GOES 8 aerosol optical thickness assimilation in a mesoscale model: Online integration of aerosol radiative effects
Author(s) -
Wang Jun,
Nair U. S.,
Christopher Sundar A.
Publication year - 2004
Publication title -
journal of geophysical research: atmospheres
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.67
H-Index - 298
eISSN - 2156-2202
pISSN - 0148-0227
DOI - 10.1029/2004jd004827
Subject(s) - aerosol , downwelling , radiative transfer , atmospheric sciences , environmental science , mesoscale meteorology , shortwave , longwave , troposphere , data assimilation , weather research and forecasting model , meteorology , physics , geology , oceanography , quantum mechanics , upwelling
To investigate the importance of aerosol radiative effects in the troposphere, numerical simulation of a dust event during the Puerto Rico Dust Experiment is presented by using the Colorado State University Regional Atmospheric Modeling System (RAMS). Through assimilation of geostationary satellite‐derived aerosol optical thickness (AOT) into the RAMS, spatial and temporal aerosol distribution is optimally characterized, facilitating direct comparison with surface observations of downwelling radiative energy fluxes and 2 m air temperature that is not possible with a free‐running mesoscale model. Two simulations with and without consideration of aerosol radiative effects are performed. Comparisons against observations show that direct online integration of aerosol radiative effects produces realistic downwelling shortwave and longwave fluxes at the surface but minimal improvement on 2 m air temperature at the observation location. Numerical simulations show that for the dust loading considered in this study (AOT = 0.45 at 0.67 μm), if the dust radiative effects are not properly represented, the uncertainty in the simulated AOT is about ±5 to ±10%, the surface radiative energy is overestimated by 30–40 W m −2 during the day and underestimated by 10 W m −2 during the night, and the bias in air temperatures near the surface could be up to ±0.5°C, though these biases also depend on local time, AOT values, and surface properties. The results from this study demonstrate that the assimilation of satellite aerosol retrievals not only improves the aerosol forecasts but also has the potential to reduce the uncertainties in modeling the surface energy budget and other associated atmospheric processes.
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