The retrievals of effective grain size and snow water equivalent from variationally-retrieved microwave surface emissivities

C. Kongoli, S. Boukabara, F. Weng
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引用次数: 1

Abstract

This study introduces a new technique for the estimation of the snow effective grain size and water equivalent based on the microwave surface emissivity spectra retrieved from a one-dimensional variational retrieval system and a microwave snow emissivity model. The microwave emissivity model is derived analytically from the dense media radiative transfer theory. The model snow physical parameters include the effective grain size, volume fraction and depth. The two-steps algorithm is based on variationally retrieving the emissivity spectrum from microwave remote sensing observations, followed by the estimation of the closest emissivity spectrum from a catalog to determine the snow water equivalent and the effective grain size. This catalog was computed off-line using the microwave emissivity model for realistic ranges of the effective snow parameters. Qualitative inspection of variationally retrieved emissivities and the snow parameters show large-scale consistency. The performance of this physically-based retrieval technique is quantitatively assessed against snow water equivalent measurements and against an empirical brightness temperature-based algorithm.
微波表面发射率反演有效粒度和雪水当量
本文提出了一种基于一维变分反演系统和微波雪辐射率模型反演积雪有效粒径和水当量的新技术。从稠密介质辐射传递理论出发,解析导出了微波发射率模型。模型雪物性参数包括有效粒径、体积分数和深度。该算法首先从微波遥感观测数据中变分检索发射光谱,然后从目录中估计最接近的发射光谱,从而确定雪水当量和有效粒度。该目录是使用微波发射率模型离线计算的有效雪参数的实际范围。对变分反演的发射率和雪参数进行定性检验,显示出大尺度的一致性。这种基于物理的检索技术的性能与雪水等效测量和基于经验亮度温度的算法进行了定量评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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