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Towards automated inclusion of autoxidation chemistry in models: from precursors to atmospheric implications.

Lukas PichelstorferPontus RoldinMatti RissanenNoora HyttinenOlga GarmashCarlton XavierPutian ZhouPetri ClusiusBenjamin ForebackThomas Golin AlmeidaChenjuan DengMetin BaykaraTheo KurtenMichael Boy
Published in: Environmental science: atmospheres (2024)
In the last few decades, atmospheric formation of secondary organic aerosols (SOA) has gained increasing attention due to their impact on air quality and climate. However, methods to predict their abundance are mainly empirical and may fail under real atmospheric conditions. In this work, a close-to-mechanistic approach allowing SOA quantification is presented, with a focus on a chain-like chemical reaction called "autoxidation". A novel framework is employed to (a) describe the gas-phase chemistry, (b) predict the products' molecular structures and (c) explore the contribution of autoxidation chemistry on SOA formation under various conditions. As a proof of concept, the method is applied to benzene, an important anthropogenic SOA precursor. Our results suggest autoxidation to explain up to 100% of the benzene-SOA formed under low-NO x laboratory conditions. Under atmospheric-like day-time conditions, the calculated benzene-aerosol mass continuously forms, as expected based on prior work. Additionally, a prompt increase, driven by the NO 3 radical, is predicted by the model at dawn. This increase has not yet been explored experimentally and stresses the potential for atmospheric SOA formation via secondary oxidation of benzene by O 3 and NO 3 .
Keyphrases
  • particulate matter
  • carbon dioxide
  • drug discovery
  • water soluble
  • climate change
  • high resolution
  • high throughput
  • hydrogen peroxide
  • risk assessment
  • nitric oxide
  • mass spectrometry
  • deep learning