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Penalized ensemble Kalman filters for high dimensional non-linear systems

机译:用于高维非线性系统的惩罚合奏卡尔曼滤波器

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The ensemble Kalman filter (EnKF) is a data assimilation technique that uses an ensemble of models, updated with data, to track the time evolution of a usually non-linear system. It does so by using an empirical approximation to the well-known Kalman filter. However, its performance can suffer when the ensemble size is smaller than the state space, as is often necessary for computationally burdensome models. This scenario means that the empirical estimate of the state covariance is not full rank and possibly quite noisy. To solve this problem in this high dimensional regime, we propose a computationally fast and easy to implement algorithm called the penalized ensemble Kalman filter (PEnKF). Under certain conditions, it can be theoretically proven that the PEnKF will be accurate (the estimation error will converge to zero) despite having fewer ensemble members than state dimensions. Further, as contrasted to localization methods, the proposed approach learns the covariance structure associated with the dynamical system. These theoretical results are supported with simulations of several non-linear and high dimensional systems.
机译:Ensemble Kalman滤波器(ENKF)是一种数据同化技术,它使用使用数据更新的模型的集合来跟踪通常非线性系统的时间演变。它通过将经验逼近与众所周知的卡尔曼滤波器使用经验近似来实现。然而,当集合尺寸小于状态空间时,其性能可能会受到影响,这通常是计算繁琐模型所必需的。这种情况意味着州协方差的经验估计并不是全年,并且可能相当嘈杂。为了解决这一问题,在这一高维制度中,我们提出了一种易于实现称为惩罚的集合Kalman滤波器(Penkf)的算法。在某些条件下,尽管具有比状态尺寸更少的合成构件具有更少的合并成员,但可以理论上证明,钢笔将准确(估计误差会聚到零)。此外,与局部化方法形成对比,所提出的方法学习与动态系统相关的协方差结构。这些理论结果支持多个非线性和高维系统的模拟。

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