Modeling the global emission, transport and deposition of trace elements associated with mineral dust
Trace element deposition from desert dust has important impacts on ocean primary productivity, the quantification of which could be useful in determining the magnitude and sign of the biogeochemical feedback on radiative forcing. However, the impact of elemental deposition to remote ocean regions is...
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ftleibnizopen:oai:oai.leibnizopen.de:qi_SeYsBBwLIz6xGGOOO 2023-11-12T04:18:46+01:00 Modeling the global emission, transport and deposition of trace elements associated with mineral dust Zhang, Y. Mahowald, N. Scanza, R.A. Journet, E. Desboeufs, K. Albani, S. Kok, J.F. Zhuang, G. Chen, Y. Cohen, D.D. Paytan, A. Patey, M.D. Achterberg, E.P. Engelbrecht, J.P. Fomba, K.W. 2015 application/pdf https://doi.org/10.34657/1090 https://oa.tib.eu/renate/handle/123456789/818 eng eng München : European Geopyhsical Union CC BY 3.0 Unported https://creativecommons.org/licenses/by/3.0/ Biogeosciences, Volume 12, Issue 19, Page 5771-5792 concentration (composition) data set database dust emission inventory global ocean ice sheet primary production radiative forcing trace element uncertainty analysis 550 article Text 2015 ftleibnizopen https://doi.org/10.34657/1090 2023-10-30T00:35:59Z Trace element deposition from desert dust has important impacts on ocean primary productivity, the quantification of which could be useful in determining the magnitude and sign of the biogeochemical feedback on radiative forcing. However, the impact of elemental deposition to remote ocean regions is not well understood and is not currently included in global climate models. In this study, emission inventories for eight elements primarily of soil origin, Mg, P, Ca, Mn, Fe, K, Al, and Si are determined based on a global mineral data set and a soil data set. The resulting elemental fractions are used to drive the desert dust model in the Community Earth System Model (CESM) in order to simulate the elemental concentrations of atmospheric dust. Spatial variability of mineral dust elemental fractions is evident on a global scale, particularly for Ca. Simulations of global variations in the Ca / Al ratio, which typically range from around 0.1 to 5.0 in soils, are consistent with observations, suggesting that this ratio is a good signature for dust source regions. The simulated variable fractions of chemical elements are sufficiently different; estimates of deposition should include elemental variations, especially for Ca, Al and Fe. The model results have been evaluated with observations of elemental aerosol concentrations from desert regions and dust events in non-dust regions, providing insights into uncertainties in the modeling approach. The ratios between modeled and observed elemental fractions range from 0.7 to 1.6, except for Mg and Mn (3.4 and 3.5, respectively). Using the soil database improves the correspondence of the spatial heterogeneity in the modeling of several elements (Ca, Al and Fe) compared to observations. Total and soluble dust element fluxes to different ocean basins and ice sheet regions have been estimated, based on the model results. The annual inputs of soluble Mg, P, Ca, Mn, Fe and K associated with dust using the mineral data set are 0.30 Tg, 16.89 Gg, 1.32 Tg, 22.84 Gg, 0.068 Tg, and 0.15 ... Article in Journal/Newspaper Ice Sheet Unknown |
institution |
Open Polar |
collection |
Unknown |
op_collection_id |
ftleibnizopen |
language |
English |
topic |
concentration (composition) data set database dust emission inventory global ocean ice sheet primary production radiative forcing trace element uncertainty analysis 550 |
spellingShingle |
concentration (composition) data set database dust emission inventory global ocean ice sheet primary production radiative forcing trace element uncertainty analysis 550 Zhang, Y. Mahowald, N. Scanza, R.A. Journet, E. Desboeufs, K. Albani, S. Kok, J.F. Zhuang, G. Chen, Y. Cohen, D.D. Paytan, A. Patey, M.D. Achterberg, E.P. Engelbrecht, J.P. Fomba, K.W. Modeling the global emission, transport and deposition of trace elements associated with mineral dust |
topic_facet |
concentration (composition) data set database dust emission inventory global ocean ice sheet primary production radiative forcing trace element uncertainty analysis 550 |
description |
Trace element deposition from desert dust has important impacts on ocean primary productivity, the quantification of which could be useful in determining the magnitude and sign of the biogeochemical feedback on radiative forcing. However, the impact of elemental deposition to remote ocean regions is not well understood and is not currently included in global climate models. In this study, emission inventories for eight elements primarily of soil origin, Mg, P, Ca, Mn, Fe, K, Al, and Si are determined based on a global mineral data set and a soil data set. The resulting elemental fractions are used to drive the desert dust model in the Community Earth System Model (CESM) in order to simulate the elemental concentrations of atmospheric dust. Spatial variability of mineral dust elemental fractions is evident on a global scale, particularly for Ca. Simulations of global variations in the Ca / Al ratio, which typically range from around 0.1 to 5.0 in soils, are consistent with observations, suggesting that this ratio is a good signature for dust source regions. The simulated variable fractions of chemical elements are sufficiently different; estimates of deposition should include elemental variations, especially for Ca, Al and Fe. The model results have been evaluated with observations of elemental aerosol concentrations from desert regions and dust events in non-dust regions, providing insights into uncertainties in the modeling approach. The ratios between modeled and observed elemental fractions range from 0.7 to 1.6, except for Mg and Mn (3.4 and 3.5, respectively). Using the soil database improves the correspondence of the spatial heterogeneity in the modeling of several elements (Ca, Al and Fe) compared to observations. Total and soluble dust element fluxes to different ocean basins and ice sheet regions have been estimated, based on the model results. The annual inputs of soluble Mg, P, Ca, Mn, Fe and K associated with dust using the mineral data set are 0.30 Tg, 16.89 Gg, 1.32 Tg, 22.84 Gg, 0.068 Tg, and 0.15 ... |
format |
Article in Journal/Newspaper |
author |
Zhang, Y. Mahowald, N. Scanza, R.A. Journet, E. Desboeufs, K. Albani, S. Kok, J.F. Zhuang, G. Chen, Y. Cohen, D.D. Paytan, A. Patey, M.D. Achterberg, E.P. Engelbrecht, J.P. Fomba, K.W. |
author_facet |
Zhang, Y. Mahowald, N. Scanza, R.A. Journet, E. Desboeufs, K. Albani, S. Kok, J.F. Zhuang, G. Chen, Y. Cohen, D.D. Paytan, A. Patey, M.D. Achterberg, E.P. Engelbrecht, J.P. Fomba, K.W. |
author_sort |
Zhang, Y. |
title |
Modeling the global emission, transport and deposition of trace elements associated with mineral dust |
title_short |
Modeling the global emission, transport and deposition of trace elements associated with mineral dust |
title_full |
Modeling the global emission, transport and deposition of trace elements associated with mineral dust |
title_fullStr |
Modeling the global emission, transport and deposition of trace elements associated with mineral dust |
title_full_unstemmed |
Modeling the global emission, transport and deposition of trace elements associated with mineral dust |
title_sort |
modeling the global emission, transport and deposition of trace elements associated with mineral dust |
publisher |
München : European Geopyhsical Union |
publishDate |
2015 |
url |
https://doi.org/10.34657/1090 https://oa.tib.eu/renate/handle/123456789/818 |
genre |
Ice Sheet |
genre_facet |
Ice Sheet |
op_source |
Biogeosciences, Volume 12, Issue 19, Page 5771-5792 |
op_rights |
CC BY 3.0 Unported https://creativecommons.org/licenses/by/3.0/ |
op_doi |
https://doi.org/10.34657/1090 |
_version_ |
1782335338516054016 |