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篇目详细内容

【篇名】 Skill-assessments of statistical and Ensemble Kalman Filter data assimilative analyses using surface and deep observations in the Gulf of Mexico
【刊名】 Frontiers of Earth Science
【刊名缩写】 Front. Earth Sci
【ISSN】 2095-0195
【EISSN】 2095-0209
【DOI】 10.1007/s11707-013-0377-8
【出版社】 Higher Education Press and Springer-Verlag Berlin Heidelberg
【出版年】 2013
【卷期】 7 卷3期
【页码】 271-281 页,共 11 页
【作者】 Zhibin SUN; Lie-; Yauw OEY; Yi-; Hui ZHOU;
【关键词】 data assimilation; deep observation; Gulf of Mexico

【摘要】
A new data assimilation algorithm (Quasi-EnKF) in ocean modeling, based on the Ensemble Kalman Filter scheme, is proposed in this paper. This algorithm assimilates not only surface measurements (sea surface height), but also deep (~2000?m) temperature observations from the Gulf of Mexico into regional ocean models. With the use of the Princeton Ocean Model (POM), integrated for approximately two years by assimilating both surface and deep observations, this new algorithm was compared to an existing assimilation algorithm (Mellor-Ezer Scheme) at different resolutions. The results show that, by comparing the observations, the new algorithm out-performs the existing one.
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