Kinetic Modeling
of Secondary Organic Aerosol in a
Weather-Chemistry Model: Parameterizations, Processes, and Predictions
for GOAmazon
Posted on 2025-01-24 - 19:34
Secondary
organic aerosol (SOA) forms and evolves in the atmosphere
through many pathways and processes, over diverse spatial and time
scales. Hence, there is a need to represent these widely varying kinetic
processes in large-scale atmospheric models to allow for accurate
predictions of the abundance, properties, and impacts of SOA. In this
work, we integrated a kinetic, process-level model (simpleSOM-MOSAIC)
into a weather-chemistry model (WRF-Chem) to simulate the oxidation
chemistry and microphysics of atmospheric SOA. simpleSOM-MOSAIC simulates
multigenerational gas-phase chemistry, autoxidation reactions, aqueous
chemistry, heterogeneous oxidation, oligomerization, and phase-state-influenced
gas/particle partitioning of SOA. As a case study, the integrated
WRF-Chem-simpleSOM-MOSAIC (WC-SSM) model was used to simulate the
photochemical evolution downwind of a large city (Manaus, Brazil)
in the Amazon and, in turn, study the anthropogenic and biogenic interactions
in an otherwise pristine environment. Consistent with previous work,
we found that OA was enhanced by up to a factor of 4 in the urban
plume due to elevated hydroxyl radical (OH) concentrations, relative
to the background, and that this OA was dominated by SOA from biogenic
precursors (80%). In addition to accurately simulating the OA enhancement
in the urban plume, the model reproduced the magnitude of the OA oxygen-to-carbon
(O:C) ratio and broadly tracked the evolution of the aerosol number
size distribution. Our work highlights the importance of including
an integrated, kinetic representation of SOA processes in an atmospheric
model.
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He, Yicong; Bilsback, Kelsey R.; Shrivastava, Manish; Zaveri, Rahul A.; Shilling, John E.; Seinfeld, John H.; et al. (2025). Kinetic Modeling
of Secondary Organic Aerosol in a
Weather-Chemistry Model: Parameterizations, Processes, and Predictions
for GOAmazon. ACS Publications. Collection. https://doi.org/10.1021/acsestair.4c00240Â