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Atmospheric Water Vapor and Cloud Liquid Water Retrieval Over the Arctic Ocean Using Satellite Passive Microwave Sensing

机译:利用卫星无源微波感应技术提取北冰洋大气水汽和云状液态水

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摘要

New algorithms for total atmospheric water vapor content (Q) and total cloud liquid water content (W) retrieval from satellite microwave radiometer data, based on neural networks (NNs) and applicable for high-latitude open-water areas, were developed. For algorithm development, a radiative transfer equation numerical integration was carried out for Special Sensor Microwave/Imager (SSM/I) and Advanced Microwave Scanning Radiometer-Earth Observing System (AMSR-E) channel characteristics for nonprecipitating conditions over the open ocean. Sets of sea surface temperatures less than 15°C, surface winds, and radiosonde (r/s) reports collected by Russian research vessels served as input data for integration. It was shown that NNs perform better than the conventional regression techniques. Q retrieval algorithms were validated both for the SSM/I and AMSR-E instruments using satellite radiometric measurements collocated in space and time with polar station r/s data. The resulting SSM/I and AMSR-E retrieval errors proved to be 1.09 and 0.90 kg/m2 correspondingly. For SSM/I Q retrievals, the algorithms were compared with the Wentz global operational algorithm. This comparison demonstrated the advantages of NN-based polar regional algorithms in comparison with the Wentz global one. The retrieval errors proved to be 1.34 and 1.90 kg/m2 ( ~ 40% worse) for the NN and Wentz algorithms correspondingly.
机译:开发了基于神经网络(NN)从卫星微波辐射计数据检索大气总水蒸气含量(Q)和总云液水含量(W)的新算法,该算法适用于高纬度开放水域。为了进行算法开发,针对公海的非降水条件,对特殊传感器微波/成像器(SSM / I)和高级微波扫描辐射计-地球观测系统(AMSR-E)的通道特性进行了辐射传递方程数值积分。俄罗斯研究船收集的海面温度低于15°C的集合,地表风和无线电探空仪(r / s)报告用作整合的输入数据。结果表明,神经网络的性能优于传统回归技术。使用空间和时间与极地站r / s数据并置的卫星辐射测量,对SSM / I和AMSR-E仪器的Q检索算法进行了验证。结果证明,SSM / I和AMSR-E的检索误差分别为1.09和0.90 kg / m2。对于SSM / I Q检索,将算法与Wentz全局运算算法进行了比较。这种比较证明了与基于Wentz全局算法相比,基于NN的极地区域算法的优势。 NN和Wentz算法的检索误差分别为1.34和1.90 kg / m2(约40%)。

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