利用Sentinel-2卫星图像估算北哈萨克斯坦地区积雪分量的雪高和雪水当量

Zhanassyl Teleubay, F. Yermekov, Zhanat Toleubekova, B.B. Shmatov, Yernar Raiev, A. Assylkhanova
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摘要

气候变化对积雪的影响会对自然和人为过程产生重大影响。依赖冬季降水的水资源和农业企业受到雪库和融化状态变化的严重影响。本文展示了LLP“北哈萨克斯坦AES”中积雪厚度估算的比较结果,该估算采用了独特的技术(二次、指数和线性函数),一方面用于评估部分积雪(SCF),另一方面用于证明雪水当量(SWE),另另一方面则采用了现场视角。2020年2月26日至29日,在25000公顷的土地上进行了实地测量。因此,在560个点测量积雪厚度,在70个点测量其密度。应用现有的SCF计算方法,很明显,二次方程在0.01 m的均方根误差下提供了更可靠的结果,其次是线性-0.12 m和指数-0.13 m方法。这项工作表明,哈萨克斯坦北部的雪高与SCF之间存在很强的相关性,即二次函数。因此,我们强烈建议使用Sentinel-2 MSI和二次SCF估计函数进行积雪估计、进一步的春季洪水预测和其他水文研究。关键词:雪高,积雪率,归一化差异雪指数,雪水当量,哨兵-2 MSI,北哈萨克斯坦
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Snow Height and Snow Water Equivalent Estimation from Snow Cover Fraction Using Sentinel-2 Satellite Images in North Kazakhstan
Climate change's influence on snowpack can significantly affect natural and anthropogenic processes. Water resources and agri-business, which depend on winter precipitation, are highly affected by variations in a snowbank and melting regimes. This paper demonstrates the comparison results of the snowpack thickness estimation in the LLP "North Kazakhstan AES" adopting distinctive techniques (quadratic, exponential, and linear functions) for assessing Fractional Snow Cover (SCF) and demonstrating Snow Water Equivalent (SWE) on the one hand, and in-situ perspective on the other. Between the 26–29 of February 2020, a field measurement was managed on the territory of 25,000 hectares. Accordingly, the thickness of the snowpack was surveyed at 560 points, and its density was measured at 70 points. Applying existing methodologies of SCF computation, it became apparent that the quadratic equation provides more reliable results at RMSE of 0.01 m, followed by linear -0.12 m and exponential -0.13 m methods. This work showed a strong correlation between snow height and SCF, namely the quadratic function in Northern Kazakhstan. Thus, we strongly suggest using Sentinel-2 MSI and the quadratic SCF estimation function for snow cover estimation, further spring flood forecasting, and other hydrological studies. Keywords: snow height, snow cover fraction, normalized-difference snow index, snow water equivalent, Sentinel-2 MSI, North Kazakhstan
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