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    Prediction of seasonal climate-induced variations in global food production

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    Authors
    Iizumi T
    Sakuma H
    Yokozawa M
    Luo JJ
    Challinor, Andrew J.
    Brown, M.E.
    Sakurai G
    Yamagata T
    Date Issued
    2013-10
    Date Online
    2013-07
    Language
    en
    Type
    Journal Article
    Accessibility
    Limited Access
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    Citation
    Iizumi T, Sakuma H, Yokozawa M, Luo JJ, Challinor AJ, Brown ME, Sakurai G, Yamagata T. 2013. Prediction of seasonal climate-induced variations in global food production. Nature Climate Change.
    Permanent link to cite or share this item: https://hdl.handle.net/10568/33441
    DOI: https://doi.org/10.1038/nclimate1945
    Abstract/Description
    Consumers, including the poor in many countries, are increasingly dependent on food imports1 and are thus exposed to variations in yields, production and export prices in the major food-producing regions of the world. National governments and commercial entities are therefore paying increased attention to the cropping forecasts of important food-exporting countries as well as to their own domestic food production. Given the increased volatility of food markets and the rising incidence of climatic extremes affecting food production, food price spikes may increase in prevalence in future years2, 3, 4. Here we present a global assessment of the reliability of crop failure hindcasts for major crops at two lead times derived by linking ensemble seasonal climatic forecasts with statistical crop models. We found that moderate-to-marked yield loss over a substantial percentage (26–33%) of the harvested area of these crops is reliably predictable if climatic forecasts are near perfect. However, only rice and wheat production are reliably predictable at three months before the harvest using within-season hindcasts. The reliabilities of estimates varied substantially by crop—rice and wheat yields were the most predictable, followed by soybean and maize. The reasons for variation in the reliability of the estimates included the differences in crop sensitivity to the climate and the technology used by the crop-producing regions. Our findings reveal that the use of seasonal climatic forecasts to predict crop failures will be useful for monitoring global food production and will encourage the adaptation of food systems to climatic extremes.
    Other CGIAR Affiliations
    Climate Change, Agriculture and Food Security
    AGROVOC Keywords
    agriculture; climate; forecasting; adaptation
    Subjects
    CLIMATE-SMART TECHNOLOGIES AND PRACTICES; CLIMATE SERVICES AND SAFETY NETS;
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    • CCAFS Journal Articles [1251]

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