A one-step blended soundproof-compressible model with balanced data assimilation: theory and idealised tests
Ray Chew, Tommaso Benacchio, Gottfried Hastermann, Rupert Klein

TL;DR
This paper introduces an advanced blended numerical model that seamlessly switches between soundproof and compressible dynamics to eliminate acoustic imbalances during data assimilation in atmospheric simulations.
Contribution
It extends the blended modelling strategy with a new numerical framework and a Bayesian data assimilation method, improving balance and stability in atmospheric flow simulations.
Findings
Balanced analysis fields achieved in idealised tests
Acoustic imbalances effectively eliminated
Model switching strategy improves simulation stability
Abstract
A challenge arising from the local Bayesian assimilation of data in an atmospheric flow simulation is the imbalances it may introduce. Acoustic fast-mode imbalances of the order of the slower dynamics can be negated by employing a blended numerical model with seamless access to the compressible and the soundproof pseudo-incompressible dynamics. Here, the blended modelling strategy by Benacchio et al., MWR, vol. 142 (2014) is upgraded in an advanced numerical framework and extended with a Bayesian local ensemble data assimilation method. Upon assimilation of data, the model configuration is switched to the pseudo-incompressible regime for one time-step. After that, the model configuration is switched back to the compressible model for the duration of the assimilation window. The switching between model regimes is repeated for each subsequent assimilation window. An improved blending…
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