Preprints
https://doi.org/10.48550/arXiv.2504.16024
https://doi.org/10.48550/arXiv.2504.16024
22 Apr 2026
 | 22 Apr 2026
Status: this preprint is open for discussion and under review for Geoscientific Model Development (GMD).

EnsAI: An Emulator for Atmospheric Chemical Ensembles

Michael Sitwell

Abstract. Ensemble-based methods for data assimilation and emission inversions are a popular way to encode flow-dependency within the model error covariance. While most ensemble methods do not require the use of an adjoint model, the need to repeatedly run a geophysical model to generate the ensemble can be a significant computational burden. In this paper, we introduce EnsAI, a new AI-based ensemble generation system for atmospheric chemical constituents. When trained on an existing ensemble for ammonia generated by the GEM-MACH air quality model, it was shown that the ensembles produced by EnsAI can accurately reproduce the meteorology-dependent features of the original ensemble, while generating the ensemble 3,300 times faster than the original GEM-MACH ensemble. While EnsAI requires an upfront cost for generating an ensemble used for training, as well as the training itself, the long term computational savings can greatly exceed these initial computational costs. When used in an emissions inversion system, EnsAI produced similar inversion results to those in which the original GEM-MACH ensemble was used while using significantly less computational resources.

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Michael Sitwell

Status: open (until 17 Jun 2026)

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Michael Sitwell
Michael Sitwell
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Latest update: 22 Apr 2026
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Short summary
EnsAI is a newly developed artificial intelligence based program for efficiently generating ensembles of atmospheric chemical concentrations that can be used in assimilation and emissions inversions systems. Ensemble-based data assimilation methods are widely used for assimilation and emissions inversions, but are usually very computationally demanding. Once trained, EnsAI can run thousands of times faster than the physics-based models when run on graphics processing units.
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