Grooms Ian
Department of Applied Mathematics, University of Colorado, Boulder, CO USA.
Comput Geosci (Bassum). 2022;26(3):633-650. doi: 10.1007/s10596-022-10141-x. Epub 2022 Mar 5.
Ensemble Kalman filters are based on a Gaussian assumption, which can limit their performance in some non-Gaussian settings. This paper reviews two nonlinear, non-Gaussian extensions of the Ensemble Kalman Filter: Gaussian anamorphosis (GA) methods and two-step updates, of which the rank histogram filter (RHF) is a prototypical example. GA-EnKF methods apply univariate transforms to the state and observation variables to make their distribution more Gaussian before applying an EnKF. The two-step methods use a scalar Bayesian update for the first step, followed by linear regression for the second step. The connection of the two-step framework to the full Bayesian problem is made, which opens the door to more advanced two-step methods in the full Bayesian setting. A new method for the first part of the two-step framework is proposed, with a similar form to the RHF but a different motivation, called the 'improved RHF' (iRHF). A suite of experiments with the Lorenz-'96 model demonstrate situations where the GA-EnKF methods are similar to EnKF, and where they outperform EnKF. The experiments also strongly support the accuracy of the RHF and iRHF filters for nonlinear and non-Gaussian observations; these methods uniformly beat the EnKF and GA-EnKF methods in the experiments reported here. The new iRHF method is only more accurate than RHF at small ensemble sizes in the experiments reported here.
集合卡尔曼滤波器基于高斯假设,这可能会限制它们在某些非高斯情况下的性能。本文回顾了集合卡尔曼滤波器的两种非线性、非高斯扩展方法:高斯变形(GA)方法和两步更新方法,其中秩直方图滤波器(RHF)是一个典型例子。GA-EnKF方法对状态和观测变量应用单变量变换,使其分布在应用EnKF之前更接近高斯分布。两步法在第一步使用标量贝叶斯更新方法,第二步使用线性回归方法。建立了两步框架与全贝叶斯问题的联系,这为全贝叶斯环境下更先进的两步法打开了大门。针对两步框架的第一部分提出了一种新方法,其形式与RHF相似,但动机不同,称为“改进的RHF”(iRHF)。使用洛伦兹-96模型进行了一系列实验,展示了GA-EnKF方法与EnKF相似以及优于EnKF的情况。实验还有力地支持了RHF和iRHF滤波器对非线性和非高斯观测的准确性;在本文报道的实验中,这些方法始终优于EnKF和GA-EnKF方法。在此处报道的实验中,新的iRHF方法仅在小集合规模时比RHF更准确。