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Comparing the CarbonTracker and TM5-4DVar data assimilation systems for COsub2/sub surface flux inversions

机译:比较CO 2 表面通量反演的CarbonTracker和TM5-4DVar数据同化系统

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pstrongAbstract./strong Data assimilation systems allow for estimating surface fluxes of greenhouse gases from atmospheric concentration measurements. Good knowledge about fluxes is essential to understand how climate change affects ecosystems and to characterize feedback mechanisms. Based on the assimilation of more than 1 year of atmospheric in situ concentration measurements, we compare the performance of two established data assimilation models, CarbonTracker and TM5-4DVar (Transport Model 5 a?? Four-Dimensional Variational model), for COsub2/sub flux estimation. CarbonTracker uses an ensemble Kalman filter method to optimize fluxes on ecoregions. TM5-4DVar employs a 4-D variational method and optimizes fluxes on a 6?° × 4?° longitudea??latitude grid. Harmonizing the input data allows for analyzing the strengths and weaknesses of the two approaches by direct comparison of the modeled concentrations and the estimated fluxes. We further assess the sensitivity of the two approaches to the density of observations and operational parameters such as the length of the assimilation time window. brbr Our results show that both models provide optimized COsub2/sub concentration fields of similar quality. In Antarctica CarbonTracker underestimates the wintertime COsub2/sub concentrations, since its 5-week assimilation window does not allow for adjusting the distant surface fluxes in response to the detected concentration mismatch. Flux estimates by CarbonTracker and TM5-4DVar are consistent and robust for regions with good observation coverage, regions with low observation coverage reveal significant differences. In South America, the fluxes estimated by TM5-4DVar suffer from limited representativeness of the few observations. For the North American continent, mimicking the historical increase of the measurement network density shows improving agreement between CarbonTracker and TM5-4DVar flux estimates for increasing observation density./p.
机译:> >摘要。数据同化系统可以根据大气浓度测量值估算温室气体的表面通量。对通量的充分了解对于理解气候变化如何影响生态系统和表征反馈机制至关重要。基于对超过一年的大气原位浓度测量结果的同化,我们比较了两个已建立的数据同化模型CarbonTracker和TM5-4DVar(运输模型5 a ??二维变分模型)对于CO 2 通量估计。 CarbonTracker使用集成卡尔曼滤波方法来优化生态区域上的通量。 TM5-4DVar采用4-D变分方法并在6?°时优化通量; 4度经度-纬度网格。协调输入数据可通过直接比较建模浓度和估算通量来分析两种方法的优缺点。我们进一步评估了两种方法对观测密度和操作参数(如同化时间窗口的长度)的敏感性。 我们的结果表明,两个模型都提供了质量相似的优化的CO 2 浓度场。在南极洲,CarbonTracker低估了冬季的CO 2 浓度,因为它的5周同化窗口不允许根据检测到的浓度失配来调节远处的表面通量。 CarbonTracker和TM5-4DVar的通量估计值对于观察覆盖率好的区域是一致且稳健的,而观察覆盖率低的区域则显示出显着差异。在南美,TM5-4DVar估算的通量受到少数观测值的代表性有限的困扰。对于北美大陆,模拟测量网络密度的历史增长表明,CarbonTracker和TM5-4DVar通量估计值之间的一致性提高,从而提高了观测密度。

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