Abstract
In this study, we investigate a strategy to accelerate the data assimilation
(DA) algorithm. Based on evaluations of the computational time, the analysis
step of the assimilation turns out to be the most expensive part. After a
study of the characteristics of the ensemble ash state, we propose a
mask-state algorithm which records the sparsity information of the full
ensemble state matrix and transforms the full matrix into a relatively small
one. This will reduce the computational cost in the analysis step.
Experimental results show the mask-state algorithm significantly speeds up
the analysis step. Subsequently, the total amount of computing time for
volcanic ash DA is reduced to an acceptable level. The mask-state algorithm
is generic and thus can be embedded in any ensemble-based DA framework.
Moreover, ensemble-based DA with the mask-state algorithm is promising and
flexible, because it implements exactly the standard DA without any
approximation and it realizes the satisfying performance without any change
in the full model.
Citation
ID:
165882
Ref Key:
fu2017geoscientificaccelerating