Journal article

Reduction of predictive uncertainty in estimating irrigation water requirement through multi-model ensembles and ensemble averaging


Authors listMultsch, S; Exbrayat, JF; Kirby, M; Viney, NR; Frede, HG; Breuer, L

Publication year2015

Pages1233-1244

JournalGeoscientific Model Development

Volume number8

Issue number4

ISSN1991-959X

Open access statusGold

DOI Linkhttps://doi.org/10.5194/gmd-8-1233-2015

PublisherCopernicus Publications


Abstract
Irrigation agriculture plays an increasingly important role in food supply. Many evapotranspiration models are used today to estimate the water demand for irrigation. They consider different stages of crop growth by empirical crop coefficients to adapt evapotranspiration throughout the vegetation period. We investigate the importance of the model structural versus model parametric uncertainty for irrigation simulations by considering six evapotranspiration models and five crop coefficient sets to estimate irrigation water requirements for growing wheat in the Murray-Darling Basin, Australia. The study is carried out using the spatial decision support system SPARE: WATER. We find that structural model uncertainty among reference ET is far more important than model parametric uncertainty introduced by crop coefficients. These crop coefficients are used to estimate irrigation water requirement following the single crop coefficient approach. Using the reliability ensemble averaging (REA) technique, we are able to reduce the overall predictive model uncertainty by more than 10 %. The exceedance probability curve of irrigation water requirements shows that a certain threshold, e.g. an irrigation water limit due to water right of 400 mm, would be less frequently exceeded in case of the REA ensemble average (45 %) in comparison to the equally weighted ensemble average (66 %). We conclude that multi-model ensemble predictions and sophisticated model averaging techniques are helpful in predicting irrigation demand and provide relevant information for decision making.



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Citation Styles

Harvard Citation styleMultsch, S., Exbrayat, J., Kirby, M., Viney, N., Frede, H. and Breuer, L. (2015) Reduction of predictive uncertainty in estimating irrigation water requirement through multi-model ensembles and ensemble averaging, Geoscientific Model Development, 8(4), pp. 1233-1244. https://doi.org/10.5194/gmd-8-1233-2015

APA Citation styleMultsch, S., Exbrayat, J., Kirby, M., Viney, N., Frede, H., & Breuer, L. (2015). Reduction of predictive uncertainty in estimating irrigation water requirement through multi-model ensembles and ensemble averaging. Geoscientific Model Development. 8(4), 1233-1244. https://doi.org/10.5194/gmd-8-1233-2015


Last updated on 2025-10-06 at 10:29