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Seasonal differences in sources and formation processes of PM 2.5 nitrate in an urban environment of North China
Nitrate (NO ) has been the dominant ion of secondary inorganic aerosols (SIAs) in PM in North China. Tracking the formation mechanisms and sources of particulate nitrate are vital to mitigate air pollution. In this study, PM samples in winter (January 2020) and in summer (June 2020) were collected i...
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Published in: | Journal of environmental sciences (China) 2022-10, Vol.120, p.94 |
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Main Authors: | , , , |
Format: | Article |
Language: | English |
Subjects: | |
Online Access: | Get full text |
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Summary: | Nitrate (NO
) has been the dominant ion of secondary inorganic aerosols (SIAs) in PM
in North China. Tracking the formation mechanisms and sources of particulate nitrate are vital to mitigate air pollution. In this study, PM
samples in winter (January 2020) and in summer (June 2020) were collected in Jiaozuo, China, and water-soluble ions and (δ
N, δ
O)-NO
were analyzed. The results showed that the increase of NO
concentrations was the most remarkable with increasing PM
pollution level. δ
O-NO
values for winter samples (82.7‰ to 103.9‰) were close to calculated δ
O-HNO
(103‰ ± 0.8‰) values by N
O
pathway, while δ
O-NO
values (67.8‰ to 85.7‰) for summer samples were close to calculated δ
O-HNO
values (61‰ ± 0.8‰) by OH oxidation pathway, suggesting that PM
nitrate is largely from N
O
pathway in winter, while is largely from OH pathway in summer. Averaged fractional contributions of P
were 70% and 39% in winter and summer sampling periods, respectively, those of P
were 30% and 61%, respectively. Higher δ
N-NO
values for winter samples (3.0‰ to 14.4‰) than those for summer samples (-3.7‰ to 8.6‰) might be due to more contributions from coal combustion in winter. Coal combustion (31% ± 9%, 25% ± 9% in winter and summer, respectively) and biomass burning (30% ± 12%, 36% ± 12% in winter and summer, respectively) were the main sources using Bayesian mixing model. These results provided clear evidence of particulate nitrate formation and sources under different PM
levels, and aided in reducing atmospheric nitrate in urban environments. |
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ISSN: | 1001-0742 |
DOI: | 10.1016/j.jes.2021.08.020 |