Earth System Models Capture the General Trends of Phytoplankton Detected
in Observations
Abstract
As phytoplankton form the base of the marine food web, understanding the
controls on their abundance is fundamental to understanding marine
ecology and how it might be altered by global climate change. While many
Earth System Models (ESMs) predict phytoplankton biomass, it is unclear
whether they properly capture the mechanistic relationships that control
this quantity in the real ocean. In this paper, we used Random Forest
(RF) analysis to analyze the output of ESMs and observational datasets.
We gathered information from 13 ESMs and two observational datasets. The
target variable was phytoplankton carbon and the predictors included
environmental parameters known to influence phytoplankton, such as
nutrients, light, mixed layer depth, salinity, temperature, and
upwelling. We examined three questions: (1) What fractions of
variability in ESMs and observations can be linked to the large-scale
environmental variables simulated by ESMs? (2) What are the dominant
predictors and relationships affecting phytoplankton biomass? (3) How
well do ESMs simulate phytoplankton carbon and do they simulate the
relationships we see in observations? We show that about 88% to 96% of
the variability in observational datasets and greater than 98% in the
ESMs was accounted for by variables known to influence phytoplankton
biomass from large-scale environmental variables. The dominant
predictors in the observational datasets were dissolved iron and
shortwave radiation. The dominant predictors in the ESMs were dissolved
iron, shortwave radiation, and mixed layer depth. While relationships in
most of the ESMs matched the general trends seen in the observations,
significant quantitative differences were seen. While the assumption
made by ESMs that large-scale environmental conditions control
phytoplankton biomass appears to hold in the real world, much work
remains to be done to ensure that ESMs properly represent these
controls.