An Alternative to Static Climatologies: Robust Estimation of Open Ocean CO2 Variables and Nutrient Concentrations From T, S, and O2 Data Using Bayesian Neural Networks.

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Date
2021Author
Bittig, Henry C.
Steinhoff, Tobias
Claustre, Hervé
Fiedler, Björn
Williams, Nancy L.
Sauzède, Raphaëlle
Körtzinger, Arne
Gattuso, Jean-Pierre
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This work presents two new methods to estimate oceanic alkalinity (AT), dissolved
inorganic carbon (CT), pH, and pCO2 from temperature, salinity, oxygen, and
geolocation data. “CANYON-B” is a Bayesian neural network mapping that accurately
reproduces GLODAPv2 bottle data and the biogeochemical relations contained therein.
“CONTENT” combines and refines the four carbonate system variables to be consistent
with carbonate chemistry. Both methods come with a robust uncertainty estimate
that incorporates information from the local conditions. They are validated against
independent GO-SHIP bottle and sensor data, and compare favorably to other
state-of-the-art mapping methods. As “dynamic climatologies” they show comparable
performance to classical climatologies on large scales but a much better representation
on smaller scales (40–120 d, 500–1,500 km) compared to in situ data. The limits of these
mappings are explored with pCO2 estimation in surface waters, i.e., at the edge of t.....
Journal
Frontiers in Marine ScienceVolume
5Issue
Article 328Page Range
29pp.Document Language
enSustainable Development Goals (SDG)
14.aEssential Ocean Variables (EOV)
Sea surface temperatureSubsurface temperature
Sea surface salinity
Subsurface salinity
Oxygen
Inorganic carbon
Nutrients
DOI Original
10.3389/fmars.2018.00328Citation
Bittig, H.C., Steinhoff, T., Claustre, H., Fiedler, B., Williams, N.L., Sauzède, R., Körtzinger, A. and Gattuso, J-P. (2018) An Alternative to Static Climatologies: Robust Estimation of Open Ocean CO2 Variables and Nutrient Concentrations From T, S, and O2 Data Using Bayesian Neural Networks. Frontier in Marine Science, 5:328, 29pp. DOI: 10.3389/fmars.2018.0032Collections
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