A Quantile-Conserving Ensemble Filter Framework. Part II: Regression of Observation Increments in a Probit and Probability Integral Transformed Space

IF 2.8 3区 地球科学 Q3 METEOROLOGY & ATMOSPHERIC SCIENCES
Jeffrey L. Anderson
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引用次数: 2

Abstract

Traditional ensemble Kalman filter data assimilation methods make implicit assumptions of Gaussianity and linearity that are strongly violated by many important Earth system applications. For instance, bounded quantities like the amount of a tracer and sea ice fractional coverage cannot be accurately represented by a Gaussian which is unbounded by definition. Nonlinear relations between observations and model state variables abound. Examples include the relation between a remotely sensed radiance and the column of atmospheric temperatures, or the relation between cloud amount and water vapor quantity. Part 1 of this paper described a very general data assimilation framework for computing observation increments for non-Gaussian prior distributions and likelihoods. These methods can respect bounds and other non-Gaussian aspects of observed variables. However, these benefits can be lost when observation increments are used to update state variables using the linear regression that is part of standard ensemble Kalman filter algorithms. Here, regression of observation increments is performed in a space where variables are transformed by the probit and probability integral transforms, a specific type of Gaussian anamorphosis. This method can enforce appropriate bounds for all quantities and deal much more effectively with nonlinear relations between observations and state variables. Important enhancements like localization and inflation can be performed in the transformed space. Results are provided for idealized bivariate distributions and for cycling assimilation in a low-order dynamical system. Implications for improved data assimilation across Earth system applications are discussed.
一个分位数守恒的集成滤波器框架。第二部分:概率与概率积分变换空间中观测增量的回归
传统的集合卡尔曼滤波数据同化方法对高斯性和线性做出了隐含的假设,而许多重要的地球系统应用都强烈违反了这些假设。例如,有界的量,如示踪剂的量和海冰的部分覆盖率,不能用定义为无界的高斯来准确表示。观测值和模型状态变量之间存在大量非线性关系。例子包括遥感辐射与大气温度柱之间的关系,或云量与水蒸气量之间的关系。本文的第1部分描述了一个非常通用的数据同化框架,用于计算非高斯先验分布和似然的观测增量。这些方法可以尊重观测变量的边界和其他非高斯方面。然而,当使用作为标准集成卡尔曼滤波器算法一部分的线性回归来使用观测增量来更新状态变量时,这些好处可能会丢失。这里,观测增量的回归是在一个空间中进行的,其中变量通过概率积分变换和概率积分变换进行变换,概率积分变换是一种特定类型的高斯变形。该方法可以对所有量强制执行适当的边界,并更有效地处理观测值和状态变量之间的非线性关系。可以在变换后的空间中执行诸如定位和膨胀之类的重要增强。给出了低阶动力系统中理想化二元分布和循环同化的结果。讨论了在地球系统应用中改进数据同化的意义。
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来源期刊
Monthly Weather Review
Monthly Weather Review 地学-气象与大气科学
CiteScore
6.40
自引率
12.50%
发文量
186
审稿时长
3-6 weeks
期刊介绍: Monthly Weather Review (MWR) (ISSN: 0027-0644; eISSN: 1520-0493) publishes research relevant to the analysis and prediction of observed atmospheric circulations and physics, including technique development, data assimilation, model validation, and relevant case studies. This research includes numerical and data assimilation techniques that apply to the atmosphere and/or ocean environments. MWR also addresses phenomena having seasonal and subseasonal time scales.
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