DMRT-ML对AMSR2雪深估计的评价

N. Saberi, R. Kelly
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引用次数: 4

摘要

积雪物理状态的建模是利用被动微波遥感反演积雪物性的一个难点。2012年,在日本宇宙航空研究开发机构(JAXAs)的全球变化观测任务“水”上发射的先进微波扫描辐射计2号(AMSR2)持续了10-15年的太空观测记录。AMSR2的SWE产品是一种基于卫星的检索系统,它依赖于静态辅助数据集来参数化初始检索的地表属性。本研究采用基于物理的多层积雪稠密介质辐射传递理论(DMRT-ML)数值模型。该模型基于密集介质辐射传递(DMRT)理论进行积雪散射和消光系数计算,采用离散纵坐标法对辐射传递方程进行数值求解。利用DMRT-ML假设,探讨了DMRT-ML模型在2013年2月安大略省南部到美国东海岸的暴风雪以及2013年12月和2014年1月加拿大广域站的应用。DMRT输入变量采用加拿大气象中心(CMC)日雪深、分析雪深产品和AMSR2亮温。利用AMSR2数据估算地表物理温度。利用正演DMRT模拟单层积雪,研究了AMSR2观测数据对积雪粒度的敏感性。这提供了对正在使用DMRT-ML为AMSR2 SWE检索开发的反转查找表矩阵的深入了解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An evaluation of DMRT-ML for AMSR2 estimates of snow depth
Modeling the physical state of a snowpack is widely recognized as a challenging aspect in the snowpack physical properties retrieval using passive microwave remote sensing. The Advanced Microwave Scanning Radiometer 2 (AMSR2) launched on JAXAs Global Change Observation Mission Water in 2012 with 10-15 years mission, continues observation record of Earth from space. The SWE product for AMSR2 is being developed as a satellite-based retrieval system that relies on static ancillary datasets to parameterize land surface properties that initialize retrievals. In this research, Dense Media Radiative Transfer Theory for Multi Layered (DMRT-ML) snowpack, a physically based numerical model, is employed [1]. The model is based on the Dense Media Radiative Transfer (DMRT) theory for snow scattering and extinction coefficients computation and uses Discrete Ordinate Method to numerically solve the radiative transfer equation. Using DMRT-ML assumptions, the application of the DMRT-ML model to the February 2013 snowstorm in southern Ontario to the Eastern seaboard of USA as well as Canada wide stations in December 2013 and January 2014 are explored. To supply DMRT input variables, Canadian Meteorological Center (CMC) daily snow depth, analysis snow depth product, and AMSR2 brightness temperature have been used. AMSR2 data has been utilized for surface physical temperature estimation. Using forward DMRT simulation for one layer snowpack, model sensitivity to snowpack grain size via AMSR2 observations is studied. This provides insight into the inversion look-up table matrix that is being developed using DMRT-ML for AMSR2 SWE retrievals.
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