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An explicit four-dimensional variational data assimilation method

机译:显式的多维变分数据同化方法

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A new data assimilation method called the explicit four-dimensional variational (4DVAR) method is proposed. In this method, the singular value decomposition (SVD) is used to construct the orthogonal basis vectors from a forecast ensemble in a 4D space. The basis vectors represent not only the spatial structure of the analysis variables but also the temporal evolution. After the analysis variables are expressed by a truncated expansion of the basis vectors in the 4D space, the control variables in the cost function appear explicitly, so that the adjoint model, which is used to derive the gradient of cost function with respect to the control variables, is no longer needed. The new technique significantly simplifies the data assimilation process. The advantage of the proposed method is demonstrated by several experiments using a shallow water numerical model and the results are compared with those of the conventional 4DVAR. It is shown that when the observation points are very dense, the conventional 4DVAR is better than the proposed method. However, when the observation points are sparse, the proposed method performs better. The sensitivity of the proposed method with respect to errors in the observations and the numerical model is lower than that of the conventional method.
机译:提出了一种新的数据同化方法,称为显式四维变分(4DVAR)方法。在这种方法中,奇异值分解(SVD)用于根据4D空间中的预测集合构造正交基向量。基本向量不仅表示分析变量的空间结构,而且还表示时间演变。在分析变量由4D空间中的基向量的截断展开表示​​后,成本函数中的控制变量显式出现,因此用于导出成本函数相对于控制的梯度的伴随模型变量,不再需要。新技术大大简化了数据同化过程。通过使用浅水数值模型的几次实验证明了该方法的优势,并将结果与​​常规4DVAR进行了比较。结果表明,当观测点非常密集时,传统的4DVAR方法优于所提出的方法。但是,当观测点稀疏时,该方法的效果更好。该方法对观测误差和数值模型的敏感性低于常规方法。

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