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将AQMEII3模型中侧向边界臭氧命运的差异归因于物理过程表示。

Attributing differences in the fate of lateral boundary ozone in AQMEII3 models to physical process representations.

作者信息

Liu Peng, Hogrefe Christian, Im Ulas, Christensen Jesper H, Bieser Johannes, Nopmongcol Uarporn, Yarwood Greg, Mathur Rohit, Roselle Shawn, Spero Tanya

机构信息

NRC Research Associate, in the National Exposure Research Laboratory, US Environmental Protection Agency, Research Triangle Park, NC 27711, USA.

National Exposure Research Laboratory, US Environmental Protection Agency, Research Triangle Park, NC 27711, USA.

出版信息

Atmos Chem Phys. 2018;18(23):17157-17175. doi: 10.5194/acp-18-17157-2018. Epub 2018 Dec 5.

Abstract

Increasing emphasis has been placed on characterizing the contributions and the uncertainties of ozone imported from outside the US. In chemical transport models (CTMs), the ozone transported through lateral boundaries (referred to as LB ozone hereafter) undergoes a series of physical and chemical processes in CTMs, which are important sources of the uncertainty in estimating the impact of LB ozone on ozone levels at the surface. By implementing inert tracers for LB ozone, the study seeks to better understand how differing representations of physical processes in regional CTMs may lead to differences in the simulated LB ozone that eventually reaches the surface across the US. For all the simulations in this study (including WRF/CMAQ, WRF/CAMx, COSMO-CLM/CMAQ, and WRF/DEHM), three chemically inert tracers that generally represent the altitude ranges of the planetary boundary layer (BC1), free troposphere (BC2), and upper troposphere-lower stratosphere (BC3) are tracked to assess the simulated impact of LB specification. Comparing WRF/CAMx with WRF/CMAQ, their differences in vertical grid structure explain 10 %-60 % of their seasonally averaged differences in inert tracers at the surface. Vertical turbulent mixing is the primary contributor to the remaining differences in inert tracers across the US in all seasons. Stronger vertical mixing in WRF/CAMx brings more BC2 downward, leading to higher BCT (BCT = BC1+BC2+BC3) and BC2/BCT at the surface in WRF/CAMx. Meanwhile, the differences in inert tracers due to vertical mixing are partially counteracted by their difference in sub-grid cloud mixing over the southeastern US and the Gulf Coast region during summer. The process of dry deposition adds extra gradients to the spatial distribution of the differences in DM8A BCT by 5-10 ppb during winter and summer. COSMO-CLM/CMAQ and WRF/CMAQ show similar performance in inert tracers both at the surface and aloft through most seasons, which suggests similarity between the two models at process level. The largest difference is found in summer. Sub-grid cloud mixing plays a primary role in their differences in inert tracers over the southeastern US and the oceans in summer. Our analysis of the vertical profiles of inert tracers also suggests that the model differences in dry deposition over certain regions are offset by the model differences in vertical turbulent mixing, leading to small differences in inert tracers at the surface in these regions.

摘要

人们越来越重视描述从美国境外输入的臭氧的贡献和不确定性。在化学传输模型(CTM)中,通过侧向边界传输的臭氧(以下简称LB臭氧)在CTM中经历一系列物理和化学过程,这是估算LB臭氧对地表臭氧水平影响时不确定性的重要来源。通过对LB臭氧实施惰性示踪剂,该研究旨在更好地理解区域CTM中物理过程的不同表示方式如何导致最终在美国各地到达地表的模拟LB臭氧产生差异。对于本研究中的所有模拟(包括WRF/CMAQ、WRF/CAMx、COSMO-CLM/CMAQ和WRF/DEHM),追踪三种通常代表行星边界层(BC1)、自由对流层(BC2)和对流层上部-平流层下部(BC3)高度范围的化学惰性示踪剂,以评估LB规格的模拟影响。比较WRF/CAMx和WRF/CMAQ,它们在垂直网格结构上的差异解释了其地表惰性示踪剂季节性平均差异的10%-60%。垂直湍流混合是所有季节美国各地惰性示踪剂其余差异的主要原因。WRF/CAMx中更强的垂直混合使更多的BC2向下传输,导致WRF/CAMx地表的BCT(BCT=BC1+BC2+BC3)和BC2/BCT更高。同时,夏季美国东南部和墨西哥湾沿岸地区次网格云混合的差异部分抵消了垂直混合导致的惰性示踪剂差异。干沉降过程在冬季和夏季使DM8A BCT差异的空间分布额外增加了5-10 ppb的梯度。在大多数季节,COSMO-CLM/CMAQ和WRF/CMAQ在地表和高空的惰性示踪剂方面表现出相似的性能,这表明这两个模型在过程层面具有相似性。最大的差异出现在夏季。次网格云混合在夏季美国东南部和海洋的惰性示踪剂差异中起主要作用。我们对惰性示踪剂垂直剖面的分析还表明,某些地区干沉降的模型差异被垂直湍流混合的模型差异抵消,导致这些地区地表惰性示踪剂的差异较小。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/61c3/6687296/1d2d8ba4abd1/nihms-1040801-f0001.jpg

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