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Инд. авторы: Klimova E.G.
Заглавие: A Stochastic Ensemble Kalman Filter with Perturbation Ensemble Transformation
Библ. ссылка: Klimova E.G. A Stochastic Ensemble Kalman Filter with Perturbation Ensemble Transformation // Numerical Analysis and Applications. - 2019. - Vol.12. - Iss. 1. - P.26-36. - ISSN 1995-4239. - EISSN 1995-4247.
Внешние системы: DOI: 10.1134/S1995423919010038; РИНЦ: 38680054; SCOPUS: 2-s2.0-85064013368; WoS: 000463783600003;
Реферат: eng: The Kalman filter is currently one of the most popular approaches to solving the data assimilation problem. A major line of the application of the Kalman filter to data assimilation is the ensemble approach. In this paper, a version of the stochastic ensemble Kalman filter is considered. In this algorithm, an ensemble of analysis errors is obtained by transforming an ensemble of forecast errors. The analysis step is made only for a mean value. Thus, the ensemble pi-algorithm combines the advantages of stochastic filters and the efficiency and locality of square root filters. A numerical method of implementing the ensemble pi-algorithm is proposed, and the validity of this method is proved. This algorithm is used for a test problem in a three-dimensional domain. The results of numerical experiments with model data for estimating the efficiency of the algorithm are presented. A comparative analysis of the behavior of the root-mean-square errors of the ensemble pi-algorithm and the Kalman ensemble filter by means of numerical experiments with a one-dimensional Lorentz model is performed.
Ключевые слова: SQUARE-ROOT; DATA ASSIMILATION; ensemble Kalman filter; data assimilation;
Издано: 2019
Физ. характеристика: с.26-36