|
Rezaei, E. E., Siebert, S., & Ewert, F. (2016). Data aggregation does not reduce signals of heat and drought stress in large area yield simulations.. Berlin (Germany).
|
|
|
Nendel, C. (2013). Data classification and criteria catalogue for data requirements (Vol. 1).
Abstract: Data requirements for calibration and validation of agro-ecosystem models were elaborated and a classification scheme for the suitability of experimental data for model testing and improvement has been developed. The scheme enables to evaluate datasets and to classify datasets upon their quality to be used in crop modelling. No Label
|
|
|
Blanco-Penedo et al. (2016). Data driven dairy decision for farmers (Vol. 8).
Abstract: Conference poster PDF
|
|
|
Palosuo, T. (2013). Data format for model in- and output (Vol. 2).
Abstract: A common format for model input variables and model output variables has been defined to be distributed to modellers participating in the model inter-comparison and improvement. The aim of common formats is to support the communication between the modellers, those providing empirical data of the experiments and those analysing the simulation results. The input format facilitates the model application in a way that each cropping-system to be modelled will be defined in the same way. Data will be delivered in EXCEL sheets with sub-tables for each block of inputs. Tables are mostly organized in a way that allows export and sequential read-in by the models. The common output format enables effective processing of results estimating model performance indicators. No Label
|
|
|
Jorgenson, J. S. (2014). Data format standards and variable mapping. FACCE MACSUR Mid-term Scientific Conference, 3(S) Sassari, Italy.
Abstract: Short report on work being done tools used for standardising data formats, including variable name mapping.
|
|