探索利用多源高分辨率卫星数据进行山区集水区雪水当量重建

IF 4.4 2区 地球科学 Q1 GEOGRAPHY, PHYSICAL Cryosphere Pub Date : 2023-06-21 DOI:10.5194/tc-17-2387-2023
Valentina Premier, C. Marín, G. Bertoldi, R. Barella, C. Notarnicola, L. Bruzzone
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引用次数: 2

摘要

摘要水文循环受季节积雪的积累和融化的强烈影响。因此,山脉常被称为世界的“水塔”。在这种情况下,一个关键变量是雪水当量(SWE)。然而,积雪积累、再分布和消融的复杂过程给其量化和预测带来了很大的挑战。在这项工作中,我们探索了使用多源数据在25 m的高空间分辨率(HR)下重建SWE。为此,我们提出了一种基于(i)原位雪深或SWE观测、温度数据和合成孔径雷达(SAR)图像的新方法,以确定像元状态,即是否正在经历SWE增加(积累)或减少(消融);(ii)由高分辨率和低分辨率多光谱光学卫星图像导出的积雪面积(SCA)图的每日HR时间序列,以确定积雪存在的天数。(iii)由原位温度驱动的度-日模型,以确定潜在的融化。考虑到山区典型的高空间异质性,使用HR图像代表了一种重要的创新,使我们能够更充分地采样其分布,从而获得高度详细的空间化信息。所提出的SWE重建方法还预测了一种新的SCA时间序列正则化技术,该技术基于像素状态对不可能的转换进行建模,即,当预期像素类处于积累或平衡状态时,从雪到无雪的错误变化,反之亦然,当预期像素类处于消融或平衡状态时,从无雪到雪的错误变化。此外,它还重建了整个水文季节的SWE,包括晚降雪。该方法不需要空间化降水信息作为输入,而空间化降水信息通常受不确定性的影响。该方法在两个不同的测试集水区提供了良好的结果:加利福尼亚州圣华金河的南叉和意大利的Schnals集水区。当对HR空间化参考地图(显示平均偏差为- 22 mm,均方根误差- RMSE - 212 mm,相关性为0.74),对较粗分辨率的日常数据集(显示平均偏差为- 44 mm, RMSE为127 mm,相关性为0.66)和手动测量(显示平均偏差为- 5 mm, RMSE为191 mm,相关性为0.35)进行评估时,它获得了良好的一致性。讨论了误差的主要来源,以提供对几种水文和生态应用可能感兴趣的方法的主要优点和缺点的见解。
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Exploring the use of multi-source high-resolution satellite data for snow water equivalent reconstruction over mountainous catchments
Abstract. The hydrological cycle is strongly influenced by the accumulation and melting of seasonal snow. For this reason, mountains are often claimed to be the “water towers” of the world. In this context, a key variable is the snow water equivalent (SWE). However, the complex processes of snow accumulation, redistribution, and ablation make its quantification and prediction very challenging. In this work, we explore the use of multi-source data to reconstruct SWE at a high spatial resolution (HR) of 25 m. To this purpose, we propose a novel approach based on (i) in situ snow depth or SWE observations, temperature data and synthetic aperture radar (SAR) images to determine the pixel state, i.e., whether it is undergoing an SWE increase (accumulation) or decrease (ablation), (ii) a daily HR time series of snow cover area (SCA) maps derived by high- and low-resolution multispectral optical satellite images to define the days of snow presence, and (iii) a degree-day model driven by in situ temperature to determine the potential melting. Given the typical high spatial heterogeneity of snow in mountainous areas, the use of HR images represents an important novelty that allows us to sample its distribution more adequately, thus resulting in highly detailed spatialized information. The proposed SWE reconstruction approach also foresees a novel SCA time series regularization technique that models impossible transitions based on the pixel state, i.e., the erroneous change in the pixel class from snow to snow-free when it is expected to be in accumulation or equilibrium and, vice versa, from snow-free to snow when it is expected to be in ablation or equilibrium. Furthermore, it reconstructs the SWE for the entire hydrological season, including late snowfall. The approach does not require spatialized precipitation information as input, which is usually affected by uncertainty. The method provided good results in two different test catchments: the South Fork of the San Joaquin River, California, and the Schnals catchment, Italy. It obtained good agreement when evaluated against HR spatialized reference maps (showing an average bias of −22 mm, a root mean square error – RMSE – of 212 mm, and a correlation of 0.74), against a daily dataset at coarser resolution (showing an average bias of −44 mm, an RMSE of 127 mm, and a correlation of 0.66), and against manual measurements (showing an average bias of −5 mm, an RMSE of 191 mm, and a correlation of 0.35). The main sources of error are discussed to provide insights into the main advantages and disadvantages of the method that may be of interest for several hydrological and ecological applications.
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来源期刊
Cryosphere
Cryosphere GEOGRAPHY, PHYSICAL-GEOSCIENCES, MULTIDISCIPLINARY
CiteScore
8.70
自引率
17.30%
发文量
240
审稿时长
4-8 weeks
期刊介绍: The Cryosphere (TC) is a not-for-profit international scientific journal dedicated to the publication and discussion of research articles, short communications, and review papers on all aspects of frozen water and ground on Earth and on other planetary bodies. The main subject areas are the following: ice sheets and glaciers; planetary ice bodies; permafrost and seasonally frozen ground; seasonal snow cover; sea ice; river and lake ice; remote sensing, numerical modelling, in situ and laboratory studies of the above and including studies of the interaction of the cryosphere with the rest of the climate system.
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