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Testing the reconstruction of modelled particulate organic carbon from surface ecosystem components using PlankTOM12 and machine learning
Understanding the relationship between surface marine ecosystems and the export of carbon to depth by sinking organic particles is key to representing the effect of ecosystem dynamics and diversity, and their evolution under multiple stressors, on the carbon cycle and climate in models. Recent obser...
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Published in: | Geoscientific Model Development 2023-05, Vol.16 (10), p.2995-3012 |
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Main Authors: | , , , , , |
Format: | Article |
Language: | English |
Subjects: | |
Citations: | Items that this one cites Items that cite this one |
Online Access: | Get full text |
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Summary: | Understanding the relationship between surface marine ecosystems
and the export of carbon to depth by sinking organic particles is key to
representing the effect of ecosystem dynamics and diversity, and their
evolution under multiple stressors, on the carbon cycle and climate in
models. Recent observational technologies have greatly increased the amount
of data available, both for the abundance of diverse plankton groups and for
the concentration and properties of particulate organic carbon in the ocean
interior. Here we use synthetic model data to test the potential of using
machine learning (ML) to reproduce concentrations of particulate organic
carbon within the ocean interior based on surface ecosystem and
environmental data. We test two machine learning methods that differ in
their approaches to data-fitting, the random forest and XGBoost methods. The
synthetic data are sampled from the PlankTOM12 global biogeochemical model
using the time and coordinates of existing observations. We test 27
different combinations of possible drivers to reconstruct small (POCS)
and large (POCL) particulate organic carbon concentrations. We show
that ML can successfully be used to reproduce modelled particulate organic
carbon over most of the ocean based on ecosystem and modelled environmental
drivers. XGBoost showed better results compared to random forest thanks to
its gradient boosting trees' architecture. The inclusion of plankton
functional types (PFTs) in driver sets improved the accuracy of the model
reconstruction by 58 % on average for POCS and by 22 % for
POCL. Results were less robust over the equatorial Pacific and some
parts of the high latitudes. For POCS reconstruction, the most
important drivers were the depth level, temperature, microzooplankton and
PO4, while for POCL it was the depth level, temperature,
mixed-layer depth, microzooplankton, phaeocystis, PO4 and chlorophyll a averaged over the mixed-layer depth. These results suggest that it will be
possible to identify linkages between surface environmental and ecosystem
structure and particulate organic carbon distribution within the ocean
interior using real observations and to use this knowledge to improve both
our understanding of ecosystem dynamics and of their functional
representation within models. |
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ISSN: | 1991-9603 1991-959X 1991-962X 1991-9603 1991-962X |
DOI: | 10.5194/gmd-16-2995-2023 |