Can crop-climate models be accurate and precise? A case study for wheat production in Denmark

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Can crop-climate models be accurate and precise? A case study for wheat production in Denmark. / Montesino San Martin, Manuel; Olesen, Jørgen E.; Porter, John Roy.

In: Agricultural and Forest Meteorology, Vol. 202, 2015, p. 51-60.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

Montesino San Martin, M, Olesen, JE & Porter, JR 2015, 'Can crop-climate models be accurate and precise? A case study for wheat production in Denmark', Agricultural and Forest Meteorology, vol. 202, pp. 51-60. https://doi.org/10.1016/j.agrformet.2014.11.003

APA

Montesino San Martin, M., Olesen, J. E., & Porter, J. R. (2015). Can crop-climate models be accurate and precise? A case study for wheat production in Denmark. Agricultural and Forest Meteorology, 202, 51-60. https://doi.org/10.1016/j.agrformet.2014.11.003

Vancouver

Montesino San Martin M, Olesen JE, Porter JR. Can crop-climate models be accurate and precise? A case study for wheat production in Denmark. Agricultural and Forest Meteorology. 2015;202:51-60. https://doi.org/10.1016/j.agrformet.2014.11.003

Author

Montesino San Martin, Manuel ; Olesen, Jørgen E. ; Porter, John Roy. / Can crop-climate models be accurate and precise? A case study for wheat production in Denmark. In: Agricultural and Forest Meteorology. 2015 ; Vol. 202. pp. 51-60.

Bibtex

@article{d133e49118ca43329063526677768c5a,
title = "Can crop-climate models be accurate and precise? A case study for wheat production in Denmark",
abstract = "Crop models, used to make projections of climate change impacts, differ greatly in structural detail. Complexity of model structure has generic effects on uncertainty and error propagation in climate change impact assessments. We applied Bayesian calibration to three distinctly different empirical and mechanistic wheat models to assess how differences in the extent of process understanding in models affects uncertainties in projected impact. Predictive power of the models was tested via both accuracy (bias) and precision (or tightness of grouping) of yield projections for extrapolated weather conditions. Yields predicted by the mechanistic model were generally more accurate than the empirical models for extrapolated conditions. This trend does not hold for all extrapolations; mechanistic and empirical models responded differently due to their sensitivities to distinct weather features. However, higher accuracy comes at the cost of precision of the mechanistic model to embrace all observations within given boundaries. The approaches showed complementarity in sensitivity to weather variables and in accuracy for different extrapolation domains. Their differences in model precision and accuracy make them suitable for generic model ensembles for near-term agricultural impact assessments of climate change.",
author = "{Montesino San Martin}, Manuel and Olesen, {J{\o}rgen E.} and Porter, {John Roy}",
year = "2015",
doi = "10.1016/j.agrformet.2014.11.003",
language = "English",
volume = "202",
pages = "51--60",
journal = "Agricultural and Forest Meteorology",
issn = "0168-1923",
publisher = "Elsevier",

}

RIS

TY - JOUR

T1 - Can crop-climate models be accurate and precise? A case study for wheat production in Denmark

AU - Montesino San Martin, Manuel

AU - Olesen, Jørgen E.

AU - Porter, John Roy

PY - 2015

Y1 - 2015

N2 - Crop models, used to make projections of climate change impacts, differ greatly in structural detail. Complexity of model structure has generic effects on uncertainty and error propagation in climate change impact assessments. We applied Bayesian calibration to three distinctly different empirical and mechanistic wheat models to assess how differences in the extent of process understanding in models affects uncertainties in projected impact. Predictive power of the models was tested via both accuracy (bias) and precision (or tightness of grouping) of yield projections for extrapolated weather conditions. Yields predicted by the mechanistic model were generally more accurate than the empirical models for extrapolated conditions. This trend does not hold for all extrapolations; mechanistic and empirical models responded differently due to their sensitivities to distinct weather features. However, higher accuracy comes at the cost of precision of the mechanistic model to embrace all observations within given boundaries. The approaches showed complementarity in sensitivity to weather variables and in accuracy for different extrapolation domains. Their differences in model precision and accuracy make them suitable for generic model ensembles for near-term agricultural impact assessments of climate change.

AB - Crop models, used to make projections of climate change impacts, differ greatly in structural detail. Complexity of model structure has generic effects on uncertainty and error propagation in climate change impact assessments. We applied Bayesian calibration to three distinctly different empirical and mechanistic wheat models to assess how differences in the extent of process understanding in models affects uncertainties in projected impact. Predictive power of the models was tested via both accuracy (bias) and precision (or tightness of grouping) of yield projections for extrapolated weather conditions. Yields predicted by the mechanistic model were generally more accurate than the empirical models for extrapolated conditions. This trend does not hold for all extrapolations; mechanistic and empirical models responded differently due to their sensitivities to distinct weather features. However, higher accuracy comes at the cost of precision of the mechanistic model to embrace all observations within given boundaries. The approaches showed complementarity in sensitivity to weather variables and in accuracy for different extrapolation domains. Their differences in model precision and accuracy make them suitable for generic model ensembles for near-term agricultural impact assessments of climate change.

U2 - 10.1016/j.agrformet.2014.11.003

DO - 10.1016/j.agrformet.2014.11.003

M3 - Journal article

VL - 202

SP - 51

EP - 60

JO - Agricultural and Forest Meteorology

JF - Agricultural and Forest Meteorology

SN - 0168-1923

ER -

ID: 130246296