Abstract
Cropping system models are widely used tools for simulating the growth and development of crops at field scale. However, it is often difficult to satisfy their detailed input and output data requirements for a proper evaluation of model. In this study, expert knowledge data were used as alternative source to fulfil these data requirements. The model was first calibrated for major crops of the studied area and then evaluated for the same crops by using expert knowledge data. Results showed that the model accurately simulated above-ground biomass and grain yield with a relative root mean square error (RRMSE) of 20% and 17%, respectively. On the other hand, simulated results were less satisfactory for N uptake and cumulated evapotranspiration with RRMSE of 27% and 31%, respectively. The model simulated cumulative variables more accurately than dynamic variables. The results of this study suggest that expert knowledge can be used to get data for intermediate variables rarely measured in experiments used for calibration (green leaf area index, actual evapotranspiration, rooting depth) in typical crop management conditions in the region. This approach enables a global and dynamic evaluation of cropping system models when experimental data is unavailable for large heterogeneous areas in a region.
Acknowledgements
We are grateful to Dr Philippe Debaeke (INRA Toulouse) and Mr Bernard Lacroix for providing the expert knowledge data. We are also grateful to Dr Myriam Adam (PPS Wageningen, Netherlands), who provided consistent support for parameterization of pea crop, and Dr Martin K. Van Ittersum, Kamel Louhichi and Marie-Hélène Jeuffroy for their valuable comments during different developmental stages of this publication.