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Emission or atmospheric processes? An attempt to attribute the source of large bias of aerosols in eastern China simulated by global climate models

机译:发射或大气过程?试图归因于全球气候模型模拟的东部地区气溶胶大偏见的源泉

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Global climate models often underestimate aerosol loadings in China, and these biases can have significant implications for anthropogenic aerosol radiative forcing and climate effects. The biases may be caused by either the emission inventory or the treatment of aerosol processes in the models, or both, but so far no consensus has been reached. In this study, a relatively new emission inventory based on energy statistics and technology, Multi-resolution Emission Inventory for China (MEIC), is used to drive the Community Atmosphere Model version 5 (CAM5) to evaluate aerosol distribution and radiative effects against observations in China. The model results are compared with the model simulations with the widely used Intergovernmental Panel on Climate Change Fifth Assessment Report (IPCC AR5) emission inventory. We find that the new MEIC emission improves the aerosol optical depth (AOD) simulations in eastern China and explains 22–28?% of the AOD low bias simulated with the AR5 emission. However, AOD is still biased low in eastern China. Seasonal variation of the MEIC emission leads to a better agreement with the observed seasonal variation of primary aerosols than the AR5 emission, but the concentrations are still underestimated. This implies that the atmospheric loadings of primary aerosols are closely related to the emission, which may still be underestimated over eastern China. In contrast, the seasonal variations of secondary aerosols depend more on aerosol processes (e.g., gas- and aqueous-phase production from precursor gases) that are associated with meteorological conditions and to a lesser extent on the emission. It indicates that the emissions of precursor gases for the secondary aerosols alone cannot explain the low bias in the model. Aerosol secondary production processes in CAM5 should also be revisited. The simulation using MEIC estimates the annual-average aerosol direct radiative effects (ADREs) at the top of the atmosphere (TOA), at the surface, and in the atmosphere to be ?5.02, ?18.47, and 13.45?W?m?2, respectively, over eastern China, which are enhanced by ?0.91, ?3.48, and 2.57?W?m?2 compared with the AR5 emission. The differences of ADREs by using MEIC and AR5 emissions are larger than the decadal changes of the modeled ADREs, indicating the uncertainty of the emission inventories. This study highlights the importance of improving both the emission and aerosol secondary production processes in modeling the atmospheric aerosols and their radiative effects. Yet, if the estimations of MEIC emissions in trace gases do not suffer similar biases to those in the AOD, our findings will help affirm a fundamental error in the conversion from precursor gases to secondary aerosols as hinted in other recent studies following different approaches.
机译:全球气候模型往往低估了中国的气溶胶载荷,这些偏差可能对人为气溶胶辐射强制和气候影响产生重大影响。偏差可能是由发射库存或在模型中的气溶胶过程的处理引起的,但到目前为止没有达成共识。在这项研究中,基于能源统计和技术的一个相对较新的排放库存,中国(MEIC)的多分辨率排放库存,用于推动社区氛围版本5(CAM5)来评估气溶胶分配和辐射效应对抗观察中国。将模型结果与模型仿真进行比较,利用气候变化第五次评估报告(IPCC AR5)排放清单广泛使用的政府间展示。我们发现,新的Meic排放改善了中国东部气溶胶光学深度(AOD)模拟,并用AR5发射模拟了22-28倍的AOD低偏差。然而,AOD在中国东部仍处于偏见。 MEIC排放的季节变化导致与AR5发射观察到的原发性气溶胶的季节变化更好,但浓度仍低估。这意味着原发性气溶胶的大气负荷与排放密切相关,仍可能在中国东部低估。相比之下,二次气溶胶的季节性变化更多地依赖于与气象条件相关的气溶胶过程(例如,来自前体气体的水和水相产生),以及在发射的较小程度上。它表明,单独的二次气溶胶前体气体的排放不能解释模型中的低偏差。 CAM5中的气溶胶二级生产过程也应重新审视。使用MEIC估计在大气层(TOA)顶部的年平均气溶胶直接辐射效应(ADRES),在表面上,在大气中,在大气中成为?5.02,?18.47和13.45?W?M?2 ,分别在中国东部,其被增强了0.91,?3.48和2.57?M?2与AR5发射相比。使用MEIC和AR5排放的ADRES的差异大于模拟ADRES的二等变化,表明排放库存的不确定性。本研究突出了改善仿古型气溶胶及其辐射效果的发光和气溶胶二次生产过程的重要性。然而,如果痕量气体中的MEIC排放的估计不会遭受类似的偏差,我们的发现将有助于确认从前体气体转化到二次气溶胶中的基本误差,如在不同方法的其他最近研究中暗示。

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