Crop growth models simulate the relationship between plants and the environment to predict the expected yield for applications such as crop management and agronomic decision making, as well as to study the potential impacts of climate change on food security. A major limitation of crop growth models is the lack of spatial information on the actual conditions of each field or region. Remote sensing can provide the missing spatial information required by crop models for improved yield prediction. This paper reviews the most recent information about remote sensing data and their contribution to crop growth models. It reviews the main types, applications, limitations and advantages of remote sensing data and crop models. It examines the main me...
Crop models and remote sensing techniques have been combined and applied in agriculture and crop est...
The challenge of converting global agricultural food, fiber and energy crop cultivation into an ecol...
International audiencePre-harvest yield forecasting is a critical challenge for producers, especiall...
Crop growth models simulate the relationship between plants and the environment to predict the expec...
There is a growing effort to use access to remote sensing data (RS) in conjunction with crop model s...
There is a growing effort to use access to remote sensing data (RS) in conjunction with crop model s...
Keywords: simulation; model; calibration; remote sensing; radar; optical; satellite; spatial; up-sca...
Methods for the application of crop growth models, remote sensing and their integrative use for yiel...
Methods for the application of crop growth models, remote sensing and their integrative use for yiel...
Methods for the application of crop growth models, remote sensing and their integrative use for yiel...
The challenge of converting global agricultural food, fiber and energy crop cultivation into an ecol...
The challenge of converting global agricultural food, fiber and energy crop cultivation into an ecol...
The challenge of converting global agricultural food, fiber and energy crop cultivation into an ecol...
This thesis addresses important topics in agricultural modelling research. Chapter 1 describes the i...
Crop yield forecasting models are needed to help farmers and decision makers cheaply detect crop co...
Crop models and remote sensing techniques have been combined and applied in agriculture and crop est...
The challenge of converting global agricultural food, fiber and energy crop cultivation into an ecol...
International audiencePre-harvest yield forecasting is a critical challenge for producers, especiall...
Crop growth models simulate the relationship between plants and the environment to predict the expec...
There is a growing effort to use access to remote sensing data (RS) in conjunction with crop model s...
There is a growing effort to use access to remote sensing data (RS) in conjunction with crop model s...
Keywords: simulation; model; calibration; remote sensing; radar; optical; satellite; spatial; up-sca...
Methods for the application of crop growth models, remote sensing and their integrative use for yiel...
Methods for the application of crop growth models, remote sensing and their integrative use for yiel...
Methods for the application of crop growth models, remote sensing and their integrative use for yiel...
The challenge of converting global agricultural food, fiber and energy crop cultivation into an ecol...
The challenge of converting global agricultural food, fiber and energy crop cultivation into an ecol...
The challenge of converting global agricultural food, fiber and energy crop cultivation into an ecol...
This thesis addresses important topics in agricultural modelling research. Chapter 1 describes the i...
Crop yield forecasting models are needed to help farmers and decision makers cheaply detect crop co...
Crop models and remote sensing techniques have been combined and applied in agriculture and crop est...
The challenge of converting global agricultural food, fiber and energy crop cultivation into an ecol...
International audiencePre-harvest yield forecasting is a critical challenge for producers, especiall...