Evaluation of the offline-coupled GFSv15–FV3–CMAQv5.0.2 in support of the next-generation National Air Quality Forecast Capability over the contiguous United States
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Published:2021-06-29
Issue:6
Volume:14
Page:3969-3993
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ISSN:1991-9603
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Container-title:Geoscientific Model Development
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language:en
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Short-container-title:Geosci. Model Dev.
Author:
Chen XiaoyangORCID, Zhang Yang, Wang Kai, Tong DanielORCID, Lee Pius, Tang YouhuaORCID, Huang Jianping, Campbell Patrick C., Mcqueen Jeff, Pye Havala O. T.ORCID, Murphy Benjamin N.ORCID, Kang DaiwenORCID
Abstract
Abstract. As a candidate for the next-generation National Air Quality Forecast
Capability (NAQFC), the meteorological forecast from the Global Forecast System
with the new Finite Volume Cube-Sphere dynamical core (GFS–FV3) will be
applied to drive the chemical evolution of gases and particles described by
the Community Multiscale Air Quality modeling system. CMAQv5.0.2, a
historical version of CMAQ, has been coupled with the North American Mesoscale
Forecast System (NAM) model in the current operational NAQFC. An experimental
version of the NAQFC based on the offline-coupled GFS–FV3 version 15 with
CMAQv5.0.2 modeling system (GFSv15–CMAQv5.0.2) has been developed by the
National Oceanic and Atmospheric Administration (NOAA) to provide real-time
air quality forecasts over the contiguous United States (CONUS) since 2018. In
this work, comprehensive region-specific, time-specific, and categorical
evaluations are conducted for meteorological and chemical forecasts from the
offline-coupled GFSv15–CMAQv5.0.2 for the year 2019. The forecast system shows
good overall performance in forecasting meteorological variables with the
annual mean biases of −0.2 ∘C for temperature at 2 m,
0.4 % for relative humidity at 2 m, and 0.4 m s−1 for
wind speed at 10 m compared to the METeorological Aerodrome Reports
(METAR) dataset. Larger biases occur in seasonal and monthly mean forecasts,
particularly in spring. Although the monthly accumulated precipitation
forecasts show generally consistent spatial distributions with those from the
remote-sensing and ensemble datasets, moderate-to-large biases exist in hourly
precipitation forecasts compared to the Clean Air Status and Trends Network
(CASTNET) and METAR. While the forecast system performs well in forecasting
ozone (O3) throughout the year and fine particles with a diameter of
2.5 µm or less (PM2.5) for warm months (May–September),
it significantly overpredicts annual mean concentrations of
PM2.5. This is due mainly to the high predicted concentrations of
fine fugitive and coarse-mode particle components. Underpredictions in the
southeastern US and California during summer are attributed to missing
sources and mechanisms of secondary organic aerosol formation from biogenic
volatile organic compounds (VOCs) and semivolatile or intermediate-volatility organic compounds. This work
demonstrates the ability of FV3-based GFS in driving the air quality
forecasting. It identifies possible underlying causes for systematic region-
and time-specific model biases, which will provide a scientific basis for
further development of the next-generation NAQFC.
Publisher
Copernicus GmbH
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