度相关的测量误差并使用CDF匹配技术来解决FSCA检索的MODIS查看几何效应,并使用CDF匹配技术来提高同化之前的关节FSCA测量一致性。通过与加利福尼亚州的橡木河流域的空气雪地天文台(ASO)估计进行比较,通过比较来验证该方法。后,SWE估计显示与三个审查的三个WYS的独立ASO估计值得更加一致。在橡树上测试显示,在有足够的Landsat观察的情况下(即,具有多个传感器和重叠的Landsat瓦片的区域),只有Landsat数据的同化可能是最佳的,这主要是原始Landsat的较高空间分辨率数据,但在较少的LANDSAT测量的情况下(即,由于云引起的单个LANDSAT瓷砖和/或显着减少),额外的筛选和CDF匹配的基于MODIS的测量可以具有正(尽管边缘)的影响。呈现九个HMA测试瓦片的说明性结果,以说明该方法如何提供在原位数据通常不存在的区域中的SWE存储空间气候学的后估计。正在进行持续的工作以使用本文所述的方法来生成HMA范围的再分析数据集,该数据集将为HMA季节性雪储存和动态进行更全面地描述联合Landsat-Modis Era的机会。该方法是概遍的,对于季节性雪是重要的。

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