| Literature DB >> 32672453 |
Qili Dai1,2, Baoshuang Liu1,2, Xiaohui Bi1,2, Jianhui Wu1,2, Danni Liang1, Yufen Zhang1,2, Yinchang Feng1,2, Philip K Hopke3,4.
Abstract
Factor analysis utilizes the covariance of compositional variables to separate sources of ambient pollutants like particulate matter (PM). However, meteorology causes concentration variations in addition to emission rate changes. Conventional positive matrix factorization (PMF) loses information from the data because of these dilution variations. By incorporating the ventilation coefficient, dispersion normalized PMF (DN-PMF) reduces the dilution effects. DN-PMF was applied to hourly speciated particulate composition data from a field campaign that included the start of the COVID-19 outbreak. DN-PMF sharpened the morning coal combustion and rush hour traffic peaks and lowered the daytime soil, aged sea salt, and waste incinerator contributions that better reflect the actual emissions. These results identified significant changes in source contributions after the COVID-19 outbreak in China. During this pandemic, secondary inorganic aerosol became the predominant PM2.5 source representing 50.5% of the mean mass. Fireworks and residential burning (32.0%), primary coal combustion emissions (13.3%), primary traffic emissions (2.1%), soil and aged sea salt (1.2%), and incinerator (0.9%) represent the other contributors. Traffic decreased dramatically (70%) compared to other sources. Soil and aged sea salt also decreased by 68%, likely from decreased traffic.Entities:
Mesh:
Substances:
Year: 2020 PMID: 32672453 DOI: 10.1021/acs.est.0c02776
Source DB: PubMed Journal: Environ Sci Technol ISSN: 0013-936X Impact factor: 9.028