An Observing System Simulation Experiment (OSSE) has been defined to assess the potentialities of assimilating winter wheat leaf area index (LAI) estimations derived from remote sensing into the crop growth model WOFOST. Two assimilation strategies are considered: one based on Ensemble Kalman Filter (EnKF) and the second on recalibration/re-initialisation of uncertain model parameters and initial state conditions. The main objective of the OSS Experiment is to estimate the requisites for the remotely sensed LAI, in terms of accuracy and sampling frequency, to reach target of either 25 or 50% reduction of errors on the final estimation of grain yields. Our results demonstrate that EnKF is not suitable for assimilating LAI in WOFOST as the av...
AbstractTo improve the prediction of crop yields at an aggregate scale, we developed a data assimila...
The combination of remote sensing and crop growth models has become an effective tool for yield esti...
This project tests if assimilating remote and proximal sensing observations into the APSIM crop mode...
An Observing System Simulation Experiment (OSSE) has been defined to assess the potentialities of as...
Optimised farm crop productivity requires careful management in response to the spatial and temporal...
The Sentinel-2 (S2) Toolbox permits for the automated retrieval of leaf area index (LAI). LAI assimi...
The assimilation of LAI measurements, repeatedly taken at sub-field level, into dynamic crop simulat...
It is well known that timely crop growth monitoring and accurate crop yield estimation at a fine sca...
To improve the accuracy of winter wheat yield estimation, the Crop Environment Resource Synthesis fo...
Observing system simulation experiments were used to investigate ensemble Bayesian state updating da...
Monitoring crop growth and estimating crop yield are essential for managing agricultural production,...
Spatial information embedded in a crop model can improve yield prediction. Leaf area index (LAI) is ...
International audienceForecasting sunflower grain yield a few weeks before crop harvesting is of str...
To improve the prediction of crop yields at an aggregate scale, we developed a data assimilation-cro...
Uncertainty in spatial and temporal distribution of rainfall in regional crop yield simulations comp...
AbstractTo improve the prediction of crop yields at an aggregate scale, we developed a data assimila...
The combination of remote sensing and crop growth models has become an effective tool for yield esti...
This project tests if assimilating remote and proximal sensing observations into the APSIM crop mode...
An Observing System Simulation Experiment (OSSE) has been defined to assess the potentialities of as...
Optimised farm crop productivity requires careful management in response to the spatial and temporal...
The Sentinel-2 (S2) Toolbox permits for the automated retrieval of leaf area index (LAI). LAI assimi...
The assimilation of LAI measurements, repeatedly taken at sub-field level, into dynamic crop simulat...
It is well known that timely crop growth monitoring and accurate crop yield estimation at a fine sca...
To improve the accuracy of winter wheat yield estimation, the Crop Environment Resource Synthesis fo...
Observing system simulation experiments were used to investigate ensemble Bayesian state updating da...
Monitoring crop growth and estimating crop yield are essential for managing agricultural production,...
Spatial information embedded in a crop model can improve yield prediction. Leaf area index (LAI) is ...
International audienceForecasting sunflower grain yield a few weeks before crop harvesting is of str...
To improve the prediction of crop yields at an aggregate scale, we developed a data assimilation-cro...
Uncertainty in spatial and temporal distribution of rainfall in regional crop yield simulations comp...
AbstractTo improve the prediction of crop yields at an aggregate scale, we developed a data assimila...
The combination of remote sensing and crop growth models has become an effective tool for yield esti...
This project tests if assimilating remote and proximal sensing observations into the APSIM crop mode...