State-of-the-art stochastic data assimilation methods for high-dimensional non-Gaussian problems


Contact
Lars.Nerger [ at ] awi.de

Abstract

This paper compares several commonly used state-of-the-art ensemble-based data assimilation methods in a coherent mathematical notation. The study encompasses different methods that are applicable to high-dimensional geophysical systems, like ocean and atmosphere and provide an uncertainty estimate. Most variants of Ensemble Kalman Filters, Particle Filters and second-order exact methods are discussed, including Gaussian Mixture Filters, while methods that require an adjoint model or a tangent linear formulation of the model are excluded. The detailed description of all the methods in a mathematically coherent way provides both novices and experienced researchers with a unique overview and new insight in the workings and relative advantages of each method, theoretically and algorithmically, even leading to new filters. Furthermore, the practical implementation details of all ensemble and particle filter methods are discussed to show similarities and differences in the filters aiding the users in what to use when. Finally, pseudo-codes are provided for all of the methods presented in this paper.



Item Type
Article
Authors
Divisions
Primary Division
Programs
Primary Topic
Publication Status
Published
Eprint ID
46849
DOI 10.1080/16000870.2018.1445364

Cite as
Vetra-Carvalho, S. , van Leeuwen, P. J. , Nerger, L. , Barth, A. , Altaf, M. U. , Brasseur, P. , Kirchgessner, P. and Beckers, J. M. (2018): State-of-the-art stochastic data assimilation methods for high-dimensional non-Gaussian problems , Tellus Series A-Dynamic Meteorology and Oceanography, 70 (1), p. 1445364 . doi: 10.1080/16000870.2018.1445364


Download
[thumbnail of Vetra_etal_TellusA70_1445364_2018.pdf]
Preview
PDF
Vetra_etal_TellusA70_1445364_2018.pdf

Download (786kB) | Preview

Share
Add to AnyAdd to TwitterAdd to FacebookAdd to LinkedinAdd to PinterestAdd to Email


Citation

Geographical region
N/A

Research Platforms
N/A

Campaigns
N/A

Funded by
info:eu-repo/grantAgreement/EC/FP7/283580


Actions
Edit Item Edit Item