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Daily Terra–Aqua MODIS cloud-free snow and Randolph Glacier Inventory 6.0 combined product (M*D10A1GL06) for high-mountain Asia between 2002 and 2019

机译:每日Terra-Aqua Modis Modis云雪和Randolph冰川库存6.0 2002年至2019年之间的高山亚洲的产品(M * D10A1GL06)

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Snow is a dominant water resource in high-mountain Asia (HMA) and crucial for mountain communities and downstream populations. Snow cover monitoring is significant to understand regional climate change, managing meltwater, and associated hazards/disasters. The uncertainties in passive optical remote-sensing snow products, mainly underestimation caused by cloud cover and overestimation associated with sensors’ limitations, hamper the understanding of snow dynamics. We reduced the biases in Moderate Resolution Imaging Spectroradiometer (MODIS) Terra and Aqua daily snow data and generated a combined daily snow product for high-mountain Asia between 2002 and 2019. An improved MODIS 8 d composite MOYDGL06* product was used as a training data for reducing the underestimation and overestimation of snow in daily products. The daily MODIS Terra and Aqua images were improved by implementing cloud removal algorithms followed by gap filling and reduction in overestimated snow beyond the respective 8 d composite snow extent of the MOYDGL06* product. The daily Terra and Aqua snow products were combined and merged with the Randolph Glacier Inventory version 6.0 (RGI 6.0) described as M*D10A1GL06 to make a more complete cryosphere product with 500 m spatial resolution. The pixel values in the daily combined product are preserved and reversible to the individual Terra and Aqua improved products. We suggest a weight of 0.5 and 1 to snow pixels in either or both Terra and Aqua products, respectively, for deriving snow cover statistics from our final snow product. The values 200, 242, and 252 indicate snow pixels in both Terra and Aqua and have a weight of 1, whereas pixels with snow in one of the Terra or Aqua products have a weight of 0.5. On average, the M*D10A1GL06 product reduces 39.1 % of uncertainty compared to the MOYDGL06* product. The uncertainties due to cloud cover (underestimation) and sensor limitations, mainly larger solar zenith angle (SZA) (overestimation) reduced in this product, are approximately 32.9 % and 6.2 %, respectively. The data in this paper are mainly useful for observation and simulation of climate, hydro-glaciological forcings, calibration, validation, and other water-related studies. The data are available at https://doi.org/10.1594/PANGAEA.918198 (Muhammad, 2020) and the algorithm source code at https://doi.org/10.5281/zenodo.3862058 (Thapa, 2020).
机译:雪是高山亚洲(HMA)的主要水资源,对山区社区和下游人口至关重要。雪覆盖监测对于了解区域气候变化,管理熔融和相关的危害/灾害是重要的。被动光学遥感雪地产品的不确定性,主要是由云覆盖和与传感器限制相关的云覆盖和高估引起的低估,妨碍了对雪动态的理解。我们在2002年和2019年期间减少了适度分辨率成像分光镜(MODIS)Terra和Aqua日常雪数据的偏差,并为高山亚洲生成了一个组合的日常积雪。改进的MODIS 8 D Composite MoydGL06 *产品被用作培训数据降低日常产品中雪的低估和高估。通过实施云移除算法,随后实现云填充和减少超过MoYDG106 *产品的相应8 D复合雪程度的间隙填充和减少,得到了每日Modis Terra和Aqua图像。将每日Terra和Aqua Snow产品合并并与Randolph冰川库存版本6.0(RGI 6.0)合并为M * D10A1GL06,以制作具有500米空间分辨率的更完整的冷冻圈产品。每日组合产品中的像素值被保留并向各个Terra和Aqua改进产品可逆。我们建议分别或两种或两种情况下的雪像素0.5和1,用于从我们的最终雪产品中获得雪覆盖统计数据。值200,242和252表示Terra和Aqua中的雪像素,重量为1,而其中一个Terra或Aqua产品中有雪的像素的重量为0.5。平均而言,与MOYDGL06 *产品相比,M * D10A1GL06产品可降低39.1%的不确定性。由于云覆盖(低估)和传感器限制引起的不确定性,主要在该产品中减少了较大的太阳能天顶角(SZA)(估计),分别为约32.9%和6.2%。本文中的数据主要用于观察和模拟气候,水力冰川冰川强制,校准,验证和其他与水有关的研究。数据在https://do.org/10.1594/pangaea.918198(Muhammad,2020)和Https://do.org/10.5281/zenodo.3862058(Thapa,2020)的算法源代码提供。

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