Assimilation of sensor-based observations on photosynthesis rates into crop models
Master Thesis
Research area
Crop science
Motivation / State of the art / Relevance
Assimilation of observational data into crop models is known to improve predictive capacities of models. Modern, non-invasive sensor techniques provide information on leaf area development, greenness of leaves and instant rates of photosynthesis in high spatial and temporal resolution at the plot level. The thesis should explore the potential of non-invasive measurements of photosynthetic activity of selected crops to improve crop model performance through data assimilation
Objectives
To investigate the potential of data assimilation from non-invasive measuremements of photosynthetic activity to improve the performance of a field-scale crop model
Methodology / Procedure / Workscope / external cooperation
The study will measure photosynthetic activity on Campus Klein-Altendorf with non-invasive sensors and apply existing assimilation techniques to include the measurements in a field scale crop model
Expected results
Comparison of performance of a crop model with and without data assimilation which could finally issue into a peer-reviewed paper
Timeframe
6 to 8 Month
Language
Preferably English, German is also possible
Previous knowledge
Interest in crop phenotyping and sensor techniques, good quantitative and analytical skills (eg good marks in math and statistics classes), preferable basic knowledge in the use of R and/or XML scripting
Supervisor
Thomas Gaiser (Universität Bonn) and Uwe Rascher (FZ Jülich)
Contact
tgaiser@uni-bonn.de, u.rascher@fz-juelich.de