Abstract

Abstract. As with other Western Boundary Currents globally, the East Australian Current (EAC) is highly variable making it a challenge to model and predict. For the EAC region, we combine a high-resolution state-of-the-art numerical ocean model with a variety of traditional and newly available observations using an advanced variational data assimilation scheme. The numerical model is configured using the Regional Ocean Modelling System (ROMS 3.4) and takes boundary forcing from the BlueLink ReANalysis (BRAN3). For the data assimilation, we use an Incremental Strong-Constraint 4-Dimensional Variational (IS4D-Var) scheme, which uses the model dynamics to perturb the initial conditions, atmospheric forcing, and boundary conditions, such that the modelled ocean state better fits and is in balance with the observations. This paper describes the data assimilative model configuration that achieves a significant reduction of the difference between the modelled solution and the observations to give a dynamically consistent “best estimate” of the ocean state over a 2-year period. The reanalysis is shown to represent both assimilated and non-assimilated observations well. It achieves mean spatially averaged root mean squared (rms) residuals with the observations of 7.6 cm for sea surface height (SSH) and 0.4 °C for sea surface temperature (SST) over the assimilation period. The time-mean rms residual for subsurface temperature measured by Argo floats is a maximum of 0.9 °C between water depths of 100 and 300 m and smaller throughout the rest of the water column. Velocities at several offshore and continental shelf moorings are well represented in the reanalysis with complex correlations between 0.8 and 1 for all observations in the upper 500 m. Surface radial velocities from a high-frequency radar array are assimilated and the reanalysis provides surface velocity estimates with complex correlations with observed velocities of 0.8–1 across the radar footprint. A comparison with independent (non-assimilated) shipboard conductivity temperature depth (CTD) cast observations shows a marked improvement in the representation of the subsurface ocean in the reanalysis, with the rms residual in potential density reduced to about half of the residual with the free-running model in the upper eddy-influenced part of the water column. This shows that information is successfully propagated from observed variables to unobserved regions as the assimilation system uses the model dynamics to adjust the model state estimate. This is the first study to generate a reanalysis of the region at such a high resolution, making use of an unprecedented observational data set and using an assimilation method that uses the time-evolving model physics to adjust the model in a dynamically consistent way. As such, the reanalysis potentially represents a marked improvement in our ability to capture important circulation dynamics in the EAC. The reanalysis is being used to study EAC dynamics, observation impact in state-estimation, and as forcing for a variety of downscaling studies.

Highlights

  • The East Australian Current (EAC) is the Western Boundary Current (WBC) of the South Pacific subtropical gyre, flowing poleward along the east coast of Australia

  • The reanalysis model uses initial conditions and boundary forcing from BlueLink ReANalysis version 3p5 (BRAN3) and atmospheric forcing provided by the 12 km resolution Bureau of Meteorology (BOM) ACCESS analysis, which was not available over the 10 yr free-run testing period described above

  • The reanalysis time period (2012–2013) was chosen because it contains the greatest number of available observations, including a full-depth mooring array that resolves the EAC transport, which was deployed from 1 April 2012 to 26 August 2013

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Summary

Introduction

The East Australian Current (EAC) is the Western Boundary Current (WBC) of the South Pacific subtropical gyre, flowing poleward along the east coast of Australia. In this work we use Incremental Strong-constraint 4Dimensional Variational data assimilation (IS4D-Var), which generates increments to adjust the model initial conditions, boundary and surface forcings such that the difference between the model solution of the time-evolving flow and all available observations is minimised over an assimilation interval. Zavala-Garay et al (2012) used 4D-Var with ROMS to assimilate sea surface height (SSH), sea surface temperature (SST), and Expendable Bathythermograph (XBT) observations into a coarseresolution (18–30 km) model of the EAC region They use an empirical relationship between surface and subsurface properties to help propagate the dominant surface observations to the subsurface and improve their subsurface estimates. This data assimilative model represents a significant improvement on previous modelling work in the EAC for these purposes: e.g.

Model configuration
Consistency of free-running model
Configuration
Data assimilation scheme
Assimilation configuration
Observations and observation prior uncertainties
Satellite-derived sea surface height
Satellite-derived Sea Surface Temperature
Satellite-derived sea surface salinity
Argo floats
Expendable Bathythermographs
High-frequency radar
NSW shelf moorings
EAC transport array and SEQ shelf moorings
Ocean gliders
Model prior uncertainties
Reanalysis evaluation
Consistency of observation and model uncertainties
Cost function reduction and convergence properties
Reanalysis comparison to assimilated observations
Velocities from moorings
Surface velocities from HF radar
Reanalysis comparison to independent observations
Summary and conclusions
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