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首页> 外文期刊>Journal of hydrometeorology >Principal Components of Multifrequency Microwave Land Surface Emissivities. Part I: Estimation under Clear and Precipitating Conditions
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Principal Components of Multifrequency Microwave Land Surface Emissivities. Part I: Estimation under Clear and Precipitating Conditions

机译:多频微波陆地表面发射率的主要成分。第一部分:在清晰和降水条件下的估计

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The upcoming Global Precipitation Measurement mission will provide considerably more overland observations over complex terrain, high-elevation river basins, and cold surfaces, necessitating an improved assessment of the microwave land surface emissivity. Current passive microwave overland rainfall algorithms developed for the Tropical Rainfall Measuring Mission (TRMM) rely upon hydrometeor scattering-induced signatures at high-frequency (85 GHz) brightness temperatures (TBs) and are empirical in nature. A multiyear global database of microwave surface emissivities encompassing a wide range of surface conditions was retrieved from Advanced Microwave Scanning Radiometer for Earth Observing System (EOS; AMSR-E) radiometric clear scenes using companion A-Train [CloudSat, Cloud-Aerosol Lidar and Infrared Pathfinder Satellite Observations (CALIPSO), and Atmospheric Infrared Sounder (AIRS)] data. To account for the correlated emissivity structure, the procedure first derives the TRMM Microwave Imager-like nine-channel emissivity principal component (PC) structure. Relations are derived to estimate the emissivity PCs directly from the instantaneous TBs, which allows subsequent TB observations to estimate the PC structure and reconstruct the emissivity vector without need for ancillary data regarding the surface or atmospheric conditions. Radiative transfer simulations matched the AMSR-E TBs within 5-7-K RMS difference in the absence of precipitation. Since the relations are derived specifically for clear-scene conditions, discriminant analysis was performed to find the PC discriminant that best separates clear and precipitation scenes. When this technique is applied independently to two years ofTRMMdata, the PC-based discriminant demonstrated superior relative operating characteristics relative to the established 85-GHz scattering index, most notably during cold seasons.
机译:即将到来的全球降水测量任务将在复杂的地形,高海拔河流盆地和寒冷的表面上提供更多的陆上观测,因此需要对微波陆地表面发射率进行更好的评估。为热带雨量测量任务(TRMM)开发的当前无源微波陆上降雨算法依赖于高频(85 GHz)亮度温度(TBs)上水凝物散射引起的信号,并且本质上是经验性的。使用配套的A型火车[CloudSat,Cloud-Aerosol Lidar和Infrared],从用于地球观测系统的高级微波扫描辐射计(EOS; AMSR-E)辐射清晰场景中检索了涵盖了广泛表面条件的多年期全球微波数据库。探路者卫星观测(CALIPSO)和大气红外测深仪(AIRS)]数据。为了说明相关的发射率结构,该过程首先导出TRMM微波成像仪样的九通道发射率主分量(PC)结构。可以直接从瞬时TB推导关系来估计发射率PC,这使得随后的TB观测值可以估计PC结构并重建发射率矢量,而无需有关表面或大气条件的辅助数据。在没有降水的情况下,辐射传递模拟使AMSR-E TB在5-7-K RMS差之内匹配。由于这些关系是专门针对晴空条件得出的,因此进行了判别分析,以找到最能区分晴空场景和降水场景的PC判别式。当将此技术独立应用于两年的TRMM数据时,基于PC的判别式相对于既定的85 GHz散射指数表现出优越的相对工作特性,尤其是在寒冷季节。

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