2014
DOI: 10.1002/2014gb004853
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Recent variability of the global ocean carbon sink

Abstract: We present a new observation-based estimate of the global oceanic carbon dioxide (CO2) sink and its temporal variation on a monthly basis from 1998 through 2011 and at a spatial resolution of 1×1. This sink estimate rests upon a neural network-based mapping of global surface ocean observations of the partial pressure of CO2 (pCO2) from the Surface Ocean CO2 Atlas database. The resulting pCO2 has small biases when evaluated against independent observations in the different ocean basins, but larger randomly dist… Show more

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Cited by 383 publications
(672 citation statements)
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References 131 publications
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“…34. The correlations between the uncertainties in the two data-driven estimates of O (17,18) are estimated from the series of annual fluxes of the two products by assuming that the correlation in annual fluxes within each 5-y period is an approximation of the 5-y mean flux error correlation.…”
Section: Methodsmentioning
confidence: 99%
See 1 more Smart Citation
“…34. The correlations between the uncertainties in the two data-driven estimates of O (17,18) are estimated from the series of annual fluxes of the two products by assuming that the correlation in annual fluxes within each 5-y period is an approximation of the 5-y mean flux error correlation.…”
Section: Methodsmentioning
confidence: 99%
“…(17,18,20). The constraining data tiers (Table S2) were defined as follows: tier 1, direct carbon observations (e.g., CGR); tier 2, indirect carbon observations unambiguously related to carbon quantities (e.g., O 2 /N 2 ); tier 3, direct carbon observations with an empirical (data-driven) model used to obtain global estimates, for example, the use of geostatistics to up-scale local data into global values; tier 4, indirect carbon observations not simply related to global carbon flux quantities.…”
Section: Methodsmentioning
confidence: 99%
“…The relationship is then applied to remotely sensed data for which there are no CO 2 measurements, to improve CO 2 data coverage. This approach has shown some promising potential in the North Atlantic where data coverage is more extensive 31,32 , and has also been extended to the Southern Ocean 33 . Furthermore, the approach has more recently been refined by using artificial neural networks to highlight the importance of input parameters and self-organising maps, to illustrate the usefulness of empirical models as tools to reduce uncertainty of CO 2 estimates.…”
Section: Marine Observationsmentioning
confidence: 99%
“…The global ocean is a major long-term sink for anthropogenic carbon dioxide (CO 2 ) [Le Quéré et al, 2016], and yet the spatial and temporal variability of the oceanic CO 2 sink has large uncertainties [Landschützer et al, 2014;Rödenbeck et al, 2015]. High precision atmospheric oxygen (O 2 ) and CO 2 data can be combined to isolate the ocean influences on atmospheric O 2 variability, by removing the influence of the terrestrial biosphere on O 2 .…”
Section: Introductionmentioning
confidence: 99%