Quantifying the impact of sub-grid surface wind variability on sea salt and dust emissions in CAM5
This paper evaluates the impact of sub-grid variability of surface wind on sea salt and dust emissions in the Community Atmosphere Model version 5 (CAM5). The basic strategy is to calculate emission fluxes multiple times, using different wind speed samples of a Weibull probability distribution deriv...
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doaj-eeecd8ab7599435e866f7286ecbde1fb2020-11-24T23:26:41ZengCopernicus PublicationsGeoscientific Model Development1991-959X1991-96032016-02-019260763210.5194/gmd-9-607-2016Quantifying the impact of sub-grid surface wind variability on sea salt and dust emissions in CAM5K. Zhang0C. Zhao1H. Wan2Y. Qian3R. C. Easter4S. J. Ghan5K. Sakaguchi6X. Liu7Pacific Northwest National Laboratory, Richland, WA, USAPacific Northwest National Laboratory, Richland, WA, USAPacific Northwest National Laboratory, Richland, WA, USAPacific Northwest National Laboratory, Richland, WA, USAPacific Northwest National Laboratory, Richland, WA, USAPacific Northwest National Laboratory, Richland, WA, USAPacific Northwest National Laboratory, Richland, WA, USADepartment of Atmospheric Science, University of Wyoming, Laramie, WY, USAThis paper evaluates the impact of sub-grid variability of surface wind on sea salt and dust emissions in the Community Atmosphere Model version 5 (CAM5). The basic strategy is to calculate emission fluxes multiple times, using different wind speed samples of a Weibull probability distribution derived from model-predicted grid-box mean quantities.<br><br> In order to derive the Weibull distribution, the sub-grid standard deviation of surface wind speed is estimated by taking into account four mechanisms: turbulence under neutral and stable conditions, dry convective eddies, moist convective eddies over the ocean, and air motions induced by mesoscale systems and fine-scale topography over land. The contributions of turbulence and dry convective eddy are parameterized using schemes from the literature. Wind variabilities caused by moist convective eddies and fine-scale topography are estimated using empirical relationships derived from an operational weather analysis data set at 15 km resolution. The estimated sub-grid standard deviations of surface wind speed agree well with reference results derived from 1 year of global weather analysis at 15 km resolution and from two regional model simulations with 3 km grid spacing.<br><br>The wind-distribution-based emission calculations are implemented in CAM5. In terms of computational cost, the increase in total simulation time turns out to be less than 3 %. Simulations at 2° resolution indicate that sub-grid wind variability has relatively small impacts (about 7 % increase) on the global annual mean emission of sea salt aerosols, but considerable influence on the emission of dust. Among the considered mechanisms, dry convective eddies and mesoscale flows associated with topography are major causes of dust emission enhancement. With all the four mechanisms included and without additional adjustment of uncertain parameters in the model, the simulated global and annual mean dust emission increase by about 50 % compared to the default model. By tuning the globally constant dust emission scale factor, the global annual mean dust emission, aerosol optical depth, and top-of-atmosphere radiative fluxes can be adjusted to the level of the default model, but the frequency distribution of dust emission changes, with more contribution from weaker wind events and less contribution from stronger wind events. In Africa and Asia, the overall frequencies of occurrence of dust emissions increase, and the seasonal variations are enhanced, while the geographical patterns of the emission frequency show little change.http://www.geosci-model-dev.net/9/607/2016/gmd-9-607-2016.pdf |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
K. Zhang C. Zhao H. Wan Y. Qian R. C. Easter S. J. Ghan K. Sakaguchi X. Liu |
spellingShingle |
K. Zhang C. Zhao H. Wan Y. Qian R. C. Easter S. J. Ghan K. Sakaguchi X. Liu Quantifying the impact of sub-grid surface wind variability on sea salt and dust emissions in CAM5 Geoscientific Model Development |
author_facet |
K. Zhang C. Zhao H. Wan Y. Qian R. C. Easter S. J. Ghan K. Sakaguchi X. Liu |
author_sort |
K. Zhang |
title |
Quantifying the impact of sub-grid surface wind variability on sea salt and dust emissions in CAM5 |
title_short |
Quantifying the impact of sub-grid surface wind variability on sea salt and dust emissions in CAM5 |
title_full |
Quantifying the impact of sub-grid surface wind variability on sea salt and dust emissions in CAM5 |
title_fullStr |
Quantifying the impact of sub-grid surface wind variability on sea salt and dust emissions in CAM5 |
title_full_unstemmed |
Quantifying the impact of sub-grid surface wind variability on sea salt and dust emissions in CAM5 |
title_sort |
quantifying the impact of sub-grid surface wind variability on sea salt and dust emissions in cam5 |
publisher |
Copernicus Publications |
series |
Geoscientific Model Development |
issn |
1991-959X 1991-9603 |
publishDate |
2016-02-01 |
description |
This paper evaluates the impact of sub-grid variability of surface wind on
sea salt and dust emissions in the Community Atmosphere Model version 5
(CAM5). The basic strategy is to calculate emission fluxes multiple times,
using different wind speed samples of a Weibull probability distribution
derived from model-predicted grid-box mean quantities.<br><br>
In order to derive the Weibull distribution, the sub-grid standard deviation
of surface wind speed is estimated by taking into account four mechanisms:
turbulence under neutral and stable conditions, dry convective eddies, moist
convective eddies over the ocean, and air motions induced by mesoscale
systems and fine-scale topography over land. The contributions of turbulence
and dry convective eddy are parameterized using schemes from the literature.
Wind variabilities caused by moist convective eddies and fine-scale
topography are estimated using empirical relationships derived from an
operational weather analysis data set at 15 km resolution. The
estimated sub-grid standard deviations of surface wind speed agree well with
reference results derived from 1 year of global weather analysis at
15 km resolution and from two regional model simulations with
3 km grid spacing.<br><br>The wind-distribution-based emission calculations are implemented in CAM5.
In terms of computational cost, the increase in total simulation time turns
out to be less than 3 %.
Simulations at 2° resolution indicate that sub-grid wind variability has
relatively small impacts (about 7 % increase) on the global annual mean emission
of sea salt aerosols, but
considerable influence on the emission of dust. Among the considered mechanisms,
dry convective eddies and mesoscale flows associated with topography are major causes
of dust emission enhancement. With all the four mechanisms included and without
additional adjustment of uncertain parameters in the model, the simulated global
and annual mean dust emission increase by about 50 % compared to the default model.
By tuning the globally constant dust emission scale factor, the global annual mean
dust emission, aerosol optical depth, and top-of-atmosphere radiative fluxes can be
adjusted to the level of the default model,
but the frequency distribution of dust emission changes,
with more contribution from weaker wind events and less
contribution from stronger wind events.
In Africa and Asia, the overall frequencies of occurrence of dust emissions increase,
and the seasonal variations are enhanced, while the geographical
patterns of the emission frequency show little change. |
url |
http://www.geosci-model-dev.net/9/607/2016/gmd-9-607-2016.pdf |
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