A CO-based method to determine the regional biospheric signal in atmospheric CO2

B. Oney, N. Gruber, S. Henne, M. Leuenberger, D. Brunner
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引用次数: 20

Abstract

Regional-scale inverse modeling of atmospheric carbon dioxide (CO2) holds promise to determine the net CO2 fluxes between the land biosphere and the atmosphere. This approach requires not only high fidelity of atmospheric transport and mixing, but also an accurate estimation of the contribution of the anthropogenic and background CO2 signals to isolate the biospheric CO2 signal from the atmospheric CO2 variations. Thus, uncertainties in any of these three components directly impact the quality of the biospheric flux inversion. Here, we present and evaluate a carbon monoxide (CO)-based method to reduce these uncertainties solely on the basis of co-located observations. To this end, we use simultaneous observations of CO2 and CO from a background observation site to determine the background mole fractions for both gases, and the regional anthropogenic component of CO together with an estimate of the anthropogenic CO/CO2 mole fraction ratio to determine the anthropogenic CO2 component. We apply this method to two sites of the CarboCount CH observation network on the Swiss Plateau, Beromünster and Lägern-Hochwacht, and use the high-altitude site Jungfraujoch as background for the year 2013. Since such a background site is not always available, we also explore the possibility to use observations from the sites themselves to derive the background. We contrast the method with the standard approach of isolating the biospheric CO2 component by subtracting the anthropogenic and background components simulated by an atmospheric transport model. These tests reveal superior results from the observation-based method with retrieved wintertime biospheric signals being small and having little variance. Both observation- and model-based methods have difficulty to explain observations from late-winter and springtime pollution events in 2013, when anomalously cold temperatures and northeasterly winds tended to bring highly CO-enriched air masses to Switzerland. The uncertainty of anthropogenic CO/CO2 emission ratios is currently the most important factor limiting the method. Further, our results highlight that care needs to be taken when the background component is determined from the site’s observations. Nonetheless, we find that future atmospheric carbon monitoring efforts would profit greatly from at least measuring CO alongside CO2.
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基于co的大气CO2区域生物圈信号测定方法
大气二氧化碳(CO2)的区域尺度反演模型有望确定陆地生物圈和大气之间的CO2净通量。这种方法不仅需要高保真的大气输送和混合,而且需要准确估计人为和背景CO2信号的贡献,从而将生物圈CO2信号与大气CO2变化分离开来。因此,这三个分量中任何一个分量的不确定性都直接影响生物圈通量反演的质量。在这里,我们提出并评估了一种基于一氧化碳(CO)的方法,以减少这些不确定性,仅基于同地观测。为此,我们利用一个背景观测点同时观测的CO2和CO来确定这两种气体的背景摩尔分数,并利用CO的区域人为成分以及估算的CO/CO2摩尔分数比来确定人为CO2成分。我们将该方法应用于瑞士高原的两个CarboCount CH观测网站点berom nster和Lägern-Hochwacht,并以高海拔站点少女峰(Jungfraujoch)作为2013年背景。由于这样的背景站点并不总是可用的,我们也探索了使用站点本身的观测来推导背景的可能性。我们将该方法与通过减去大气输送模式模拟的人为和背景分量来分离生物圈CO2组分的标准方法进行了对比。这些试验表明,基于观测的方法获得的冬季生物圈信号小且方差小,结果较好。基于观测和基于模式的方法都难以解释2013年冬末和春季污染事件的观测结果,当时异常寒冷的气温和东北风倾向于给瑞士带来高度富集co的气团。人为CO/CO2排放比的不确定性是目前限制该方法的最重要因素。此外,我们的研究结果强调,当根据现场观察确定背景成分时,需要注意。尽管如此,我们发现,未来的大气碳监测工作至少可以从测量CO和CO2中获益良多。
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