Enhancing ocean biogeochemical model performance and generality with
phytoplankton variable composition
Abstract
Chlorophyll (Chl) is widely taken as a proxy for phytoplankton biomass,
despite well known variations in Chl:biomass ratios as an acclimative
response to changing environmental conditions. For the sake of
simplicity and computational efficiency, many large scale biogeochemical
models ignore this flexibility, compromising their ability to capture
phytoplankton dynamics. Here we evaluate modelling approaches of
differing complexity for phytoplankton growth response: fixed
stoichiometry, classical variable-composition with photo-acclimation,
and Instantaneous Acclimation with optimal resource allocation. We
compare the performance of these models against biogeochemical
observations from time-series sites BATS and ALOHA, where phytoplankton
composition varies substantially. Models including photo-acclimation
capture the observations better with minimal parameter tuning and are
more portable. Compared to the classical variable composition approach,
instantaneous acclimation yields similar performance and portability,
while requiring fewer state variables. Further assessments using
objective optimisation and more contrasting stations are suggested.