An Ensemble Adjustment Kalman Filter Study for Argo Data

2010年5月15日·
尹训强
尹训强
Corresponding
,
Fangli Qiao
,
Yongzeng Yang
,
Changshui Xia
· 0 分钟阅读时长
Image credit: Xunqiang Yin
摘要
An ensemble adjustment Kalman filter system is developed to assimilate Argo profiles into the Northwest Pacific MASNUM wave-circulation coupled model, which is based on the Princeton Ocean Model (POM). This model was recoded in FORTRAN-90 style, and some new data types were defined to improve the efficiency of system design and execution. This system is arranged for parallel computing by using UNIX shell scripts: it is easier with single models running separately with the required information exchanged through input/output files. Tests are carried out to check the performance of the system: one for checking the ensemble spread and another for the performance of assimilation of the Argo data in 2005. The first experiment shows that the assimilation system performs well. The comparison with the Satellite derived sea surface temperature (SST) shows that modeled SST errors are reduced after assimilation; at the same time, the spatial correlation between the simulated SST anomalies and the satellite data is improved because of Argo assimilation. Furthermore, the temporal evolution/trend of SST becomes much better than those results without data assimilation. The comparison against GTSPP profiles shows that the improvement is not only in the upper layers of ocean, but also in the deeper layers. All these results suggest that this system is potentially capable of reconstructing oceanic data sets that are of high quality and are temporally and spatially continuous.
类型
出版物
Chinese Journal of Oceanology and Limnology
publications
尹训强
Authors
副研究员
主要致力于海洋数值模拟与数据同化研究,在国内外杂志上发表文章60余篇,承担了国家基金项目、国家973课题、公益性行业专项课题和重点研发计划等多项研究任务。近年来,在多变量联合同化调整和高效并行计算等研究方面取得重要成果,发展了海洋全要素高效并行数据同化系统,有效提高了海洋预报能力和气候预测水平,发布了我国首套全球高分辨率再分析数据。基于Kalman滤波原理,通过变量间的协方差表征海洋动力学特征以及多种影响因素之间的相互作用,有效利用观测信息优化其周围网的各种变量,实现多变量联合同化调整。作为核心成员,突破了负载近绝对均衡、主从核协同计算框架设计和循环折叠流水线等若干关键技术,为海洋数值预报系统建设提供了技术支撑。据此研发了海洋全要素高效并行数据同化系统,已成功应用到21世纪海上丝绸之路海洋环境预报、第二代海洋环境保障等多个预报系统,并支撑了气候预测和观测设计优化等研究的开展。