Articles | Volume 8, issue 5
https://doi.org/10.5194/gmd-8-1357-2015
https://doi.org/10.5194/gmd-8-1357-2015
Model description paper
 | 
12 May 2015
Model description paper |  | 12 May 2015

A dynamic marine iron cycle module coupled to the University of Victoria Earth System Model: the Kiel Marine Biogeochemical Model 2 for UVic 2.9

L. Nickelsen, D. P. Keller, and A. Oschlies

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Cited articles

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In this paper we find that including the marine cycle of the phytoplankton nutrient iron in a global climate model improves the agreement between observed and simulated nutrient concentrations in the ocean and that a better description of the source of iron from the sediment to the ocean is more important than that of iron-containing dust deposition. Finally, we find that the response of the iron cycle to climate warming affects the phytoplankton growth and nutrient cycles.