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首页> 外文期刊>Journal of Geophysical Research, D. Atmospheres: JGR >Chemical state estimation for the middle atmosphere by four-dimensional variational data assimilation: A posteriori validation of error statistics in observation space
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Chemical state estimation for the middle atmosphere by four-dimensional variational data assimilation: A posteriori validation of error statistics in observation space

机译:多维变分数据同化估计中层大气的化学状态:观测空间误差统计的后验验证

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Chemical state analyses of the atmosphere based on data assimilation may be degraded by inconsistent covariances of background and observation errors. An efficient method to calculate consistency diagnostics for background and observation errors in observation space is applied to analyses of the four-dimensional variational stratospheric chemistry data assimilation system SACADA (Synoptic Analysis of Chemical Constituents by Advanced Data Assimilation), A background error covariance model for the assimilation of Michelson Interferometer for Passive Atmospheric Sounding (MIPAS) ozone retrievals is set up and optimized. It is shown that a significant improvement of the assimilation system performance is attained through the use of this covariance model compared to a simple covariance formulation, which assumes background errors to be a fixed fraction of the field value. The forecast skill, measured by the distance between the model forecast and MIPAS observations, is shown to improve. Further, an evaluation of analyses with independent data from the Halogen Observation Experiment (HALOE), the Stratospheric Aerosol and Gas Experiment II (SAGE II), and ozone sondes reveals that the standard deviation of ozone analyses with respect to these instruments is reduced throughout the middle stratosphere. Compared to the impact of background error variances on analysis quality, it is found that the precise specification of spatial background error correlations appears to be less critical if observations are spatially and temporally dense. Results indicate that ozone forecast errors of a state of the art stratospheric chemistry assimilation system are of the same order of magnitude as MIPAS observation errors.
机译:基于数据同化的大气化学状态分析可能会因背景误差和观测误差的协方差不一致而降低。一种有效的方法来计算观测空间中背景误差和观测误差的一致性诊断结果,该方法用于分析多维平流层化学数据同化系统SACADA(通过高级数据同化对化学成分进行概要分析),该模型是背景误差协方差模型。建立并优化了迈克尔逊干涉仪对被动大气探测(MIPAS)臭氧的吸收。结果表明,与简单的协方差公式相比,通过使用此协方差模型,同化系统的性能得到了显着改善,后者假定背景误差为字段值的固定分数。通过模型预测与MIPAS观测值之间的距离来衡量,预测技能得到了提高。此外,使用来自卤素观测实验(HALOE),平流层气溶胶和气体实验II(SAGE II)和臭氧探空仪的独立数据进行的分析评估表明,在整个测量过程中,相对于这些仪器而言,臭氧分析的标准偏差减小了。平流层中部。与背景误差方差对分析质量的影响相比,可以发现,如果观测值在空间和时间上密集,则空间背景误差相关性的精确说明似乎不太重要。结果表明,最先进的平流层化学同化系统的臭氧预报误差与MIPAS观测误差的数量级相同。

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