Arctic polar algorithms for atmospheric water parameter retrievals from satellite passive microwave data

E. Zabolotskikh, L. Mitnik, L. Bobylev, O. Johannessenn
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Abstract

The new algorithms for retrieval of total atmospheric water vapor content (Q) and total cloud liquid water content (W) from satellite microwave radiometer data, applicable for the Arctic Basin. These algorithms are based on the neural networks (NNs) regression technique employed for the inversion of a radiative transfer equation (RTE). For the algorithm development the numerical integration of RTE was carried out for the channel characteristics of a Special Sensor Microwave/Imager (SSM/I) and Advanced Microwave Scanning Radiometer (AMSR-E), and brightness temperatures (TB) were simulated for non-precipitating conditions over the open ocean. Sets of sea surface temperatures (Ts), surface winds and radiosonde reports collected by Russian research vessels served as input data for the integration. Only data with Ts less than 15degC were selected for algorithm development. Simulated radiometer noise was added to the calculated values of TB. Once developed, using theoretically simulated values of TB, the Q algorithms were then validated both for SSM/I and AMSR-E retrievals using satellite radiometric measurements collocated in space and time with polar station radiosonde data. The resulting SSM retrieval error proved to be 1.1 kg/m2, AMSR-E retrieval error -0.9 kg/m2. Considered case study was the polar low in the Norwegian Sea occurred 30-31 January 2008. NOAA AVHRR, Terra and Aqua MODIS images, QuikSCAT-retrieved wind fields, Envisat ASAR images as well as weather maps were used as ancillary data to passive microwave retrievals to study this phenomenon.
从卫星无源微波数据反演大气水参数的极地算法
从卫星微波辐射计数据反演大气总水汽含量(Q)和云总液态水含量(W)的新算法,适用于北极盆地。这些算法是基于用于反演辐射传递方程(RTE)的神经网络(NNs)回归技术。为了开发算法,对特殊传感器微波/成像仪(SSM/I)和高级微波扫描辐射计(AMSR-E)的通道特性进行了RTE数值积分,并模拟了公海非降水条件下的亮度温度(TB)。俄罗斯科考船收集的海面温度、海面风和无线电探空仪报告作为整合的输入数据。仅选择Ts小于15°c的数据进行算法开发。在TB的计算值中加入模拟辐射计噪声。一旦开发出来,使用TB的理论模拟值,Q算法就会在SSM/I和AMSR-E检索中进行验证,这些检索使用卫星辐射测量与极地站无线电探空数据在空间和时间上并行。结果表明,SSM反演误差为1.1 kg/m2, AMSR-E反演误差为-0.9 kg/m2。考虑的案例研究是发生在2008年1月30日至31日的挪威海极低压。NOAA AVHRR、Terra和Aqua MODIS图像、quikscat检索的风场、Envisat ASAR图像以及天气图被用作被动微波检索的辅助数据来研究这一现象。
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