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Exploring image data assimilation in the prospect of high-resolution satellite oceanic observations

机译:在高分辨率卫星海洋观测中探索图像数据同化

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Satellite sensors increasingly provide high-resolution (HR) observations of the ocean. They supply observations of sea surface height (SSH) and of tracers of the dynamics such as sea surface salinity (SSS) and sea surface temperature (SST). In particular, the Surface Water Ocean Topography (SWOT) mission will provide measurements of the surface ocean topography at very high-resolution (HR) delivering unprecedented information on the meso-scale and submeso-scale dynamics. This study investigates the feasibility to use these measurements to reconstruct meso-scale features simulated by numerical models, in particular on the vertical dimension. A methodology to reconstruct three-dimensional (3D) multivariate meso-scale scenes is developed by using a HR numerical model of the Solomon Sea region. An inverse problem is defined in the framework of a twin experiment where synthetic observations are used. A true state is chosen among the 3D multivariate states which is considered as a reference state. In order to correct a first guess of this true state, a two-step analysis is carried out. A probability distribution of the first guess is defined and updated at each step of the analysis: (i) the first step applies the analysis scheme of a reduced-order Kalman filter to update the first guess probability distribution using SSH observation; (ii) the second step minimizes a cost function using observations of HR image structure and a new probability distribution is estimated. The analysis is extended to the vertical dimension using 3D multivariate empirical orthogonal functions (EOFs) and the probabilistic approach allows the update of the probability distribution through the two-step analysis. Experiments show that the proposed technique succeeds in correcting a multivariate state using meso-scale and submeso-scale information contained in HR SSH and image structure observations. It also demonstrates how the surface information can be used to reconstruct the ocean state below the surface.
机译:卫星传感器越来越多地提供对海洋的高分辨率(HR)观测。他们提供了海面高度(SSH)以及动态示踪剂(如海面盐度(SSS)和海面温度(SST))的观测结果。特别是,地表水海洋地形(SWOT)任务将以非常高分辨率(HR)提供地表海洋地形的测量,从而提供有关中尺度和亚中尺度动力学的空前信息。这项研究调查了使用这些测量来重建数值模型模拟的中尺度特征的可行性,特别是在垂直方向上。通过使用所罗门海地区的HR数值模型,开发了一种用于重建三维(3D)多元中尺度场景的方法。在使用合成观测的孪生实验框架中定义了一个反问题。在3D多元状态中选择一个真实状态,该状态被视为参考状态。为了纠正对该真实状态的第一猜测,进行了两步分析。在分析的每个步骤中定义和更新第一次猜测的概率分布:(i)第一步应用降阶卡尔曼滤波器的分析方案,使用SSH观察更新第一次猜测的概率分布; (ii)第二步使用HR图像结构的观测值最小化成本函数,并估算新的概率分布。使用3D多元经验正交函数(EOF)将分析扩展到垂直方向,并且概率方法允许通过两步分析来更新概率分布。实验表明,所提出的技术使用HR SSH中包含的中尺度和亚中尺度信息以及图像结构观察成功地纠正了多元状态。它还演示了如何使用表面信息来重建表面以下的海洋状态。

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