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首页> 外文期刊>Journal of Geophysical Research. Biogeosciences >Similarity transformation-based analysis of atmospheric models, data, and inverse remote sensing algorithms
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Similarity transformation-based analysis of atmospheric models, data, and inverse remote sensing algorithms

机译:基于相似度变换的大气模型,数据和反遥感算法分析

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摘要

The similarity transformation (ST) defines a new class of robust and stable parametric functions with embedded physical shape information to optimize flexibility in fitting or inverting data. The similarity transformation also permits the extraction of information on the shape of a particular class of physical functions, thereby providing the basis for comparing alternative;models and for analyzing the information content of data. We employ these properties of similarity transformations to study differences between state-of-the-art physics-based atmospheric models (the thermosphere ionosphere electrodynamic general circulation model, or TIEGCM) and empirical atmospheric models (Mass Spectrometer Incoherent Scatter, or MSIS) and to investigate the universality of these models; we examine the role of noise in determining acceptable resolution for faithful retrieval of physical properties; and we measure the performance of MSIS-based forward models for inversion of ultraviolet remote sensing of the neutral upper atmosphere. The similarity transform method proves to be a valuable new tool for identifying common and discrepant properties of the models. Further, the ST method shows that TIEGCM and MSISE-90 profiles embody similar shape information and that a suitable ST parameterization can be constructed that approximates profiles from either model to within a few percent accuracy. [References: 26]
机译:相似度转换(ST)定义了一类新的健壮和稳定的参数函数,具有嵌入的物理形状信息,以优化拟合或求逆数据的灵活性。相似性转换还允许提取有关特定类别物理功能形状的信息,从而为比较备选模型和分析数据的信息内容提供了基础。我们利用相似性转换的这些特性来研究基于物理学的最先进的大气模型(热层电离层电动力学一般循环模型或TIEGCM)与经验大气模型(质谱仪非相干散射或MSIS)之间的差异,并研究这些模型的普遍性;我们研究了噪声在确定可接受的分辨率以忠实检索物理特性方面的作用;我们测量了基于MSIS的正向模型对中性高层大气的紫外线遥感反演的性能。事实证明,相似度转换方法是一种有价值的新工具,可用于识别模型的常见和差异属性。此外,ST方法显示TIEGCM和MSISE-90轮廓包含相似的形状信息,并且可以构建合适的ST参数化,以将任一模型的轮廓近似到几%的精度内。 [参考:26]

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