Quantifying heterotrophic bacteria parameters and dissolved organic
carbon biodegradability through oxygen data assimilation in a river
water quality model
Abstract
This study represents a pioneering endeavor in estimating the
biodegradability of dissolved organic carbon (DOC) in river systems
thanks to high-frequency dissolved oxygen (DO) data. Indeed, the first
implementation of a particle filter algorithm in a hydro-biogeochemical
model had improved DO simulation in river systems. Yet, mismatches
between observed and simulated oxygen remain during summer low-flow
periods. To address this issue, a sensitivity analysis was conducted,
revealing the influence of biodegradable dissolved organic carbon (BDOC)
during non-bloom low-flow periods in summer when bacterial net growth
activity is high. Therefore, in this study, BDOC is parameterized in
ProSe-PA data assimilation software by integrating an organic carbon
partitioning model. As a proof of concept, several case studies are
developed which demonstrate that the incorporation of the parameter
representing BDOC in the data assimilation scheme of ProSe-PA i)
improves DO simulation during low-flow periods, ii) helps identify the
posterior distribution of bacterial parameters, and iii) for the first
time quantifies the biodegradability of DOC in a river given oxygen
data. Next, it is shown that at least two DO monitoring stations are
necessary to identify model parameters whose locations are controlled by
BDOC and bacterial activity. Finally, ProSe-PA is configured to detect
changes in bacteria physiology and DOC biodegradability by evaluating
the role of data assimilation configuration parameters such as the
assimilation time step and the amount of perturbation of model parameter
values. The study also verifies that ProSe-PA is capable of detecting
abrupt and gradual changes in the biodegradability of DOC.