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Analysis of SMOS brightness temperature and vegetation optical depth data with coupled land surface and radiative transfer models in Southern Germany

机译:德国南部smOs亮温和植被光学深度数据的耦合地表和辐射传输模型分析

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摘要

Soil Moisture and Ocean Salinity (SMOS) L1c brightness temperature and L2 optical depth data are analysed with a coupled land surface (PROMET) and radiative transfer model (L-MEB). The coupled models are validated with ground and airborne measurements under contrasting soil moisture, vegetation and land surface temperature conditions during the SMOS Validation Campaign in May and June 2010 in the SMOS test site Upper Danube Catchment in southern Germany. The brightness temperature root-mean-squared errors are between 6K and 9 K. The L-MEB parameterisation is considered appropriate under local conditions even though it might possibly be further optimised. SMOS L1c brightness temperature data are processed and analysed in the Upper Danube Catchment using the coupled models in 2011 and during the SMOS Validation Campaign 2010 together with airborne L-band brightness temperature data. Only low to fair correlations are found for this comparison (R between 0.1-0.41). SMOS L1c brightness temperature data do not show the expected seasonal behaviour and are positively biased. It is concluded that RFI is responsible for a considerable part of the observed problems in the SMOS data products in the Upper Danube Catchment. This is consistent with the observed dry bias in the SMOS L2 soil moisture products which can also be related to RFI. It is confirmed that the brightness temperature data from the lower SMOS look angles and the horizontal polarisation are less reliable. This information could be used to improve the brightness temperature data filtering before the soil moisture retrieval. SMOS L2 optical depth values have been compared to modelled data and are not considered a reliable source of information about vegetation due to missing seasonal behaviour and a very high mean value. A fairly strong correlation between SMOS L2 soil moisture and optical depth was found (R = 0.65) even though the two variables are considered independent in the study area. The value of coupled models as a tool for the analysis of passive microwave remote-sensing data is demonstrated by extending this SMOS data analysis from a few days during a field campaign to a longer term comparison.
机译:利用耦合陆面(PROMET)和辐射传递模型(L-MEB)分析了土壤水分和海洋盐度(SMOS)的L1c亮度温度和L2光学深度数据。在2010年5月和2010年6月在德国南部SMOS试验场上多瑙河集水区进行的SMOS验证活动期间,通过对比土壤水分,植被和地表温度条件的地面和空中测量对耦合模型进行了验证。亮度温度均方根误差在6K到9K之间。L-MEB参数设置在本地条件下被认为是适当的,即使可能会进一步优化。在2011年以及在2010年SMOS验证活动期间,使用耦合模型在上多瑙河集水区处理和分析了SMOS L1c亮度温度数据,以及机载L波段亮度温度数据。对于该比较,仅发现低到中等的相关性(R在0.1-0.41之间)。 SMOS L1c亮度温度数据未显示预期的季节性行为,并且具有正偏差。可以得出结论,在多瑙河上游流域的SMOS数据产品中,RFI造成了相当大一部分已观察到的问题。这与SMOS L2土壤水分产品中观察到的干燥偏差一致,后者也可能与RFI有关。可以肯定的是,来自较低SMOS视角和水平极化的亮度温度数据的可靠性较低。该信息可用于改善土壤水分获取之前的亮度温度数据过滤。 SMOS L2的光学深度值已与建模数据进行了比较,由于缺少季节性行为和很高的平均值,因此不被视为有关植被的可靠信息来源。即使在研究区域中两个变量被认为是独立的,也发现SMOS L2土壤水分与光学深度之间存在相当强的相关性(R = 0.65)。通过将SMOS数据分析从野战期间的几天扩展到长期比较,可以证明耦合模型作为分析无源微波遥感数据的工具的价值。

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