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Predicting areas of sustainable error growth in quasigeostrophic flows using perturbation alignment properties

机译:利用扰动对准特性预测准营养流中可持续误差增长的区域

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A new perturbation initialization method is used to quantify error growth due to inaccuracies of the forecast model initial conditions in a quasigeostrophic box ocean model describing a wind-driven double gyre circulation. This method is based on recent analytical results on Lagrangian alignment dynamics of the perturbation velocity vector in quasigeostrophic flows. More specifically, it consists in initializing a unique perturbation from the sole knowledge of the control flow properties at the initial time of the forecast and whose velocity vector orientation satisfies a Lagrangian equilibrium criterion. This Alignment-based Initialization method is hereafter denoted as the Al method. In terms of spatial distribution of the errors, we have compared favorably the AI error forecast with the mean error obtained with a Monte-Carlo ensemble prediction. It is shown that the AI forecast is on average as efficient as the error forecast initialized with the leading singular vector for the palenstrophy norm, and significantly more efficient than that for total energy and enstrophy norms. Furthermore, a more precise examination shows that the AI forecast is systematically relevant for all control flows whereas the palenstrophy singular vector forecast leads sometimes to very good scores and sometimes to very bad ones. A principal component analysis at the final time of the forecast shows that the AI mode spatial structure is comparable to that of the first eigenvector of the error covariance matrix for a "bred mode" ensemble. Furthermore, the kinetic energy of the AI mode grows at the same constant rate as that of the "bred modes" from the initial time to the final time of the forecast and is therefore characterized by a sustained phase of error growth. In this sense, the AI mode based on Lagrangian dynamics of the 'perturbation velocity orientation provides a rationale of the "bred mode" behavior.
机译:一种新的扰动初始化方法用于量化由于描述风驱动双回旋环流的准营养盒海洋模型中预测模型初始条件的不准确而导致的误差增长。该方法基于最近对准地转流中摄动速度矢量的拉格朗日对准动力学的分析结果。更具体地说,它包括在预测的初始时间根据控制流属性的唯一知识初始化唯一的扰动,并且其速度矢量方向满足拉格朗日平衡标准。以下将这种基于对准的初始化方法表示为A1方法。就误差的空间分布而言,我们将AI误差预测与通过蒙特卡洛系综预测获得的平均误差进行了比较。结果表明,AI预测的平均效率与针对古营养规范的领先预测奇异矢量初始化的误差预测相比,效率要显着高于总能量和总营养规范的效率。此外,更精确的检查表明,AI预测与所有控制流在系统上相关,而古营养奖杯奇异向量预测有时会导致非常好的分数,有时会导致非常差的分数。在预测的最后时间进行的主成分分析表明,对于“繁殖模式”集合,AI模式空间结构可与误差协方差矩阵的第一个特征向量进行比较。此外,从预测的初始时间到最终时间,AI模式的动能以与“繁殖模式”相同的恒定速率增长,因此其特征在于持续的误差增长阶段。从这个意义上讲,基于“摄动速度取向”的拉格朗日动力学的AI模式提供了“繁殖模式”行为的基本原理。

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