Improving ozone simulations in Asia via multisource data assimilation:results from an observing system simulation experiment with GEMSgeostationary satellite observations

Atmospheric Chemistry and Physics(2023)

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摘要
The applications of geostationary (GEO) satellite measurements at an unprecedented spatial and temporal resolution from the Geostationary Environment Monitoring Spectrometer (GEMS) for monitoring and forecasting the alarming ozone pollution in Asia through data assimilation remain at the early stage. Here we investigate the benefit of multiple ozone observations from GEMS geostationary satellite, low Earth orbit (LEO) satellite, and surface networks on summertime ozone simulations through individual or joint data assimilation, built on our previous observing system simulation experiment (OSSE) framework (Shu et al., 2022). We find that data assimilation improves the monitoring of exceedance, spatial patterns, and diurnal variations of surface ozone, with a regional mean negative bias reduction from 2.1 to 0.2-1.2 ppbv in ozone simulations as well as significant improvements of a root-mean-square error (RMSE) of by 5 %-69 % in most Asian countries. Furthermore, the joint assimilation of GEMS and surface observations performs the best. GEMS also brings direct added value for better reproducing ozone vertical distributions, especially in the middle to upper troposphere at low latitudes, but may mask the added value of LEO measurements, which are crucial to constrain surface and upper tropospheric ozone simulations when observations from other platforms are inadequate. Our study provides a valuable reference for ozone data assimilation as multisource observations become gradually available in the era of GEO satellites.
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关键词
ozone simulations,multisource data assimilation,geostationary satellite observations,asia
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