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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:化学状态估计中间大气的四维变分的数据同化:后验的验证错误在观察空间统计

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摘要

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:大气的化学状态分析的基础上不一致的数据同化可能退化协方差的背景和观察错误。一个有效的方法来计算一致性诊断为背景和观察错误在观察空间应用于分析四维变分平流层SACADA化学数据同化系统(天气分析的化学成分先进的数据同化),背景误差协方差模型的同化迈克耳孙干涉仪为被动的大气听起来(MIPAS)臭氧设置和检索优化。改善同化系统性能是实现通过使用这个协方差模型相比,一个简单的协方差配方,假定背景错误是一个固定的字段值。预测能力,衡量之间的距离该模型预测和MIPAS观察,改善。分析了卤素的独立的数据观察实验(HALOE)项目,平流层气溶胶和气体实验二世(SAGE II),和臭氧迭代反演表明标准差臭氧对这些进行分析减少仪器在中间平流层。背景误差方差分析质量,它是发现的精确规格空间背景误差相关性似乎那么如果观测空间至关重要密度和暂时的。预测错误的艺术状态平流层化学同化系统MIPAS相同的数量级观察错误。

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