Evaluating data-driven background ensembles covariances from Graphcast: a case study for Hurricane Lee (2023)
Zhihong Chen, Xuguang Wang

TL;DR
This study evaluates the fidelity of GraphCast's data-driven background ensemble covariances against GEFS for Hurricane Lee, highlighting areas of agreement and differences in hurricane data assimilation.
Contribution
It provides a detailed comparison of GraphCast and GEFS background ensemble covariances for hurricane data, revealing strengths and limitations of GraphCast.
Findings
GraphCast's ensemble is less dispersive in the hurricane vortex.
Good agreement in primary circulation correlations, but differences in secondary circulation.
GraphCast shows reduced spread and smaller-scale perturbations in geopotential height.
Abstract
Short-term background ensemble covariances (BEC) are crucial for ensemble-based data assimilation (DA). However, limited studies so far have examined the fidelity of the cost-effective data-driven model in producing the short-term BEC for hurricane data assimilation. In this study, we evaluate the background ensemble spread and correlations from GraphCast against those of GEFS for Hurricane Lee (2023) during both its intensification and non-intensification phases. Specifically, the BEC in the hurricane vortex, the hurricane environment, and the vortex-environment interactions are examined. Within the hurricane vortex, the background ensemble of GraphCast is less dispersive than GEFS. The two models agree well on the background ensemble correlations that are tied to the primary circulation but show a larger correlation difference associated with the secondary circulation, indicating the…
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