首页> 外文会议>Algorithms and Technologies for Multispectral, Hyperspectral, and Ultraspectral Imagery XIV >Recent Progress in Neural Network Estimation ofAtmospheric Profiles Using Microwave and HyperspectralInfrared Sounding Data in the Presence of Clouds
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Recent Progress in Neural Network Estimation ofAtmospheric Profiles Using Microwave and HyperspectralInfrared Sounding Data in the Presence of Clouds

机译:云层存在下利用微波和高光谱红外探测数据估算大气剖面的神经网络的最新进展

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Recent work has demonstrated the feasibility of neural network estimation techniques for atmospheric profiling in partially cloudy atmospheres using combined microwave (MW) and hyperspectral infrared (IR) sounding data. In this paper, the retrieval performance in problem areas (over land, near the poles, elevated terrain, etc.) is examined. Retrieval performance has been improved by stratifying the neural network training data into distinct groups based on geographical (latitude, for example), geophysical (atmospheric pressure, for example), and sensor geometrical (scan angle, for example) considerations. The spectral information content of cloud signatures in Infrared Atmospheric Sounding Interferometer (IASI) data is also explored. A Principal Components Analysis is presented that indicates that most variability due to clouds is contained in the first two eigenvectors.rnA novel statistical method for the retrieval of atmospheric temperature and moisture (relative humidity) profiles has been developed and evaluated with sounding data from the Atmospheric InfraRed Sounder (AIRS) and the Advanced Microwave Sounding Unit (AMSU). The present work focuses on the cloud impact on the AIRS radiances and explores the use of stochastic cloud clearing mechanisms together with neural network estimation. A stand-alone statistical algorithm will be presented that operates directly on cloud-impacted AIRS/AMSU data, with no need for a physical cloud clearing process. The algorithm is implemented in three stages. First, the infrared radiance perturbations due to clouds are estimated and corrected by combined processing of the infrared and microwave data using a Stochastic Cloud Clearing (SCC) approach. The cloud clearing of the infrared radiances was performed using principal components analysis of infrared brightness temperature contrasts in adjacent fields of view and microwave-derived estimates of the infrared clear-column radiances to estimate and correct the radiance contamination introduced by clouds. Second, 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. Third, an artificial feedforward neural network (NN) is used to estimate the desired geophysical parameters from the projected principal components.rnThe performance of this method was evaluated using global (ascending and descending) EOS-Aqua orbits co-located with ECMWF fields for a variety of days throughout 2003, 2004, 2005, and 2006. Over 1,000,000 fields of regard (3x3 arrays of footprints) over ocean and land were used in the study. The method requires significantly less computation than traditional variational retrieval methods, while achieving comparable performance. Retrieval accuracy will be evaluated using ECMWF atmospheric fields as ground truth. The accuracy of the neural network retrieval method will be compared to the accuracy of the AIRS Level 2 (Version 5) retrieval method.
机译:最近的工作证明了使用组合的微波(MW)和高光谱红外(IR)探测数据在部分多云的大气中进行神经网络分析的神经网络估计技术的可行性。本文研究了问题区域(陆地,两极附近,高地等)的检索性能。通过基于地理位置(例如纬度),地球物理(例如大气压)和传感器几何形状(例如扫描角)的考虑将神经网络训练数据分层为不同的组,从而提高了检索性能。还探讨了红外大气探测干涉仪(IASI)数据中云信号的光谱信息内容。进行了一次主成分分析,该分析表明在前两个特征向量中包含了由于云引起的最大变化。rn已经开发了一种新颖的统计方法来检索大气温度和湿度(相对湿度)剖面,并利用来自大气的探测数据进行了评估红外测深仪(AIRS)和高级微波测深仪(AMSU)。目前的工作集中在云对AIRS辐射的影响上,并探讨了随机云清除机制以及神经网络估计的使用。将提出一种独立的统计算法,该算法可直接对受云影响的AIRS / AMSU数据进行操作,而无需进行物理云清除过程。该算法分三个阶段实现。首先,通过使用随机云清除(SCC)方法对红外和微波数据进行组合处理,估算并校正了由于云引起的红外辐射扰动。红外辐射的云清除是使用相邻视场中的红外亮度温度对比的主成分分析以及微波得出的红外透明柱辐射的估算值进行的,以估算和校正云引入的辐射污染。其次,使用投影主成分(PPC)变换来降低云的大小,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。第三,使用人工前馈神经网络(NN)从预计的主要成分中估算所需的地球物理参数。rn该方法的性能是通过与ECMWF场共存的全球(升序和降序)EOS-Aqua轨道评估的。整个2003年,2004年,2005年和2006年的不同天数。该研究使用了超过1,000,000个海洋和陆地上的视场(3x3阵列的足迹)。与传统的变分检索方法相比,该方法所需的计算量显着减少,同时实现了可比的性能。检索精度将使用ECMWF大气场作为地面真相进行评估。将神经网络检索方法的准确性与AIRS 2级(版本5)检索方法的准确性进行比较。

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