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Ensemble-based Kalman Filters in Strongly Nonlinear Dynamics 被引量:1

Ensemble-based Kalman Filters in Strongly Nonlinear Dynamics
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摘要 This study examines the effectiveness of ensemble Kalman filters in data assimilation with the strongly nonlinear dynamics of the Lorenz-63 model, and in particular their use in predicting the regime transition that occurs when the model jumps from one basin of attraction to the other. Four configurations of the ensemble-based Kalman filtering data assimilation techniques, including the ensemble Kalman filter, en- semble adjustment Kalman filter, ensemble square root filter and ensemble transform Kalman filter, are evaluated with their ability in predicting the regime transition (also called phase transition) and also are compared in terms of their sensitivity to both observational and sampling errors. The sensitivity of each ensemble-based filter to the size of the ensemble is also examined. This study examines the effectiveness of ensemble Kalman filters in data assimilation with the strongly nonlinear dynamics of the Lorenz-63 model, and in particular their use in predicting the regime transition that occurs when the model jumps from one basin of attraction to the other. Four configurations of the ensemble-based Kalman filtering data assimilation techniques, including the ensemble Kalman filter, en- semble adjustment Kalman filter, ensemble square root filter and ensemble transform Kalman filter, are evaluated with their ability in predicting the regime transition (also called phase transition) and also are compared in terms of their sensitivity to both observational and sampling errors. The sensitivity of each ensemble-based filter to the size of the ensemble is also examined.
出处 《Advances in Atmospheric Sciences》 SCIE CAS CSCD 2009年第3期373-380,共8页 大气科学进展(英文版)
基金 supported by U.S. National Science Foundation through Award Number ATM-0833985
关键词 ensemble Kalman filter NONLINEAR data assimilation Lorenz model ensemble Kalman filter, nonlinear, data assimilation, Lorenz model
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