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Statistical retrieval of atmospheric profiles with deep convolutional neural networks

机译:用深度卷积神经网络对大气廓线进行统计检索

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摘要

Infrared atmospheric sounders, such as IASI, provide an unprecedented source of information for atmosphere monitoring and weather forecasting. Sensors provide rich spectral information that allows retrieval of temperature and moisture profiles. From a statistical point of view, the challenge is immense: on the one hand, "underdetermination" is common place as regression needs to work on high dimensional input and output spaces; on the other hand, redundancy is present in all dimensions (spatial, spectral and temporal). On top of this, several noise sources are encountered in the data.In this paper, we present for the first time the use of convolutional neural networks for the retrieval of atmospheric profiles from IASI sounding data. The first step of the proposed pipeline performs spectral dimensionality reduction taking into account the signal to noise characteristics. The second step encodes spatial and spectral information, and finally prediction of multidimensional profiles is done with deep convolutional networks. We give empirical evidence of the performance in a wide range of situations. Networks were trained on orbits of IASI radiances and tested out of sample with great accuracy over competing approximations, such as linear regression (+32%). We also observed an improvement in accuracy when predicting over clouds, thus increasing the yield by 34% over linear regression. The proposed scheme allows us to predict related variables from an already trained model, performing transfer learning in a very easy manner. We conclude that deep learning is an appropriate learning paradigm for statistical retrieval of atmospheric profiles.
机译:诸如IASI之类的红外大气探测仪为大气监测和天气预报提供了前所未有的信息来源。传感器提供丰富的光谱信息,可检索温度和湿度曲线。从统计的角度来看,挑战是巨大的:一方面,“欠定”现象很普遍,因为回归需要在高维输入和输出空间上进行;另一方面,冗余存在于所有维度(空间,频谱和时间)。最重要的是,在数据中遇到了几个噪声源。在本文中,我们首次提出了使用卷积神经网络从IASI测深数据中检索大气廓线。考虑到信噪比特性,建议的管线的第一步执行频谱维数降低。第二步是对空间和光谱信息进行编码,最后使用深度卷积网络对多维轮廓进行预测。我们提供了在各种情况下的性能的经验证据。在IASI辐射的轨道上对网络进行了训练,并在竞争性逼近下(例如线性回归(+ 32%))以极高的精度对样本进行了测试。我们还观察到了在云上进行预测时准确性的提高,因此,与线性回归相比,产率提高了34%。提出的方案使我们能够从已经训练好的模型中预测相关变量,以非常容易的方式执行转移学习。我们得出结论,深度学习是对大气廓线进行统计检索的适当学习范例。

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