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Shape-dependent regularization for the retrieval of atmospheric state parameter profiles

机译:形状相关的正则化,用于检索大气状态参数轮廓

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摘要

We present an adaptive regularization approach to retrieve vertical state parameter profiles from limb-sounding measurements with high accuracy. This is accomplished by introducing a dedicated regularization functional based on a reasonable assumption of the profile characteristics. The approach results in shape-dependent weighting during least-squares computations and relies on a Cholesky decomposition of a preselected L~(T)L matrix. Our method is compared with established regularization functionals such as optimal estimation and Tikhonov with respect to errors and achievable height resolution. The results show an improved height resolution of the retrieved profiles together with a reduction of absolute and relative errors obtained by test-bed simulations.
机译:我们提出了一种自适应正则化方法,以高精度从肢体测听中检索垂直状态参数配置文件。这是通过基于配置文件特性的合理假设引入专用的正则化功能来实现的。该方法在最小二乘计算期间导致形状相关的加权,并且依赖于预选L〜(T)L矩阵的Cholesky分解。我们的方法与已建立的正则化功能(例如最佳估计和Tikhonov)在误差和可实现的高度分辨率方面进行了比较。结果表明,改进后的轮廓剖面的高度分辨率得到了提高,同时减少了通过试验台模拟获得的绝对和相对误差。

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