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首页> 外文期刊>Journal of Geophysical Research, D. Atmospheres: JGR >An ensemble-based explicit four-dimensional variational assimilation method
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An ensemble-based explicit four-dimensional variational assimilation method

机译:一个ensemble-based明确四维变分同化方法

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The adjoint and tangent linear models in the traditional four-dimensional variational data assimilation (4DVAR) are difficult to obtain if the forecast model is highly nonlinear or the model physics contains parameterized discontinuities. A new method (referred to as POD-E4DVAR) is proposed in this paper by merging the Monte Carlo method and the proper orthogonal decomposition (POD) technique into 4DVAR to transform an implicit optimization problem into an explicit one. The POD method is used to efficiently approximate a forecast ensemble produced by the Monte Carlo method in a 4-dimensional (4-D) space using a set of base vectors that span the ensemble and capture its spatial structure and temporal evolution. After the analysis variables are represented by a truncated expansion of the base vectors in the 4-D space, the control (state) variables in the cost function appear explicit so that the adjoint model, which is used to derive the gradient of the cost function with respect to the control variables in the traditional 4DVAR, is no longer needed. The application of this new technique significantly simplifies the data assimilation process and retains the two main advantages of the traditional 4DVAR method. Assimilation experiments show that this ensemble-based explicit 4DVAR method performs much better than the traditional 4DVAR and ensemble Kalman filter (EnKF) method. It is also superior to another explicit 4DVAR method, especially when the forecast model is imperfect and the forecast error comes from both the noise of the initial field and the uncertainty in the forecast model. Computational costs for the new POD-E4DVAR are about twice as the traditional 4DVAR method but 5% less than the other explicit 4DVAR and much lower than the EnKF method. Another assimilation experiment conducted within the Lorenz model indicates potential wider applications of this new POD-E4DVAR method.
机译:伴随和切线性模型传统的四维变分的数据同化(4 dvar)很难获得预测模型是高度非线性的物理模型包含参数化不连续。本文提出了通过合并POD-E4DVAR)蒙特卡罗方法和适当的正交分解成4 dvar (POD)技术隐式优化问题转换成一个显式的。有效地近似预测在一个由蒙特卡罗方法四维(4 d)空间使用一组基础向量张成合奏和捕捉它空间结构和时间演化。分析变量表示截断扩张的基向量四维空间,控制变量(状态)成本函数显式,伴随出现模型,它被用来推导的梯度功能对控制成本变量在传统4 dvar,不再是需要的。大大简化了数据同化过程和保留的两个主要优势传统的4 dvar方法。实验表明,该ensemble-based明确4 dvar方法执行比传统的4 dvar和合奏卡尔曼滤波器(EnKF)方法。明确4 dvar方法,尤其是当预测模型是不完美的,预测错误来自最初的噪音场和预测模型的不确定性。新POD-E4DVAR计算成本两倍的传统4 dvar方法少于其他明确4 dvar和5%多低于EnKF方法。在洛伦兹模型实验表明潜在的更广泛的应用新的POD-E4DVAR方法。

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