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首页> 外文期刊>Journal of Quantitative Spectroscopy & Radiative Transfer >Linearization of the Principal Component Analysis method for radiative transfer acceleration: Application to retrieval algorithms and sensitivity studies
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Linearization of the Principal Component Analysis method for radiative transfer acceleration: Application to retrieval algorithms and sensitivity studies

机译:辐射传递加速的主成分分析方法的线性化:在检索算法和灵敏度研究中的应用

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摘要

Principal Component Analysis (PCA) is a promising tool for enhancing radiative transfer (RT) performance. When applied to binned optical property data sets, PCA exploits redundancy in the optical data, and restricts the number of full multiple-scatter calculations to those optical states corresponding to the most important principal components, yet still maintaining high accuracy in the radiance approximations. We show that the entire PCA RT enhancement process is analytically differentiable with respect to any atmospheric or surface parameter, thus allowing for accurate and fast approximations of Jacobian matrices, in addition to radiances. This linearization greatly extends the power and scope of the PCA method to many remote sensing retrieval applications and sensitivity studies. In the first example, we examine accuracy for PCA-derived UV-backscatter radiance and Jacobian fields over a 290-340. nm window. In a second application, we show that performance for UV-based total ozone column retrieval is considerably improved without compromising the accuracy.
机译:主成分分析(PCA)是增强辐射传输(RT)性能的有前途的工具。当应用于合并的光学属性数据集时,PCA会利用光学数据中的冗余,并将完整的多次散射计算的次数限制为与最重要的主分量相对应的光学状态,但仍保持辐射近似值的高精度。我们表明,整个PCA RT增强过程相对于任何大气或表面参数在分析上都是可微分的,因此,除了辐射度之外,还可以精确快速地近似Jacobian矩阵。这种线性化极大地将PCA方法的功能和范围扩展到了许多遥感检索应用和灵敏度研究中。在第一个示例中,我们检查了290-340范围内PCA衍生的UV背向散射辐射和Jacobian场的准确性。 nm窗口。在第二个应用程序中,我们显示了在不影响准确性的前提下,基于UV的总臭氧柱回收的性能得到了显着提高。

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