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Maximizing the Information Content of Ill-Posed Space-Based Measurements Using Deterministic Inverse Method

机译:使用确定性逆方法最大化病态空基测量的信息量

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摘要

For several decades, operational retrievals from spaceborne hyperspectral infrared sounders have been dominated by stochastic approaches where many ambiguities are pervasive. One major drawback of such methods is their reliance on treating error as definitive information to the retrieval scheme. To overcome this drawback and obtain consistently unambiguous retrievals, we applied another approach from the class of deterministic inverse methods, namely regularized total least squares (RTLS). As a case study, simultaneous simulated retrieval of ozone (O3) profile and surface temperature (ST) for two different instruments, Cross-track Infrared Sounder (CrIS) and Tropospheric Emission Spectrometer (TES), are considered. To gain further confidence in our approach for real-world situations, a set of ozonesonde profile data are also used in this study. The role of simulation-based comparative assessment of algorithms before application on remotely sensed measurements is pivotal. Under identical simulation settings, RTLS results are compared to those of stochastic optimal estimation method (OEM), a very popular method for hyperspectral retrievals despite its aforementioned fundamental drawback. Different tweaking of error covariances for improving the OEM results, used commonly in operations, are also investigated under a simulated environment. Although this work is an extension of our previous work for H2O profile retrievals, several new concepts are introduced in this study: (a) the information content analysis using sub-space analysis to understand ill-posed inversion in depth; (b) comparison of different sensors for same gas profile retrieval under identical conditions; (c) extended capability for simultaneous retrievals using two classes of variables; (d) additional stabilizer of Laplacian second derivative operator; and (e) the representation of results using a new metric called “information gain”. Our findings highlight issues with OEM, such as loss of information as compared to a priori knowledge after using measurements. On the other hand, RTLS can produce “information gain” of ~40–50% deterministically from the same set of measurements.
机译:几十年来,从星载高光谱红外测深仪进行的操作检索一直被随机方法占据主导地位,其中普遍存在许多歧义。这种方法的一个主要缺点是它们依赖于将错误视为检索方案的确定信息。为了克服此缺点并获得一致的明确检索,我们应用了确定性逆方法类别中的另一种方法,即正则化总最小二乘(RTLS)。作为案例研究,考虑同时模拟两种不同仪器,即跨轨红外测深仪(CrIS)和对流层发射光谱仪(TES)的臭氧(O3)轮廓和表面温度(ST)。为了使我们对现实情况的方法更有信心,本研究中还使用了一组臭氧探空仪剖面数据。在应用到遥感测量之前,基于算法的基于算法的比较评估的作用至关重要。在相同的模拟设置下,将RTLS结果与随机最优估计方法(OEM)的结果进行比较,该方法尽管具有上述基本缺点,但却是一种非常流行的高光谱检索方法。在模拟环境下,还研究了误差协方差的不同调整方法,以改善操作中通常使用的OEM结果。尽管这项工作是对我们以前的H2O剖面检索工作的扩展,但本研究引入了几个新概念:(a)使用子空间分析的信息内容分析,以深入了解不适当地的反演; (b)比较在相同条件下获取相同气体剖面的不同传感器; (c)使用两类变量进行同时检索的扩展功能; (d)拉普拉斯二阶导数算子的附加稳定器; (e)使用称为“信息增益”的新指标来表示结果。我们的发现突出了OEM的问题,例如与使用测量后的先验知识相比,信息丢失。另一方面,RTLS可以从同一组测量确定地产生约40–50%的“信息增益”。

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