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MULTISCALE METHODS FOR DATA ASSIMILATION IN TURBULENT SYSTEMS

机译:湍流系统中数据同化的多尺度方法

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Data assimilation of turbulent signals is an important challenging problem because of the extremely complicated large dimension of the signals and incomplete partial noisy observations which usually mix the large scale mean flow and small scale fluctuations. Due to the limited computing power in the foreseeable future, it is desirable to use multiscale forecast models which are cheap and fast to mitigate the curse of dimensionality in turbulent systems; thus model errors from imperfect forecast models are unavoidable in the development of a data assimilation method in turbulence. Here we propose a suite of multiscale data assimilation methods which use stochastic Superparameterization as the forecast model. Superparameterization is a seamless multiscale method for parameterizing the effect of small scales by cheap local problems embedded in a coarse grid. The key ingredient of the multiscale data assimilation methods is the systematic use of conditional Gaussian mixtures which make the methods efficient by filtering a subspace whose dimension is smaller than the full state. The multiscale data assimilation methods proposed here are tested on a six dimensional conceptual dynamical model for turbulence which mimics interesting features of anisotropic turbulence including two way coupling between the large and small scale parts, intermittencies, and extreme events in the smaller scale fluctuations. Numerical results show that suitable multiscale data assimilation methods have high skill in estimating the most energetic modes of turbulent signals even with infrequent observation times.
机译:湍流信号的数据同化是一个重要的挑战性问题,因为信号的维数极其复杂,并且部分噪声观测值不完整,通常会混入较大的平均流量和较小的波动。由于在可预见的将来有限的计算能力,期望使用便宜且快速的多尺度预测模型来减轻湍流系统中维数的诅咒。因此,在湍流数据同化方法的发展中,来自不完善的预测模型的模型误差是不可避免的。在这里,我们提出了一套使用随机超参数化作为预测模型的多尺度数据同化方法。超参数化是一种无缝的多尺度方法,用于通过嵌入粗糙网格的廉价局部问题来参数化小尺度的效果。多尺度数据同化方法的关键要素是系统地使用条件高斯混合,该条件高斯混合通过过滤维数小于完整状态的子空间来使方法高效。本文提出的多尺度数据同化方法在湍流的六维概念动力学模型上进行了测试,该模型模拟了各向异性湍流的有趣特征,包括大尺度部分和小尺度部分之间的双向耦合,间歇性以及较小尺度波动中的极端事件。数值结果表明,即使观测频率不高,合适的多尺度数据同化方法也具有估算湍流信号最能量模式的高技能。

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