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Lee, Myong-In
UNIST Climate Environment Modeling Lab.
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Seasonal Dependence of Aerosol Data Assimilation and Forecasting Using Satellite and Ground-Based Observations

Author(s)
Lee, SeungheeKim, GanghanLee, Myong-InChoi, YonghanSong, Chang-KeunKim, Hyeon-Kook
Issued Date
2022-04
DOI
10.3390/rs14092123
URI
https://scholarworks.unist.ac.kr/handle/201301/58651
Fulltext
https://www.mdpi.com/2072-4292/14/9/2123
Citation
REMOTE SENSING, v.14, no.9, pp.2123
Abstract
This study examines the performance of a data assimilation and forecasting system that simultaneously assimilates satellite aerosol optical depth (AOD) and ground-based PM10 and PM2.5 observations into the Weather Research and Forecasting model coupled with Chemistry (WRF-Chem). The data assimilation case for the surface PM10 and PM2.5 concentrations exhibits a higher consistency with the observed data by showing more correlation coefficients than the no-assimilation case. The data assimilation also shows beneficial impacts on the PM10 and PM2.5 forecasts for South Korea for up to 24 h from the updated initial condition. This study also finds deficiencies in data assimilation and forecasts, as the model shows a pronounced seasonal dependence of forecasting accuracy, on which the seasonal changes in regional atmospheric circulation patterns have a significant impact. In spring, the forecast accuracy decreases due to large uncertainties in natural dust transport from the continent by north-westerlies, while the model performs reasonably well in terms of anthropogenic emission and transport in winter. When the south-westerlies prevail in summer, the forecast accuracy increases with the overall reduction in ambient concentration. The forecasts also show significant accuracy degradation as the lead time increases because of systematic model biases. A simple statistical correction that adjusts the mean and variance of the forecast outputs to resemble those in the observed distribution can maintain the forecast skill at a practically useful level for lead times of more than a day. For a categorical forecast, the skill score of the data assimilation run increased by up to 37% compared to that of the case with no assimilation, and the skill score was further improved by 10% through bias correction.
Publisher
MDPI
ISSN
2072-4292
Keyword (Author)
data assimilationair quality modelingaerosol forecastseasonal dependence
Keyword
AIR-QUALITYEAST-ASIACHEMICAL TRACERSNEXT-GENERATIONBLACK CARBONMODELPM2.5EMISSIONSPRODUCTSOZONE

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