Quantifying errors in surface ozone predictions associated with clouds over the CONUS: a WRF-Chem modeling study using satellite cloud retrievals
Clouds play a key role in radiation and hence O<sub>3</sub> photochemistry by modulating photolysis rates and light-dependent emissions of biogenic volatile organic compounds (BVOCs). It is not well known, however, how much error in O<sub>3</sub> predictions can be directl...
Main Authors: | , , , , |
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Format: | Article |
Language: | English |
Published: |
Copernicus Publications
2018-05-01
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Series: | Atmospheric Chemistry and Physics |
Online Access: | https://www.atmos-chem-phys.net/18/7509/2018/acp-18-7509-2018.pdf |
Summary: | Clouds play a key role in radiation and hence O<sub>3</sub> photochemistry by
modulating photolysis rates and light-dependent emissions of biogenic
volatile organic compounds (BVOCs). It is not well known, however, how much
error in O<sub>3</sub> predictions can be directly attributed to error in cloud
predictions. This study applies the Weather Research and Forecasting with
Chemistry (WRF-Chem) model at 12 km horizontal resolution with the Morrison
microphysics and Grell 3-D cumulus parameterization to quantify uncertainties
in summertime surface O<sub>3</sub> predictions associated with cloudiness over
the contiguous United States (CONUS). All model simulations are driven by
reanalysis of atmospheric data and reinitialized every 2 days. In sensitivity
simulations, cloud fields used for photochemistry are corrected based on
satellite cloud retrievals. The results show that WRF-Chem predicts about
55 % of clouds in the right locations and generally underpredicts cloud
optical depths. These errors in cloud predictions can lead to up to 60 ppb
of
overestimation in hourly surface O<sub>3</sub> concentrations on some days. The
average difference in summertime surface O<sub>3</sub> concentrations derived from
the modeled clouds and satellite clouds ranges from 1 to 5 ppb for maximum
daily 8 h average O<sub>3</sub> (MDA8 O<sub>3</sub>) over the CONUS. This represents up to
∼ 40 % of the total MDA8 O<sub>3</sub> bias under cloudy conditions in
the tested model version. Surface O<sub>3</sub> concentrations are sensitive to
cloud errors mainly through the calculation of photolysis rates (for
∼ 80 %), and to a lesser extent to light-dependent BVOC emissions.
The sensitivity of surface O<sub>3</sub> concentrations to satellite-based cloud
corrections is about 2 times larger in VOC-limited than NO<sub><i>x</i></sub>-limited
regimes. Our results suggest that the benefits of accurate predictions of
cloudiness would be significant in VOC-limited regions, which are typical of
urban areas. |
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ISSN: | 1680-7316 1680-7324 |