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1.
大気環境学会誌 ; 55(6):239-247, 2020.
Article in Japanese | J-STAGE | ID: covidwho-844378

ABSTRACT

In order to prevent the spread of COVID-19, the Chinese government imposed a lockdown. During this period, anthropogenic emissions will be reduced;therefore, the trans-boundary air pollution will be changed. The analysis of surface observations by the automated aerosol chemical speciation analyzer (ACSA) showed that the dramatic reduction with 3050 of PM 2.5 , sulfate (SO 4 2), and nitrate (NO 3) on FebruaryMarch 2020 compared to 20182019. The results of the chemical transport model suggested that the reduction of SO 4 2 was mostly caused by SO 2 emission reduction whereas that of NO 3 was dominated by the meteorological variability. The record high warm winter on 2020 was related to the unfavorable condition to produce NO 3 .

2.
Atmos Environ (1994) ; 244: 117972, 2021 Jan 01.
Article in English | MEDLINE | ID: covidwho-800026

ABSTRACT

The lockdown measures due to COVID-19 affected the industry, transportation and other human activities within China in early 2020, and subsequently the emissions of air pollutants. The decrease of atmospheric NO2 due to the COVID-19 lockdown and other factors were quantitively analyzed based on the surface concentrations by in-situ observations, the tropospheric vertical column densities (VCDs) by different satellite retrievals including OMI and TROPOMI, and the model simulations by GEOS-Chem. The results indicated that due to the COVID-19 lockdown, the surface NO2 concentrations decreased by 42% ± 8% and 26% ± 9% over China in February and March 2020, respectively. The tropospheric NO2 VCDs based on both OMI and high quality (quality assurance value (QA) ≥ 0.75) TROPOMI showed similar results as the surface NO2 concentrations. The daily variations of atmospheric NO2 during the first quarter (Q1) of 2020 were not only affected by the COVID-19 lockdown, but also by the Spring Festival (SF) holiday (January 24-30, 2020) as well as the meteorology changes due to seasonal transition. The SF holiday effect resulted in a NO2 reduction from 8 days before SF to 21 days after it (i.e. January 17 - February 15), with a maximum of 37%. From the 6 days after SF (January 31) to the end of March, the COVID-19 lockdown played an important role in the NO2 reduction, with a maximum of 51%. The meteorology changes due to seasonal transition resulted in a nearly linear decreasing trend of 25% and 40% reduction over the 90 days for the NO2 concentrations and VCDs, respectively. Comparisons between different datasets indicated that medium quality (QA ≥ 0.5) TROPOMI retrievals might suffer large biases in some periods, and thus attention must be paid when they are used for analyses, data assimilations and emission inversions.

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