A comparative assessment of the uncertainties of global surface ocean CO2 estimates using a machine-learning ensemble (CSIR-ML6 version 2019a) – have we hit the wall?

dc.contributor.authorGregor, Luke
dc.contributor.authorLebehot, Alice D.
dc.contributor.authorKok, Schalk
dc.contributor.authorScheel Monteiro, Pedro M.
dc.date.accessioned2020-03-25T06:36:08Z
dc.date.available2020-03-25T06:36:08Z
dc.date.issued2019-12-10
dc.description.abstractOver the last decade, advanced statistical inference and machine learning have been used to fill the gaps in sparse surface ocean CO2 measurements (Rödenbeck et al., 2015). The estimates from these methods have been used to constrain seasonal, interannual and decadal variability in sea–air CO2 fluxes and the drivers of these changes (Landschützer et al., 2015, 2016; Gregor et al., 2018). However, it is also becoming clear that these methods are converging towards a common bias and root mean square error (RMSE) boundary: “the wall”, which suggests that pCO2 estimates are now limited by both data gaps and scale-sensitive observations. Here, we analyse this problem by introducing a new gapfilling method, an ensemble average of six machine-learning models (CSIR-ML6 version 2019a, Council for Scientific and Industrial Research – Machine Learning ensemble with Six members), where each model is constructed with a twostep clustering-regression approach. The ensemble average is then statistically compared to well-established methods. The ensemble average, CSIR-ML6, has an RMSE of 17.16 μatm and bias of 0.89 μatm when compared to a test dataset kept separate from training procedures. However, when validating our estimates with independent datasets, we find that our method improves only incrementally on other gap-filling methods.We investigate the differences between the methods to understand the extent of the limitations of gap-filling estimates of pCO2. We show that disagreement between methods in the South Atlantic, southeastern Pacific and parts of the Southern Ocean is too large to interpret the interannual variability with confidence. We conclude that improvements in surface ocean pCO2 estimates will likely be incremental with the optimisation of gap-filling methods by (1) the inclusion of additional clustering and regression variables (e.g. eddy kinetic energy), (2) increasing the sampling resolution and (3) successfully incorporating pCO2 estimates from alternate platforms (e.g. floats, gliders) into existing machinelearning approaches.en_ZA
dc.description.departmentMechanical and Aeronautical Engineeringen_ZA
dc.description.librarianam2020en_ZA
dc.description.sponsorshipThis work is part of a post-doctoral research fellowship funded by the CSIR Southern Ocean Carbon – Climate Observatory (SOCCO) through financial support from the Department of Science and Technology (DST) and the National Research Foundation (NRF) and hosted at the MaRe Institute at UCT.en_ZA
dc.description.sponsorshipThis work received support from the European Space Agency (ESA)’s OCEANSODA – Ocean Acidification project (contract no. 4000125955/18/I-BG).en_ZA
dc.description.urihttps://www.geoscientific-model-development.neten_ZA
dc.identifier.citationGregor, L., Lebehot, A.D., Kok, S. et al. 2019, 'A comparative assessment of the uncertainties of global surface ocean CO2 estimates using a machine-learning ensemble (CSIR-ML6 version 2019a) – have we hit the wall?', Geoscientific Model Development, vol. 12, no. 12, pp. 5113-5136.en_ZA
dc.identifier.issn1991-959X (print)
dc.identifier.issn1991-9603 (online)
dc.identifier.other10.5194/gmd-12-5113-2019
dc.identifier.urihttp://hdl.handle.net/2263/73823
dc.language.isoenen_ZA
dc.publisherEuropean Geosciences Unionen_ZA
dc.rights© Author(s) 2019. This work is distributed under the Creative Commons Attribution 4.0 License.en_ZA
dc.subjectMachine learningen_ZA
dc.subjectCommon biasen_ZA
dc.subjectRoot mean square error (RMSE)en_ZA
dc.subjectAdvanced statistical inferenceen_ZA
dc.subjectSea–air CO2 fluxesen_ZA
dc.subjectGapfilling methoden_ZA
dc.subjectCSIR-ML6en_ZA
dc.subject.otherEngineering, built environment and information technology articles SDG-13
dc.subject.otherSDG-13: Climate action
dc.subject.otherEngineering, built environment and information technology articles SDG-14
dc.subject.otherSDG-14: Life below water
dc.subject.otherEngineering, built environment and information technology articles SDG-09
dc.subject.otherSDG-09: Industry, innovation and infrastructure
dc.subject.otherEngineering, built environment and information technology articles SDG-04
dc.subject.otherSDG-04: Quality education
dc.titleA comparative assessment of the uncertainties of global surface ocean CO2 estimates using a machine-learning ensemble (CSIR-ML6 version 2019a) – have we hit the wall?en_ZA
dc.typeArticleen_ZA

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