Conditioning of hybrid variational data assimilation

Author:

Shataer Shaerdan1ORCID,Lawless Amos S.12,Nichols Nancy K.12

Affiliation:

1. School of Mathematical, Physical and Computational Sciences University of Reading Reading UK

2. National Centre for Earth Observation Reading UK

Abstract

AbstractIn variational assimilation, the most probable state of a dynamical system under Gaussian assumptions for the prior and likelihood can be found by solving a least‐squares minimization problem. In recent years, we have seen the popularity of hybrid variational data assimilation methods for Numerical Weather Prediction. In these methods, the prior error covariance matrix is a weighted sum of a climatological part and a flow‐dependent ensemble part, the latter being rank deficient. The nonlinear least squares problem of variational data assimilation is solved using iterative numerical methods, and the condition number of the Hessian is a good proxy for the convergence behavior of such methods. In this article, we study the conditioning of the least squares problem in a hybrid four‐dimensional variational data assimilation (Hybrid 4D‐Var) scheme by establishing bounds on the condition number of the Hessian. In particular, we consider the effect of the ensemble component of the prior covariance on the conditioning of the system. Numerical experiments show that the bounds obtained can be useful in predicting the behavior of the true condition number and the convergence speed of an iterative algorithm

Funder

Engineering and Physical Sciences Research Council

National Centre for Earth Observation

Publisher

Wiley

Subject

Applied Mathematics,Algebra and Number Theory

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