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Sensitivity to the sources of uncertainties in the modeling of atmospheric CO 2 concentration within and in the vicinity of Paris

机译:在巴黎内部和附近的大气CO 2浓度建模中对不确定因素来源的敏感性

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The top-down atmospheric inversion method that couples atmospheric CO 2 observations with an atmospheric transport model has been used extensively to quantify CO 2 emissions from cities. However, the potential of the method is limited by several sources of misfits between the measured and modeled CO 2 that are of different origins than the targeted CO 2 emissions. This study investigates the critical sources of errors that can compromise the estimates of the city-scale emissions and identifies the signal of emissions that has to be filtered when doing inversions. A set of 1-year forward simulations is carried out using the WRF-Chem model at a horizontal resolution of 1?km focusing on the Paris area with different anthropogenic emission inventories, physical parameterizations, and CO 2 boundary conditions. The simulated CO 2 concentrations are compared with in situ observations from six continuous monitoring stations located within Paris and its vicinity. Results highlight large nighttime model–data misfits, especially in winter within the city, which are attributed to large uncertainties in the diurnal profile of anthropogenic emissions as well as to errors in the vertical mixing near the surface in the WRF-Chem model. The nighttime biogenic respiration to the CO 2 concentration is a significant source of modeling errors during the growing season outside the city. When winds are from continental Europe and the CO 2 concentration of incoming air masses is influenced by remote emissions and large-scale biogenic fluxes, differences in the simulated CO 2 induced by the two different boundary conditions (CAMS and CarbonTracker) can be of up to 5?ppm. Nevertheless, our results demonstrate the potential of our optimal CO 2 atmospheric modeling system to be utilized in atmospheric inversions of CO 2 emissions over the Paris metropolitan area. We evaluated the model performances in terms of wind, vertical mixing, and CO 2 model–data mismatches, and we developed a filtering algorithm for outliers due to local contamination and unfavorable meteorological conditions. Analysis of model–data misfit indicates that future inversions at the mesoscale should only use afternoon urban CO 2 measurements in winter and suburban measurements in summer. Finally, we determined that errors related to CO 2 boundary conditions can be overcome by including distant background observations to constrain the boundary inflow or by assimilating CO 2 gradients of upwind–downwind stations rather than by assimilating absolute CO 2 concentrations.
机译:通过大气运输模型耦合大气CO 2观察的自上而下的大气反演方法,已广泛用于量化城市的二氧化碳排放量。然而,该方法的潜力受到不同于靶向二氧化碳排放的不同起源之间的若干不足的若干不足来源的限制。本研究调查了可能损害城市规模排放估计的临界误差来源,并确定了在进行逆时时必须过滤的排放信号。使用WRF-Chem模型在具有不同人为排放库存,物理参数化和CO 2边界条件的Paris区域的水平分辨率下进行一组1年前进模拟。将模拟的CO 2浓度与位于巴黎内的六个连续监测站及其附近进行比较。结果突出了大量夜间模型数据不足,特别是在城市内的冬季,这归因于人为排放的昼夜概况的大不确定性以及WRF-Chem模型的表面附近的垂直混合中的误差。 CO 2浓度的夜间生物呼吸是在城市外的生长季节期间建模错误的重要来源。当风从欧洲大陆和进入空气群众的二氧化碳浓度受到远程排放和大规模生物通量的影响时,由两个不同的边界条件(凸轮和CarbonTracker)引起的模拟CO 2中的差异可以达到5?ppm。尽管如此,我们的结果表明了我们最佳的CO 2大气建模系统的潜力,用于在巴黎大都市区的CO 2排放的大气反转中使用。我们在风力,垂直混合和CO 2模型数据不匹配方面进行了评估模型性能,并且由于局部污染和不利的气象条件,我们开发了一种因素的过滤算法。模型数据的分析表明,Mescrale的未来反转应该仅在夏季使用冬季和郊区测量的午后城市CO 2测量。最后,我们确定可以通过包括远程背景观察来克服与CO 2边界条件相关的错误来限制边界流入或通过同化逆风站的CO 2梯度而不是通过同化绝对二氧化碳浓度来克服。

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