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ISSN 1006-9895

CN 11-1768/O4

HBFNEnKF混合同化方法设计及检验
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国家重点基础研究发展计划项目2013CB430102,国家自然科学基金重点项目41430427,国家自然科学基金项目41505089


Implementation and Testing of a Hybrid Back and Forth Nudging Ensemble Kalman Filter (HBFNEnKF) Data Assimilation Method
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    摘要:

    基于前后张驰逼近(Back and Forth Nudging,简称BFN)和集合卡尔曼滤波(EnKF)方法,构建了一种新的同化方法HBFNEnKF(Hybrid Back and Forth Nudging EnKF)混合同化方法,并将此同化系统分别与通道浅水模式(shallow water model)和全球浅水模式对接,检验了HBFNEnKF同化方法的有效性。同时,对比了集合均方根滤波(EnSRF)、HNEnKF (Hybrid Nudging EnKF)、HBFNEnKF三种方法在有误差模式中的同化效果。试验结果表明:HBFNEnKF同化方法保留了HNEnKF方法的同化连续性,解决了EnKF同化不连续不平滑的问题,同时还有着更快的收敛速度;当采用单变量分析试验时,HBFNEnKF方法的优势最为明显,表明HBFNEnKF能够较好地保持不同模式变量间的平衡。此外,增量场尺度分析结果表明:相比EnSRF,HBFNEnKF在大尺度范围有更好的同化效果,同时能够避免在中小尺度范围内出现大量的虚假增量。

    Abstract:

    Based on the "Back and Forth Nudging" (BFN) and Ensemble Kalman Filter (EnKF) methods, a Hybrid BFN EnKF (HBFNEnKF) data assimilation method was designed and tested using a channel shallow water model and a global shallow water model, separately. Furthermore, the performances of the HBFNEnKF, Hybrid Nudging EnKF (HNEnKF), and Ensemble Square-Root Filter (EnSRF) methods are discussed, with model error considered. The results showed that the HBFNEnKF method retains the continuity and smoothness of HNEnKF, avoids the discontinuity and unbalance problem of EnSRF, and has the highest convergence speed. Through a single variable observation experiment, the advantage of HBFNEnKF was clear; that is, HBFNEnKF can maintain the balance between different model variables. A scale investigation on the increment field showed that, compared with EnSRF, HBFNEnKF produces a better assimilation result at larger scales, and avoids a number of spurious increments at medium and smaller scales.

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朱浩楠,闵锦忠,杜宁珠. HBFNEnKF混合同化方法设计及检验.大气科学,2016,40(5):995~1008 ZHU Haonan, MIN Jinzhong, DU Ningzhu. Implementation and Testing of a Hybrid Back and Forth Nudging Ensemble Kalman Filter (HBFNEnKF) Data Assimilation Method. Chinese Journal of Atmospheric Sciences (in Chinese),2016,40(5):995~1008

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  • 收稿日期:2015-06-17
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  • 在线发布日期: 2016-09-24
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