Marine biogeochemical (BGC) models are highly uncertain in their parameterization. The value of the BGC parameters are poorly known and lead to large uncertainties in the model outputs. This study focuses on the uncertainty quantification of model fields and parameters within a one-dimensional (1-D) ocean BGC model applying ensemble data assimilation. We applied an ensemble Kalman filter provided by the Parallel Data Assimilation Framework (PDAF) into a 1-D vertical configuration of the BGC model Regulated Ecosystem Model 2 (REcoM2) at two BGC time-series stations: the Bermuda Atlantic Time-series Study (BATS) and the Dynamique des Flux Atmosphériques en Méditerranée (DYFAMED). We assimilated 5-day satellite chlorophyll-a (chl-a) concentrat...
Numerical modelling of the marine ecosystem requires the aggregation of diverse chemical and biologi...
Over the past decade, techniques have been presented to derive the community structure of phytoplank...
In this paper we evaluate whether the assimilation of remotely-sensed optical data into a marine eco...
Marine biogeochemical (BGC) models are highly uncertain in their parameterization. The value of the ...
Ocean biogeochemical (BGC) models utilise a large number of poorly-constrained global parameters to ...
The correct specification of all sources of uncertainty is critical to the success of data assimilat...
Biogeochemical parameters remain a major source of uncertainty in coupled physical-biogeochemical mo...
Abstract. Satellite-derived surface chlorophyll data are daily assimilated into a three-dimensional ...
MITgcm-REcoM is used to simulate biogeochemistry in a global ocean configuration. The Regulated Ecos...
International audienceAbstract. Satellite-derived surface chlorophyll data are assimilated daily int...
In spite of recent advances, biogeochemical models are still unable to represent the full complexity...
The coupled ocean circulation‐ecosystem model MITgcm‐REcoM2 is used to simulate biogeochemical vari...
Numerical modelling of the marine ecosystem requires the aggregation of diverse chemical and biologi...
Over the past decade, techniques have been presented to derive the community structure of phytoplank...
In this paper we evaluate whether the assimilation of remotely-sensed optical data into a marine eco...
Marine biogeochemical (BGC) models are highly uncertain in their parameterization. The value of the ...
Ocean biogeochemical (BGC) models utilise a large number of poorly-constrained global parameters to ...
The correct specification of all sources of uncertainty is critical to the success of data assimilat...
Biogeochemical parameters remain a major source of uncertainty in coupled physical-biogeochemical mo...
Abstract. Satellite-derived surface chlorophyll data are daily assimilated into a three-dimensional ...
MITgcm-REcoM is used to simulate biogeochemistry in a global ocean configuration. The Regulated Ecos...
International audienceAbstract. Satellite-derived surface chlorophyll data are assimilated daily int...
In spite of recent advances, biogeochemical models are still unable to represent the full complexity...
The coupled ocean circulation‐ecosystem model MITgcm‐REcoM2 is used to simulate biogeochemical vari...
Numerical modelling of the marine ecosystem requires the aggregation of diverse chemical and biologi...
Over the past decade, techniques have been presented to derive the community structure of phytoplank...
In this paper we evaluate whether the assimilation of remotely-sensed optical data into a marine eco...