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Improved winter data coverage of the Southern Ocean CO2 sink from extrapolation of summertime observations

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Landschützer,  Peter       
Observations, Analysis and Synthesis (OAS), The Ocean in the Earth System, MPI for Meteorology, Max Planck Society;

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Citation

Mackay, N., Watson, A. J., Suntharalingam, P., Chen, Z., & Landschützer, P. (2022). Improved winter data coverage of the Southern Ocean CO2 sink from extrapolation of summertime observations. Communications Earth and Environment, 3: 265. doi:10.1038/s43247-022-00592-6.


Cite as: https://hdl.handle.net/21.11116/0000-000B-756B-A
Abstract
The Southern Ocean is an important sink of anthropogenic CO2, but it is among the least well-observed ocean basins, and consequentially substantial uncertainties in the CO2 flux reconstruction exist. A recent attempt to address historically sparse wintertime sampling produced ‘pseudo’ wintertime observations of surface pCO2 using subsurface summertime observations south of the Antarctic Polar Front. Here, we present an estimate of the Southern Ocean CO2 sink that combines a machine learning-based mapping method with an updated set of pseudo observations that increases regional wintertime data coverage by 68 compared with the historical dataset. Our results confirm the suggestion that improved winter coverage has a modest impact on the reconstruction, slightly strengthening the uptake trend in the 2000s. After also adjusting for surface boundary layer temperature effects, we find a 2004-2018 mean sink of −0.16 ± 0.07 PgC yr−1 south of the Polar Front and −1.27 ± 0.23 PgC yr−1 south of 35°S, consistent with independent estimates from atmospheric data. © 2022, The Author(s).