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Localizing the Ensemble Kalman Particle Filter

机译:本地化集合卡尔曼粒子滤波器

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摘要

Ensemble methods such as the Ensemble Kalman Filter (EnKF) are widely used for data assimilation in large-scale geophysical applications, as for example in numerical weather prediction. There is a growing interest for physical models with higher and higher resolution, which brings new challenges for data assimilation techniques because of the presence of non-linear and non-Gaussian features that are not adequately treated by the EnKF. We propose two new localized algorithms based on the Ensemble Kalman Particle Filter, a hybrid method combining the EnKF and the Particle Filter (PF) in a way that maintains scalability and sample diversity. Localization is a key element of the success of EnKF in practice, but it is much more challenging to apply to PFs. The algorithms that we introduce in the present paper provide a compromise between the EnKF and the PF while avoiding some of the problems of localization for pure PFs. Numerical experiments with a simplified model of cumulus convection based on a modified shallow water equation show that the proposed algorithms perform better than the local EnKF. In particular, the PF nature of the method allows to capture non-Gaussian characteristics of the estimated fields such as the location of wet and dry areas.
机译:诸如集成卡尔曼滤波器(EnKF)之类的集成方法被广泛用于大规模地球物理应用中的数据同化,例如在数值天气预报中。对越来越高的分辨率的物理模型的兴趣与日俱增,由于存在EnKF无法充分处理的非线性和非高斯特征,这给数据同化技术带来了新的挑战。我们提出了两个基于Ensemble Kalman粒子滤波的新本地化算法,这是一种将EnKF和粒子滤波(PF)结合在一起的混合方法,可保持可扩展性和样本多样性。本地化是EnKF在实践中成功的关键因素,但是将其应用于PF则更具挑战性。我们在本文中介绍的算法在EnKF和PF之间提供了折衷方案,同时避免了纯PF定位的一些问题。通过基于改进的浅水方程的积云对流简化模型的数值实验表明,该算法的性能优于局部EnKF。尤其是,该方法的PF特性允许捕获估计字段的非高斯特性,例如干湿区域的位置。

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