RUS  ENG
Full version
JOURNALS // Informatika i Ee Primeneniya [Informatics and its Applications] // Archive

Inform. Primen., 2012 Volume 6, Issue 4, Pages 84–94 (Mi ia237)

Mathematical foundation, application, and comparison of general data assimilation method based on diffusion approximation with other data assimilation schemes

K. P. Belyaeva, C. A. S. Tanajurab, N. P. Tuchkovac

a P. P. Shirshov institute of Oceanology of RAS
b Universidade Federal da Bahia
c Dorodnitsyn Computing Centre of the Russian Academy of Sciences, Moscow

Abstract: Data assimilation methods commonly used in numerical ocean and atmospheric circulation models for weather and climate prediction produce approximations of state variables in terms of stochastic processes. This approximation consists of random sequences of Markov chains, which converge to a diffusion-type process. The conditions for this convergence are investigated. The optimization problem associated with the search of the best possible approximation of the state variable and the results of a numerical experiment are discussed. It is shown that the data assimilation method can be used in practical applications in meteorology and oceanography. Several applications of the methods as an example of the modern operational data processing system with the ocean circulation model HYCOM and data from ARGO drifters are performed and the results as well as comparisons with other assimilation schemes are presented.

Keywords: sequence of Markov chains; diffusion stochastic process; data assimilation methods; HYCOM; ARGO drifters.

Language: English



© Steklov Math. Inst. of RAS, 2024