In this paper, we use a variational data assimilation method to fit biomass dynamics models to simulated data. The method is the variational adjoint technique in which a cost function measuring the distance between the data and the model solution is minimized. This approach is a deterministic procedure in which the model is repeatedly solved and the solution compared to the observations or measurements in order to find the parameters of the model that give predictions which are as close as possible to the data. We will briefly review some of the methods commonly used in fisheries management and compare them with the method in this paper. Twin experiments are used to evaluate the performance of the algorithm. The parameter estimates have ref...
International audienceData assimilation techniques have received considerable attention due to their...
The problem of variational data assimilation for a nonlinear evolution model is formulated as an op...
Data assimilation transfers information from observations of a complex system to physically-based sy...
In this paper, we use a variational data assimilation method to fit biomass dynamics models to simul...
A new approach of model parameter estimation is used with simulated measurements to recover both bio...
This paper combines the elegant technique of Data Assimilation and a Monte Carlo procedure to analyz...
This paper combines the new and elegant technique of inverse methods and a Monte Carlo procedure to ...
This paper has two main objectives. The first is to develop a dynamic model of commercial fisheries ...
International audienceA variational data assimilation method is applied to a simplified marine ecosy...
A non-traditional approach of fitting dynamic resource biomass models to data is developed in this p...
A new approach for data assimilation, which is based on the adjoint method, but allows the computer ...
Variational adjoint assimilation of time series observations is used to estimate the optimal paramet...
Assimilation experiments with data from the Bermuda Atlantic Time-series Study (BATS, 1989–1993) wer...
In the presence of environmental issues caused by climate change and eutrophication, ecosystem model...
Data assimilation aims to incorporate measured observations into a dynamical system model in order t...
International audienceData assimilation techniques have received considerable attention due to their...
The problem of variational data assimilation for a nonlinear evolution model is formulated as an op...
Data assimilation transfers information from observations of a complex system to physically-based sy...
In this paper, we use a variational data assimilation method to fit biomass dynamics models to simul...
A new approach of model parameter estimation is used with simulated measurements to recover both bio...
This paper combines the elegant technique of Data Assimilation and a Monte Carlo procedure to analyz...
This paper combines the new and elegant technique of inverse methods and a Monte Carlo procedure to ...
This paper has two main objectives. The first is to develop a dynamic model of commercial fisheries ...
International audienceA variational data assimilation method is applied to a simplified marine ecosy...
A non-traditional approach of fitting dynamic resource biomass models to data is developed in this p...
A new approach for data assimilation, which is based on the adjoint method, but allows the computer ...
Variational adjoint assimilation of time series observations is used to estimate the optimal paramet...
Assimilation experiments with data from the Bermuda Atlantic Time-series Study (BATS, 1989–1993) wer...
In the presence of environmental issues caused by climate change and eutrophication, ecosystem model...
Data assimilation aims to incorporate measured observations into a dynamical system model in order t...
International audienceData assimilation techniques have received considerable attention due to their...
The problem of variational data assimilation for a nonlinear evolution model is formulated as an op...
Data assimilation transfers information from observations of a complex system to physically-based sy...