Megacity Hangzhou, located in eastern China, has experienced severe O pollution in recent years, thereby clarifying the key drivers of the formation is essential to suppress O deterioration. In this study, the ensemble machine learning model (EML) coupled with Shapley additive explanations (SHAP), and positive matrix factorization were used to explore the impact of various factors (including meteorology, chemical components, sources) on O formation during the whole period, pollution days, and typical persistent pollution events from April to October in 2021-2022. The EML model achieved better performance than the single model, with R values of 0.91. SHAP analysis revealed that meteorological conditions had the greatest effects on O variability with the contribution of 57 %-60 % for different pollution levels, and the main drivers were relative humidity and radiation. The effects of chemical factors on O formation presented a positive response to volatile organic compounds (VOCs) and fine particulate matter (PM), and a negative response to nitrogen oxides (NOx). Oxygenated compounds (OVOCs), alkenes, and aromatic of VOCs subgroups had higher contribution; additionally, the effects of PM and NOx were also important and increased with the O deterioration. The impact of seven emission sources on O formation in Hangzhou indicated that vehicle exhaust (35 %), biomass combustion (16 %), and biogenic emissions (12 %) were the dominant drivers. However, for the O pollution days, the effects of biomass combustion and biogenic emissions increased. Especially in persistent pollution events with highest O concentrations, the magnitude of biogenic emission effect elevated significantly by 156 % compared to the whole situations. Our finding revealed that the combination of the EML model and SHAP analysis could provide a reliable method for rapid diagnosis of the cause of O pollution at different event scales, supporting the formulation of control measures.

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http://dx.doi.org/10.1016/j.scitotenv.2024.171295DOI Listing

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