Mapping Wet Snow using SAR C-Band through Google Earth Engine

Fahim Irshad, Jahanzeb Malik, R. Z. Khalil
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引用次数: 1

Abstract

Wet snow is an early indicator of snow melting in an area. Increase in liquid water content in snow pack leads to snow wetness. Synthetic aperture radar bands are highly sensitive to snow wetness due to presence of water on snow surface. Spaceborne Sentinel-1 data provides the capability to produce snow maps during spring and summer season which can be used in hydrological and watershed studies. Nagler's wet snow algorithm was applied through GEE in Deosai region which has relatively uniform elevation than surrounding areas and it is covered completely by snow most of the year. Downloading and processing of SAR data is laborious and time taking process which brings the need of a modern solution. Google Earth Engine (GEE) is cloud based, planetary scale remote sensing platform which has a wide range of remote sensing data. GEE has ready-to-use Sentinel-1 GRD product with optical remote sensing data and meteorological data. Algorithm was tested on GEE for study area for the month of June against Sentinel-2 Normalized Difference Snow Index. Wet snow was mapped with an accuracy of 0.8. Methodology was also applied to generate monthly wet snow maps to understand the snow melting period and snowmelt dynamics. Monthly maps of wet snow were generated and wet snow was detectable from March to July in Deosai region.
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利用Google Earth Engine利用SAR c波段绘制湿雪图
湿雪是一个地区积雪融化的早期指标。积雪中液态水含量的增加导致雪湿。由于雪表面存在水分,合成孔径雷达波段对雪湿性高度敏感。星载哨兵1号数据提供了在春季和夏季制作积雪图的能力,可用于水文和流域研究。Nagler湿雪算法通过GEE应用于Deosai地区,该地区高程相对均匀,全年大部分时间完全被雪覆盖。SAR数据的下载和处理是一个费时费力的过程,需要一种现代化的解决方案。Google Earth Engine (GEE)是一个基于云的行星尺度遥感平台,拥有广泛的遥感数据。GEE拥有随时可用的Sentinel-1 GRD产品,具有光学遥感数据和气象数据。利用Sentinel-2标准化积雪指数对研究区6月份的GEE进行了算法测试。绘制湿雪的精度为0.8。利用该方法绘制了月湿雪图,了解融雪期和融雪动态。制作湿雪月图,在Deosai地区3 - 7月有湿雪可测。
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