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The semi-analytical snow retrieval algorithm and its application to MODIS data

机译:半解析积雪算法及其在MODIS数据中的应用

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摘要

Grain size is a key parameter of a snowpack, affecting its thermodynamic state and influencing the spectral snow albedo. Differently from visible wavelengths, where the sensitivity to grain size is very low, in the near-infrared band there is a strong sensitivity of the reflectance to the grain size. This sensitivity provides the basis for the retrieval of grain size. In this paper we introduce a new snow retrieval algorithm that makes use of near-infrared measurements in which snow is modeled as a semi-infinite, weakly absorbing medium. It is assumed that the dense packing effects can be neglected and the radiative transport in snow can be studied using the standard radiative transfer equation extensively used, e.g., in cloud optics. The shape of grains is accounted for in the framework of fractal snow grain model. The performance of the algorithm is evaluated using ground-based measurements of snow albedo and results from a different retrieval algorithm. The technique is applied to study the changes of snow properties before and just after snow fall as seen by two MODIS sensors on TERRA and AQUA satellites. These satellites fly approximately 3 h and half apart (10:30 a.m. and 1:30 p.m. equator crossing time). The values of grain size retrieved from MODIS are also compared with values of grain size collected on ground. However, the area observed by MODIS including the locations of ground measurements was completely covered by clouds on the date of the measurements and the comparison could be performed only for the two previous days. A sensitivity analysis of the retrieval error due to atmospheric correction is also performed. Results show that the error on grain size retrieval induced by atmospheric correction ranges between ±5% and ±40%, depending on the grain size.
机译:粒度是积雪的关键参数,会影响积雪的热力学状态并影响光谱积雪的反照率。与可见光波长不同,可见光波长对晶粒尺寸的敏感度很低,在近红外波段,反射率对晶粒尺寸的敏感度很高。这种敏感性为获取晶粒尺寸提供了基础。在本文中,我们介绍了一种新的降雪检索算法,该算法利用近红外测量结果将雪建模为半无限弱吸收介质。假定可以忽略密集的堆积效应,并且可以使用广泛用于例如云光学的标准辐射传递方程来研究雪中的辐射传输。谷物的形状在分形雪粒模型的框架中得到考虑。该算法的性能是使用地面雪反照率测量值评估的,并得出了不同检索算法的结果。该技术用于研究降雪前后的雪性质变化,这是通过TERRA和AQUA卫星上的两个MODIS传感器看到的。这些卫星飞行约3小时,相距一半(上午10:30和下午1:30赤道穿越时间)。还将从MODIS检索到的晶粒度值与地面收集的晶粒度值进行比较。但是,MODIS观测到的包括地面测量位置的区域在测量日期被云层完全覆盖,并且只能在前两天进行比较。还对由于大气校正引起的取回误差进行了敏感性分析。结果表明,取决于晶粒尺寸,大气校正引起的晶粒尺寸检索误差在±5%和±40%之间。

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