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首页> 外文期刊>International Journal for Numerical Methods in Fluids >A penalized four-dimensional variational data assimilation method for reducing forecast error related to adaptive observations
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A penalized four-dimensional variational data assimilation method for reducing forecast error related to adaptive observations

机译:减少与自适应观测相关的预测误差的惩罚性四维变分数据同化方法

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摘要

Four-dimensional variational (4D-Var) data assimilation method is used to find the optimal initial conditions by minimizing a cost function in which background information and observations are provided as the input of the cost function. The optimized initial conditions based on background error covariance matrix and observations improve the forecast. The targeted observations determined by using methods such as adjoint sensitivity, observation sensitivity, or singular vectors may further improve the forecast. In this paper, we are proposing a new technique-consisting of a penalized 4D-Var data assimilation method that is able to reduce the forecast error significantly. This technique consists in penalizing the cost function by a forecast aspect defined over the verification domain at the verification time. The results obtained using the penalized 4D-Var method show that the initial condition is optimally estimated, thus resulting in a better forecast by significantly reducing the forecast error over the verification domain at verification time.
机译:多维变分(4D-Var)数据同化方法用于通过最小化成本函数来找到最佳初始条件,在该函数中,提供了背景信息和观察值作为成本函数的输入。基于背景误差协方差矩阵和观测值的优化初始条件改善了预测。通过使用诸如伴随灵敏度,观测灵敏度或奇异矢量之类的方法确定的目标观测值可能会进一步改善预测。在本文中,我们提出了一种新的技术,该技术包括一种受惩罚的4D-Var数据同化方法,该方法可以显着减少预测误差。该技术包括在验证时通过在验证域上定义的预测方面来惩罚成本函数。使用惩罚4D-Var方法获得的结果表明,初始条件得到了最佳估计,从而通过在验证时显着减少了验证域上的预测误差,从而获得了更好的预测。

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