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Concrete ensemble Kalman filters with rigorous catastrophic filter divergence

机译:具有严格灾难性过滤器发散的混凝土集成卡尔曼过滤器

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摘要

The ensemble Kalman filter and ensemble square root filters are data assimilation methods used to combine high-dimensional, nonlinear dynamical models with observed data. Ensemble methods are indispensable tools in science and engineering and have enjoyed great success in geophysical sciences, because they allow for computationally cheap low-ensemble-state approximation for extremely high-dimensional turbulent forecast models. From a theoretical perspective, the dynamical properties of these methods are poorly understood. One of the central mysteries is the numerical phenomenon known as catastrophic filter divergence, whereby ensemble-state estimates explode to machine infinity, despite the true state remaining in a bounded region. In this article we provide a breakthrough insight into the phenomenon, by introducing a simple and natural forecast model that transparently exhibits catastrophic filter divergence under all ensemble methods and a large set of initializations. For this model, catastrophic filter divergence is not an artifact of numerical instability, but rather a true dynamical property of the filter. The divergence is not only validated numerically but also proven rigorously. The model cleanly illustrates mechanisms that give rise to catastrophic divergence and confirms intuitive accounts of the phenomena given in past literature.
机译:集合卡尔曼滤波器和集合平方根滤波器是用于将高维,非线性动力学模型与观测数据结合在一起的数据同化方法。集合方法是科学和工程中必不可少的工具,并且在地球物理科学中获得了巨大的成功,因为它们可以为极高维的湍流预测模型提供计算上便宜的低集合状态近似。从理论的角度来看,这些方法的动力学特性了解甚少。中心谜团之一是数值现象,被称为灾难性滤波器发散,尽管真实状态仍保留在有界区域中,但整体状态估计却爆炸成机器无穷大。在本文中,我们通过引入简单自然的预测模型提供了对该现象的突破性见解,该模型透明地显示了在所有集成方法和大量初始化下的灾难性滤波器发散。对于此模型,灾难性过滤器发散不是数值不稳定性的产物,而是过滤器的真实动力特性。这种差异不仅在数字上得到了验证,而且得到了严格的证明。该模型清楚地说明了导致灾难性分歧的机制,并确认了对过去文献中所给出现象的直观解释。

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