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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >A neural-network technique for the retrieval of atmospheric temperature and moisture profiles from high spectral resolution sounding data
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A neural-network technique for the retrieval of atmospheric temperature and moisture profiles from high spectral resolution sounding data

机译:从高光谱分辨率测深数据中检索大气温度和湿度分布的神经网络技术

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摘要

A novel statistical method for the retrieval of atmospheric temperature and moisture profiles has been developed and evaluated with simulated clear-air and observed partially cloudy sounding data from the Atmospheric InfraRed Sounder (AIRS) and the Advanced Microwave Sounding Unit (AMSU). The algorithm is implemented in two stages. First, a projected principal components (PPC) transform is used to reduce the dimensionality of and optimally extract geophysical profile information from the cloud-cleared infrared radiance data. Second, a multilayer feedforward neural network (NN) is used to estimate the desired geophysical parameters from the PPCs. For the first time, NN temperature and moisture retrievals are presented using actual microwave and hyperspectral infrared observations of cloudy atmospheres, over both ocean and land (with variable terrain elevation), and at all sensor scan angles. The performance of the NN retrieval method (henceforth referred to as the PPC/NN method) was evaluated using global Earth Observing System Aqua orbits colocated with European Center for Medium-range Weather Forecasting fields for seven days throughout 2002 and 2003. Over 350,000 partially cloudy footprints were used in the study, and retrieval performance was compared with the AIRS Science Team Level-2 retrieval algorithm (version 3). Performance compares favorably with that obtained with simulated clear-air observations from the NOAA88b radiosonde set of approximately 7500 profiles. The PPC/NN method requires significantly less computation than traditional variational retrieval methods, while achieving comparable performance.
机译:已经开发了一种新颖的统计方法,用于检索大气温度和湿度曲线,并通过模拟清澈空气进行了评估,并观察了来自大气红外测深仪(AIRS)和高级微波测深仪(AMSU)的部分多云测深数据。该算法分两个阶段实现。首先,使用投影主成分(PPC)变换来减小云的大小,并从清除云的红外辐射数据中最佳提取地球物理剖面信息。其次,多层前馈神经网络(NN)用于从PPC估算所需的地球物理参数。首次使用实际微波和高光谱红外观测数据,在海洋和陆地上(具有可变的地形标高)以及在所有传感器扫描角度上,通过阴天大气的实际微波和高光谱红外观测,提出了NN温度和水分的反演。 NN检索方法(以下称为PPC / NN方法)的性能是使用全球地球观测系统Aqua轨道与欧洲中距离天气预报中心在2002年和2003年共处7天进行评估的。超过350,000部分多云研究中使用了足迹,并将检索性能与AIRS科学小组2级检索算法(版本3)进行了比较。与从大约7500个剖面的NOAA88b探空仪模拟空天观测获得的性能相比,其性能令人满意。与传统的变分检索方法相比,PPC / NN方法所需的计算量显着减少,同时实现了可比的性能。

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