Abstract

Abstract. We compare two optimized chemical data assimilation systems, one based on the ensemble Kalman filter (EnKF) and the other based on four-dimensional variational (4D-Var) data assimilation, using a comprehensive stratospheric chemistry transport model (CTM). This work is an extension of the Belgian Assimilation System for Chemical ObsErvations (BASCOE), initially designed to work with a 4D-Var data assimilation. A strict comparison of both methods in the case of chemical tracer transport was done in a previous study and indicated that both methods provide essentially similar results. In the present work, we assimilate observations of ozone, HCl, HNO3, H2O and N2O from EOS Aura-MLS data into the BASCOE CTM with a full description of stratospheric chemistry. Two new issues related to the use of the full chemistry model with EnKF are taken into account. One issue is a large number of error variance parameters that need to be optimized. We estimate an observation error variance parameter as a function of pressure level for each observed species using the Desroziers method. For comparison purposes, we apply the same estimate procedure in the 4D-Var data assimilation, where both scale factors of the background and observation error covariance matrices are estimated using the Desroziers method. However, in EnKF the background error covariance is modelled using the full chemistry model and a model error term which is tuned using an adjustable parameter. We found that it is adequate to have the same value of this parameter based on the chemical tracer formulation that is applied for all observed species. This is an indication that the main source of model error in chemical transport model is due to the transport. The second issue in EnKF with comprehensive atmospheric chemistry models is the noise in the cross-covariance between species that occurs when species are weakly chemically related at the same location. These errors need to be filtered out in addition to a localization based on distance. The performance of two data assimilation methods was assessed through an 8-month long assimilation of limb sounding observations from EOS Aura MLS. This paper discusses the differences in results and their relation to stratospheric chemical processes. Generally speaking, EnKF and 4D-Var provide results of comparable quality but differ substantially in the presence of model error or observation biases. If the erroneous chemical modelling is associated with moderately fast chemical processes, but whose lifetimes are longer than the model time step, then EnKF performs better, while 4D-Var develops spurious increments in the chemically related species. If, however, the observation biases are significant, then 4D-Var is more robust and is able to reject erroneous observations while EnKF does not.

Highlights

  • The ensemble Kalman filter (EnKF) and the fourdimensional variational algorithm (4D-Var) are widely used data assimilation methods that utilize the model to propagate observational information in time and space into an estimate of the state

  • S14 described the implementation of the EnKF as an alternative assimilation method in Belgian Assimilation System for Chemical ObsErvations (BASCOE) and compared it with the original 4D-Var approach, using carefully calibrated error variances for both methods and applying them to observations of ozone, which was considered as a passive tracer

  • We have conducted a comparison of an EnKF and 4DVar data assimilation system using a comprehensive stratospheric chemical transport model

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Summary

Introduction

The ensemble Kalman filter (EnKF) and the fourdimensional variational algorithm (4D-Var) are widely used data assimilation methods that utilize the model to propagate observational information in time and space into an estimate of the state. S14 described the implementation of the EnKF as an alternative assimilation method in BASCOE and compared it with the original 4D-Var approach, using carefully calibrated error variances for both methods and applying them to observations of ozone, which was considered as a passive tracer This preliminary paper performed the comparison in a chemical tracer transport framework, i.e. taking only transport into account while neglecting chemical reactions. The application of the multi-variate EnKF method to an assimilation system with full chemistry should in principle address two important issues: the estimation of a large number of input error statistics and the problem of localization between chemical species. The section describes the main components of the BASCOE Data Assimilation System (version 5.8): the common CTM, the 4D-Var system and the EnKF system It describes the implementation of Desroziers’ method and the tuning of the error covariances in each system.

The chemical transport model
Setting up the time windows
The 4D-Var system
The EnKF system
The Desroziers method
Tuning of error covariances in the two systems
Observations
B: INI B: DRS
Numerical experiments
Verification of ozone
Verification of HCl
Verification of HNO3
Verification of water vapour
Verification of N2O
Evaluation of non-observed species
EnKF with cross-correlations between species
Conclusions
Findings
Code availability
Full Text
Published version (Free)

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