OceanSODA-UNEXE: a multi-year gridded Amazon and Congo River outflow surface ocean carbonate system dataset

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Abstract

Large rivers play an important role in transferring water and all of its constituents, including carbon in its various forms, from the land to the ocean, but the seasonal and inter-annual variations in these riverine flows remain unclear. Satellite Earth observation datasets and reanalysis products can now be used to observe synoptic-scale spatial and temporal variations in the carbonate system within large river outflows. Here, we present the University of Exeter (UNEXE) Satellite Oceanographic Datasets for Acidification (OceanSODA) dataset (OceanSODA-UNEXE) time series, a dataset of the full carbonate system in the surface water outflows of the Amazon (2010-2020) and Congo (2002-2016) rivers. Optimal empirical approaches were used to generate gridded total alkalinity (TA) and dissolved inorganic carbon (DIC) fields in the outflow regions. These combinations were determined by equitably evaluating all combinations of algorithms and inputs against a reference matchup database of in situ observations. Gridded TA and DIC along with gridded temperature and salinity data enable the calculation of the full carbonate system in the surface ocean (which includes pH and the partial pressure of carbon dioxide, pCO2). The algorithm evaluation constitutes a Type-A uncertainty evaluation for TA and DIC, in which model, input and sampling uncertainties are considered. Total combined uncertainties for TA and DIC were propagated through the carbonate system calculation, allowing all variables to be provided with an associated uncertainty estimate. In the Amazon outflow, the total combined uncertainty for TA was 36 μmolkg-1 (weighted root-mean-squared difference, RMSD, of 35 μmolkg-1 and weighted bias of 8 μmolkg-1 for n Combining double low line 82), whereas it was 44 μmolkg-1 for DIC (weighted RMSD of 44 μmolkg-1 and weighted bias of -6 μmolkg-1 for n Combining double low line 70). The spatially averaged propagated combined uncertainties for the pCO2 and pH were 85 μatm and 0.08, respectively, where the pH uncertainty was relative to an average pH of 8.19. In the Congo outflow, the combined uncertainty for TA was identified as 29 μmolkg-1 (weighted RMSD of 28 μmolkg-1 and weighted bias of 6 μmolkg-1 for n Combining double low line 102), whereas it was 40 μmolkg-1 for DIC (weighted RMSD of 37 μmolkg-1 and weighted bias of -16 μmolkg-1 for n Combining double low line 77). The spatially averaged propagated combined uncertainties for pCO2 and pH were 74 μatm and 0.08, respectively, where the pH uncertainty was relative to an average pH of 8.21. The combined uncertainties in TA and DIC in the Amazon and Congo outflows are lower than the natural variability within their respective regions, allowing the time-varying regional variability to be evaluated. Potential uses of these data would be the assessment of the spatial and temporal flow of carbon from the Amazon and Congo rivers into the Atlantic and the assessment of the riverine-driven carbonate system variations experienced by tropical reefs within the outflow regions. The data presented in this work are available at 10.1594/PANGAEA.946888 (Sims et al., 2023).

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Sims, R. P., Holding, T. M., Land, P. E., Piolle, J. F., Green, H. L., & Shutler, J. D. (2023). OceanSODA-UNEXE: a multi-year gridded Amazon and Congo River outflow surface ocean carbonate system dataset. Earth System Science Data, 15(6), 2499–2516. https://doi.org/10.5194/essd-15-2499-2023

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