Machine learning estimates of oceanic anthropogenic carbon (Cant)
“Machine learning, like all technology, does not always make the world a better place, but it can” (A. Moltzau, 2019 [20]).
Background
Since the beginning of the industrial revolution (1860), anthropogenic activities have increased the atmospheric carbon dioxide (CO2) from 280 ppm to over 400 ppm [6]. The global ocean has sequestered roughly a third of this anthropogenic CO2 (Cant, Fig.1), limiting the impacts on the global climate [3] such as the increase in the Earth’s mean temperature. However, Cant can only be estimated indirectly in the ocean with an uncertainty of ±20%. This uncertainty reduces our understanding of the processes associated with the Cant cycle and the reliability of future predictions.
Problem
Cant estimates cannot be measured directly in the ocean being instead approximated using correlations with measurable variables (e.g. inorganic nutrients).
(1) The most commonly adopted methods for Cant estimates [2, 7] use Redfield ratios to isolate Cant from the ocean total dissolved inorganic carbon (tCO2) measurements. Redfield ratios are ratios of inorganic nutrients used to infer biological activities in the ocean [5]. Redfield ratios vary over space and time, based on the in-situ species.