3 research outputs found
Same soil, different climate: Crop model intercomparison on translocated lysimeters.
Crop model intercomparison studies have mostly focused on the assessment
of predictive capabilities for crop development using weather and basic
soil data from the same location. Still challenging is the model
performance when considering complex interrelations between soil and
crop dynamics under a changing climate. The objective of this study was
to test the agronomic crop and environmental flux-related performance of
a set of crop models. The aim was to predict weighing lysimeter-based
crop (i.e., agronomic) and water-related flux or state data (i.e.,
environmental) obtained for the same soil monoliths that were taken from
their original environment and translocated to regions with different
climatic conditions, after model calibration at the original site.
Eleven models were deployed in the study. The lysimeter data (2014–2018)
were from the Dedelow (Dd), Bad Lauchstädt (BL), and Selhausen (Se)
sites of the TERENO (TERrestrial ENvironmental Observatories) SOILCan
network. Soil monoliths from Dd were transferred to the drier and warmer
BL site and the wetter and warmer Se site, which allowed a comparison
of similar soil and crop under varying climatic conditions. The model
parameters were calibrated using an identical set of crop- and
soil-related data from Dd. Environmental fluxes and crop growth of Dd
soil were predicted for conditions at BL and Se sites using the
calibrated models. The comparison of predicted and measured data of Dd
lysimeters at BL and Se revealed differences among models. At site BL,
the crop models predicted agronomic and environmental components
similarly well. Model performance values indicate that the environmental
components at site Se were better predicted than agronomic ones. The
multi-model mean was for most observations the better predictor compared
with those of individual models. For Se site conditions, crop models
failed to predict site-specific crop development indicating that
climatic conditions (i.e., heat stress) were outside the range of
variation in the data sets considered for model calibration. For
improving predictive ability of crop models (i.e., productivity and
fluxes), more attention should be paid to soil-related data (i.e., water
fluxes and system states) when simulating soil–crop–climate
interrelations in changing climatic conditions