Considering the impact of observation error correlation in ensemble square-root Kalman filter

Q2 Earth and Planetary Sciences Brazilian Journal of Oceanography Pub Date : 2019-01-01 DOI:10.1590/s1679-87592019026106717
Shaodong Zang, Jichao Wang
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引用次数: 1

Abstract

Data assimilation has been developed into an effective technology that can utilize a large number of multisource unconventional data. It cannot only provide the initial field for the ocean numerical prediction model, but also construct the ocean reanalysis datasets and provide the design basis for the ocean observation plan. In data assimilation, the estimation of the observation error is of paramount importance, because the quality of the analysis depends on it. In general, the observation error covariance matrix is diagonal or assumed to be diagonal, which means that the observation errors are independent from one another. However, there are indeed correlations in the observation errors. A diagnostic method has been developed, which can estimate a correlated and more accurate observation error covariance matrix. The proposed method combines an ensemble squareroot Kalman filter with the diagnostic method, providing an estimation of the observation error covariance matrix. In order to test the performance of the method, the numerical experiments are performed with the Lorenz 96 model and a Shallow water model. The more accurate observation error covariance matrix can be obtained to use in ensemble square-root Kalman filter by using the new method. We could find using the estimated correlated observation error in the data assimilation improves the analysis. AbstrAct Shaodong Zang1, Jichao Wang1*
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考虑了观测误差相关对集合平方根卡尔曼滤波的影响
数据同化已经发展成为一种有效利用大量多源非常规数据的技术。它不仅可以为海洋数值预报模式提供初始场,还可以构建海洋再分析数据集,为海洋观测方案的设计提供依据。在数据同化中,观测误差的估计是至关重要的,因为分析的质量取决于它。一般情况下,观测误差协方差矩阵是对角的或假定为对角的,这意味着观测误差是相互独立的。然而,观测误差确实存在相关性。提出了一种诊断方法,可以估计出一个相关的、更准确的观测误差协方差矩阵。该方法将集成平方根卡尔曼滤波与诊断方法相结合,给出了观测误差协方差矩阵的估计。为了验证该方法的有效性,在Lorenz 96模型和浅水模型下进行了数值实验。该方法可获得更精确的观测误差协方差矩阵,用于集成平方根卡尔曼滤波。在数据同化中使用估计的相关观测误差可以改善分析结果。臧少东1,王继超1*
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来源期刊
CiteScore
2.30
自引率
0.00%
发文量
0
审稿时长
>12 weeks
期刊介绍: The Brazilian Journal of Oceanography covers the entire spectrum of disciplines within the science of oceanography, publishing articles dealing with the biological oceanography, physical oceanography, marine chemistry, sedimentology and geology, from coastal and estuarine waters out to the open sea. Emphasis is placed on inter-disciplinary process-oriented contributions. BJO also publishes issues dedicated to results of scientific meetings and of large inter-disciplinary studies or topical issues on specific subjects. The audience is composed by physical, chemical and biological oceanographers, marine sedimentologists, geologists and geochemists, marine biologists and ecologists. Papers sent to BJO must present results from original research and be written in english.
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