使用3D深度神经网络的AIRS/AMSU温度和湿度剖面的细节增强

A. Milstein, J. Santanello, W. Blackwell
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摘要

近几十年来,星载微波和高光谱红外探测仪器为天气预报和气候科学带来了巨大的好处。然而,现有的对流层低层温度和湿度廓线反演在垂直分辨率上存在局限性,而且往往不能准确反映混合层热力结构和行星边界层(PBL)顶部逆温等关键特征。由于目前空间PBL遥感的局限性,迫切需要改进对PBL的常规全球观测,并使科学认识和天气和气候预测取得进展。为了解决这个问题,我们开发了一种新的3D深度神经网络(DNN),可以增强细节并降低来自美国宇航局Aqua航天器上的大气红外探测仪(AIRS)/高级微波探测仪(AMSU)探测仪仪器的2级温度和湿度剖面的噪音。我们发现,这种增强提高了精度和细节,包括陆地上PBL顶部的封顶反演等关键特征,从而提高了PBL高度估计的精度。
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Detail Enhancement of AIRS/AMSU Temperature and Moisture Profiles Using a 3D Deep Neural Network
In recent decades, spaceborne microwave and hyperspectral infrared sounding instruments have significantly benefited weather forecasting and climate science. However, existing retrievals of lower troposphere temperature and humidity profiles have limitations in vertical resolution, and often cannot accurately represent key features such as the mixed layer thermodynamic structure and the inversion at the planetary boundary layer (PBL) top. Because of the existing limitations in PBL remote sensing from space, there is a compelling need to improve routine, global observations of the PBL and enable advances in scientific understanding and weather and climate prediction. To address this, we have developed a new 3D deep neural network (DNN) which enhances detail and reduces noise in Level 2 granules of temperature and humidity profiles from the Atmospheric Infrared Sounder (AIRS)/Advanced Microwave Sounding Unit (AMSU) sounder instruments aboard NASA’s Aqua spacecraft. We show that the enhancement improves accuracy and detail including key features such as capping inversions at the top of the PBL over land, resulting in improved accuracy in estimations of PBL height.
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