Fahey Kathleen M, Sareen Neha, Carlton Annmarie G, Hutzell William T
Office of Research and Development, U.S. Environmental Protection Agency, Research Triangle Park, North Carolina 27711 USA.
Air and Radiation Division, Region 2, U.S. Environmental Protection Agency, New York, New York 10007 USA.
ACS Earth Space Chem. 2025 May 15;9(5):1043-1059. doi: 10.1021/acsearthspacechem.4c00370.
Clouds are important physicochemical processors of atmospheric pollutants. Major contributors to secondary sulfate, clouds also provide media for the production and processing of secondary organic aerosol (SOA). Sulfate and organic compounds often dominate particulate mass, and the accurate representation of their important production and loss pathways in models is necessary to effectively address the adverse health, ecosystem, and climate effects associated with elevated particulate concentrations. In this study we investigate the impacts of an extended cloud-chemistry scheme on predictions of particulate sulfur and low molecular weight organic acids in an annual hemispheric application of the Community Multiscale Air Quality (CMAQ) modeling system, version 5.3. Building upon the previously developed Kinetic Mass Transfer (KMT) framework, the AQCHEM-KMT version 2 (KMT2) cloud-chemistry scheme supplements CMAQ's default (AQCHEM) seven-reaction cloud-chemistry parameterization with additional inorganic and organic aqueous-phase chemistry, including additional S(IV) reactions and replacement of the default in-cloud SOA parameterization with an explicit representation of the aqueous oxidation of small carbonyl compounds. Modeled impacts vary seasonally and spatially, and results indicate that, compared with the default seven-reaction cloud-chemistry scheme, the extended aqueous-phase chemistry mechanism contributes to predicted inorganic and organic aerosol fractions and can lead to increases in seasonally averaged PM predictions up to ~1 μg m, with greater episodic impacts. While model performance for particulate sulfur species is mixed and, in fact, slightly degraded over CONUS on average for these simulations, a comparison with seasonal oxalate observations indicates that the updated cloud chemistry code may lead to improved model performance for organic aerosol, particularly in areas and seasons where there is limited influence from primary organic acid and/or biomass emissions. The work here suggests there may be a potential benefit realized from re-evaluating and updating the simple cloud chemistry parameterizations that are common in chemical transport models. Future efforts should continue improving representation of the most important aqueous-phase chemical pathways in air quality models while minimizing computational cost.
云是大气污染物重要的物理化学处理器。云也是二次硫酸盐的主要贡献者,还为二次有机气溶胶(SOA)的产生和处理提供了介质。硫酸盐和有机化合物通常在颗粒物质量中占主导地位,要有效应对与颗粒物浓度升高相关的对健康、生态系统和气候的不利影响,就必须在模型中准确呈现它们重要的生成和损失途径。在本研究中,我们在社区多尺度空气质量(CMAQ)建模系统5.3版的年度半球应用中,研究了扩展云化学方案对颗粒物硫和低分子量有机酸预测的影响。基于先前开发的动力学质量转移(KMT)框架,AQCHEM-KMT第2版(KMT2)云化学方案用额外的无机和有机水相化学补充了CMAQ的默认(AQCHEM)七反应云化学参数化,包括额外的S(IV)反应,并用小羰基化合物水相氧化的显式表示取代了默认的云内SOA参数化。模拟的影响随季节和空间变化,结果表明,与默认的七反应云化学方案相比,扩展的水相化学机制有助于预测无机和有机气溶胶分数,并且可能导致季节性平均PM预测增加高达约1μg/m³,且有更大的短期影响。虽然这些模拟中颗粒物硫物种的模型性能参差不齐,实际上在整个美国大陆平均略有下降,但与季节性草酸盐观测结果的比较表明,更新后的云化学代码可能会改善有机气溶胶的模型性能,特别是在受一次有机酸和/或生物质排放影响有限的地区和季节。这里的工作表明,重新评估和更新化学传输模型中常见的简单云化学参数化可能会带来潜在益处。未来的工作应继续改进空气质量模型中最重要的水相化学途径的表示,同时尽量降低计算成本。