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Data assimilation as a nonlinear dynamical systems problem: Stability and convergence of the prediction-assimilation system

机译:数据同化作为非线性动力系统问题:预测同化系统的稳定性和收敛性

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We study prediction-assimilation systems, which have become routine in meteorology and oceanography and are rapidly spreading to other areas of the geosciences and of continuum physics. The long-term, nonlinear stability of such a system leads to the uniqueness of its sequentially estimated solutions and is required for the convergence of these solutions to the system's true, chaotic evolution. The key ideas of our approach are illustrated for a linearized Lorenz system. Stability of two nonlinear prediction-assimilation systems from dynamic meteorology is studied next via the complete spectrum of their Lyapunov exponents; these two systems are governed by a large set of ordinary and of partial differential equations, respectively. The degree of data-induced stabilization is crucial for the performance of such a system. This degree, in turn, depends on two key ingredients: (i) the observational network, either fixed or data-adaptive, and (ii) the assimilation method. (C) 2008 American Institute of Physics.
机译:我们研究预测同化系统,该系统已成为气象学和海洋学中的常规方法,并迅速传播到地球科学和连续物理的其他领域。这种系统的长期非线性稳定性导致了其按顺序估计的解的唯一性,并且是将这些解收敛到系统的真实,混沌演化所必需的。对于线性Lorenz系统,说明了我们方法的关键思想。接下来通过动态Lyapunov指数的全谱研究两个来自动态气象的非线性预测同化系统的稳定性。这两个系统分别由大量的常微分方程和偏微分方程控制。数据引起的稳定程度对于这种系统的性能至关重要。反过来,该程度取决于两个关键要素:(i)固定或数据自适应的观测网络,以及(ii)同化方法。 (C)2008美国物理研究所。

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