A semi-evolutive filter with partially local correction basis for data assimilation in oceanography

Ibrahim Hoteit , Dinh-Tuan Pham , Jacques Blum
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引用次数: 7

Abstract

A new data assimilation scheme derived from the singular evolutive extended Kalman (Seek) filter is introduced. The novel feature of the new filter is its correction basis which is partially local in the sense that it consists of “global” and “local” vectors, the later obtained from a local empirical orthogonal functions (Eof) analysis. Such an analysis was introduced in order to better represent the local variability of the ocean. This not only significantly reduces the implementation cost but may also improve the representativeness of the correction basis of the filter. The performance of this scheme is evaluated through twin experiments conducted in a realistic setting of the OPA model over the tropical Pacific zone. The results are compared against those of the Seek filter. The new filter is shown to perform better while it is up to six times faster. Adaptive tuning of the forgetting factor was also used, which enhances performance and improves the stability of the filter during model unstable periods.

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海洋学资料同化的局部校正半演化滤波器
提出了一种基于奇异进化扩展卡尔曼滤波的数据同化方法。新滤波器的新特征是它的校正基是局部的,因为它由“全局”和“局部”向量组成,后者由局部经验正交函数(Eof)分析得到。采用这种分析是为了更好地表示海洋的局部变率。这不仅大大降低了实现成本,而且可以提高滤波器校正基的代表性。通过在热带太平洋地区OPA模式的实际环境中进行的双试验,对该方案的性能进行了评价。将结果与Seek滤波器的结果进行比较。新的过滤器显示出更好的性能,而它的速度高达六倍。在模型不稳定时期,利用遗忘因子的自适应调谐增强了滤波性能,提高了滤波的稳定性。
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