首页> 外文期刊>Journal of Geophysical Research, D. Atmospheres: JGR >An ensemble data assimilation system to estimate CO2 surface fluxes from atmospheric trace gas observations
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An ensemble data assimilation system to estimate CO2 surface fluxes from atmospheric trace gas observations

机译:一个集合数据同化系统,可从大气痕量气体观测值估算CO2表面通量

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摘要

We present a data assimilation system to estimate surface fluxes of CO2 and other trace gases from observations of their atmospheric abundances. The system is based on ensemble data assimilation methods under development for Numerical Weather Prediction (NWP) and is the first of its kind to be used for CO2 flux estimation. The system was developed to overcome computational limitations encountered when a large number of observations are used to estimate a large number of unknown surface fluxes. The ensemble data assimilation approach is attractive because it returns an approximation of the covariance, does not need an adjoint model or other linearization of the observation operator, and offers the possibility to optimize fluxes of chemically active trace gases (e.g., CH4, CO) in the same framework. We assess the performance of this new system in a pseudodata experiment that resembles the real problem we will apply this system to. The sensitivity of the method to the choice of several parameters such as the assimilation window size and the number of ensemble members is investigated. We conclude that the system is able to provide satisfactory flux estimates for the relatively large scales resolved by our current observing network and that the loss of information in the approximated covariances is an acceptable price to pay for the efficient computation of a large number of surface fluxes. The full potential of this data assimilation system will be used for near–real time operational estimates of North American CO2 fluxes. This will take advantage of the large amounts of atmospheric data that will be collected by NOAA-CMDL in conjunction with the implementation of the North American Carbon Program (NACP).
机译:我们提出了一个数据同化系统,通过对它们的大气丰度的观测来估计CO2和其他痕量气体的表面通量。该系统基于正在开发的用于数值天气预报(NWP)的整体数据同化方法,并且是首个用于CO2通量估算的同类系统。开发该系统是为了克服当使用大量观测值来估计大量未知表面通量时遇到的计算限制。集成数据同化方法很有吸引力,因为它返回协方差的近似值,不需要观察者的伴随模型或其他线性化,并且提供了优化化学活性痕量气体(例如CH4,CO)通量的可能性相同的框架。我们在伪数据实验中评估了该新系统的性能,该实验类似于我们将应用该系统的实际问题。研究了该方法对同化窗口大小和合奏成员数等几个参数选择的敏感性。我们得出结论,该系统能够为我们当前的观测网络解决的相对较大的比例提供令人满意的通量估计,并且近似协方差中的信息损失是为有效计算大量表面通量所付出的代价。 。该数据同化系统的全部潜力将用于北美CO2通量的近实时运行估算。这将利用NOAA-CMDL结合北美碳计划(NACP)的实施收集的大量大气数据。

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