Gloege, Lucas; McKinley, Galen A.; Landschützer, Peter; Fay, Amanda R.; Frölicher, Thomas L.; Fyfe, John C.; Ilyina, Tatiana; Jones, Steve; Lovenduski, Nicole S.; Rodgers, Keith B.; Schlunegger, Sarah; Takano, Yohei (2021). Quantifying Errors in Observationally Based Estimates of Ocean Carbon Sink Variability. Global biogeochemical cycles, 35(4) American Geophysical Union 10.1029/2020GB006788
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Reducing uncertainty in the global carbon budget requires better quantification of ocean CO2 uptake and its temporal variability. Several methodologies for reconstructing air-sea CO2 exchange from pCO2 observations indicate larger decadal variability than estimated using ocean models. We develop a new application of multiple Large Ensemble Earth system models to assess these reconstructions' ability to estimate spatiotemporal variability. With our Large Ensemble Testbed, pCO2 fields from 25 ensemble members each of four independent Earth system models are subsampled as the observations and the reconstruction is performed as it would be with real-world observations. The power of a testbed is that the perfect reconstruction is known for each of the original model fields; thus, reconstruction skill can be comprehensively assessed. We find that a neural-network approach can skillfully reconstruct air-sea CO2 fluxes when it is trained with sufficient data. Flux bias is low for the global mean and Northern Hemisphere, but can be regionally high in the Southern Hemisphere. The phase and amplitude of the seasonal cycle are accurately reconstructed outside of the tropics, but longer-term variations are reconstructed with only moderate skill. For Southern Ocean decadal variability, insufficient sampling leads to a 31% (15%:58%, interquartile range) overestimation of amplitude, and phasing is only moderately correlated with known truth (r = 0.54 [0.46:0.63]). Globally, the amplitude of decadal variability is overestimated by 21% (3%:34%). Machine learning, when supplied with sufficient data, can skillfully reconstruct ocean properties. However, data sparsity remains a fundamental limitation to quantification of decadal variability in the ocean carbon sink.
Item Type: |
Journal Article (Original Article) |
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Division/Institute: |
08 Faculty of Science > Physics Institute > Climate and Environmental Physics 10 Strategic Research Centers > Oeschger Centre for Climate Change Research (OCCR) 08 Faculty of Science > Physics Institute |
UniBE Contributor: |
Frölicher, Thomas |
Subjects: |
500 Science > 530 Physics |
ISSN: |
0886-6236 |
Publisher: |
American Geophysical Union |
Language: |
English |
Submitter: |
Thomas Frölicher |
Date Deposited: |
17 Mar 2022 14:50 |
Last Modified: |
05 Dec 2022 16:13 |
Publisher DOI: |
10.1029/2020GB006788 |
BORIS DOI: |
10.48350/166721 |
URI: |
https://boris.unibe.ch/id/eprint/166721 |