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Evaluation of the SMAP brightness temperature downscaling algorithm using active–passive microwave observations

机译:利用主动-被动微波观测对SMAP亮度温度降尺度算法进行评估

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The baseline radiometer brightness temperature (Tb) downscaling algorithm for NASA's Soil Moisture Active Passive (SMAP) mission, scheduled for launch in January 2015, is tested using an airborne simulation of the SMAP data stream. The algorithm synergistically uses 3 km Synthetic Aperture Radar (SAR) backscatter (σ) to downscale a 36 km radiometer Tb to 9 km. While the algorithm has already been tested using experimental datasets from field campaigns in the USA, it is imperative that it is tested for a comprehensive range of land surface conditions (i.e. in different hydro-climatic regions) before global application. Consequently, this study evaluates the algorithm using data collected from the Soil Moisture Active Passive Experiments (SMAPEx) in south-eastern Australia, that closely simulate the SMAP data stream for a single SMAP radiometer pixel over a 3-week interval, with repeat coverage every 2–3 days. The results suggest that the average root-mean-square error (RMSE) in downscaled Tb is 3.1 K and 2.6 K for h- and v-polarizations respectively, when downscaled to 9kmresolution. This increases to 8.2 K and 6.6 Kwhen applied at 1kmresolution. Downscaling over the relatively homogeneous grassland areas resulted in 2 K lower RMSE than for the heterogeneous cropping area. Overall, the downscaling error was around 2.4 K when applied at 9 km resolution for five of the nine days, which meets the 2.4 K error target of the SMAP mission.
机译:计划于2015年1月发射的NASA的土壤水分主动无源(SMAP)任务的基线辐射计亮度温度(Tb)缩减算法使用SMAP数据流的机载模拟进行了测试。该算法协同使用3 km合成孔径雷达(SAR)背向散射(σ)将36 km辐射计Tb缩小到9 km。尽管已经使用来自美国野战的实验数据集对该算法进行了测试,但必须在全球应用之前针对各种范围的地面条件(即在不同的水文气候区域)进行测试。因此,本研究使用从澳大利亚东南部土壤水分主动被动实验(SMAPEx)收集的数据对算法进行了评估,该数据在3周的时间间隔内紧密模拟了单个SMAP辐射计像素的SMAP数据流,每次重复覆盖2-3天。结果表明,当缩小到9 km分辨率时,缩小的Tb中的h极化和v极化的平均均方根误差(RMSE)分别为3.1 K和2.6K。当以1 km的分辨率应用时,该值增加到8.2 K和6.6 Kw。相对均质的草地面积缩小导致RMSE比异质种植面积低2K。总体而言,缩小比例误差在九天中的五天内以9 km分辨率应用时约为2.4 K,这符合SMAP任务的2.4 K错误目标。

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