Improvement of PM10 prediction in East Asia using inverse modeling

Aerosols from anthropogenic emissions in industrialized region in China as well as dust emissions from southern Mongolia and northern China that transport along prevailing northwestern wind have a large influence on the air quality in Korea. The emission inventory in the East Asia region is an impor...

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Veröffentlicht in:Atmospheric environment (1994) 2015-04, Vol.106, p.318-328
Hauptverfasser: Koo, Youn-Seo, Choi, Dae-Ryun, Kwon, Hi-Yong, Jang, Young-Kee, Han, Jin-Seok
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Sprache:eng
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Zusammenfassung:Aerosols from anthropogenic emissions in industrialized region in China as well as dust emissions from southern Mongolia and northern China that transport along prevailing northwestern wind have a large influence on the air quality in Korea. The emission inventory in the East Asia region is an important factor in chemical transport modeling (CTM) for PM10 (particulate matters less than 10 ㎛ in aerodynamic diameter) forecasts and air quality management in Korea. Most previous studies showed that predictions of PM10 mass concentration by the CTM were underestimated when comparing with observational data. In order to fill the gap in discrepancies between observations and CTM predictions, the inverse Bayesian approach with Comprehensive Air-quality Model with extension (CAMx) forward model was applied to obtain optimized a posteriori PM10 emissions in East Asia. The predicted PM10 concentrations with a priori emission were first compared with observations at monitoring sites in China and Korea for January and August 2008. The comparison showed that PM10 concentrations with a priori PM10 emissions for anthropogenic and dust sources were generally under-predicted. The result from the inverse modeling indicated that anthropogenic PM10 emissions in the industrialized and urbanized areas in China were underestimated while dust emissions from desert and barren soil in southern Mongolia and northern China were overestimated. A priori PM10 emissions from northeastern China regions including Shenyang, Changchun, and Harbin were underestimated by about 300% (i.e., the ratio of a posteriori to a priori PM10 emission was a factor of about 3). The predictions of PM10 concentrations with a posteriori emission showed better agreement with the observations, implying that the inverse modeling minimized the discrepancies in the model predictions by improving PM10 emissions in East Asia. •Develop a PM10 emission inventory using analytical inverse modeling.•Anthropogenic PM10 emissions of INTEX-B in China are underestimated.•There are large uncertainties in estimating dust emissions.•Emissions in northeastern China are highly underestimated by about 300%.•Inverse modeling is an effective tool in providing top-down emission inventory.
ISSN:1352-2310
1873-2844
DOI:10.1016/j.atmosenv.2015.02.004