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    The effects of climate variability and the color of weather time series on agricultural diseases and pests, and on decisions for their management

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    Authors
    Garrett, K.A.
    Dobson, A.D.M.
    Kroschel, Jürgen
    Natarajan B
    Orlandini S
    Tonnang, Henri E.Z.
    Valdivia, C.
    Date Issued
    2013-03
    Language
    en
    Type
    Journal Article
    Accessibility
    Limited Access
    Metadata
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    Citation
    Garrett KA, Dobson ADM, Kroschel J, Natarajan B, Orlandini S, Tonnang HEZ, Valdivia C. 2013. The effects of climate variability and the color of weather time series on agricultural diseases and pests, and on decisions for their management. Agricultural and Forest Meteorology 170:216-227.
    Permanent link to cite or share this item: https://hdl.handle.net/10568/33377
    DOI: https://doi.org/10.1016/j.agrformet.2012.04.018
    Abstract/Description
    If climate change scenarios include higher variance in weather variables, this can have important effects on pest and disease risk beyond changes in mean weather conditions. We developed a theoretical model of yield loss to diseases and pests as a function of weather, and used this model to evaluate the effects of variance in conduciveness to loss and the effects of the color of time series of weather conduciveness to loss. There were two qualitatively different results for changes in system variance. If median conditions are conducive to loss, increasing system variance decreases mean yield loss. On the other hand, if median conditions are intermediate or poor for disease or pest development, such that conditions are conducive to yield loss no more than half the time, increasing system variance increases mean yield loss. Time series for weather conduciveness that are darker pink (have higher levels of temporal autocorrelation) produce intermediate levels of yield loss less commonly. A linked model of decision-making based on either past or current information about yield loss also shows changes in the performance of decision rules as a function of system variance. Understanding patterns of variance can improve scenario analysis for climate change and help make adaptation strategies such as decision support systems and insurance programs more effective.
    Other CGIAR Affiliations
    Climate Change, Agriculture and Food Security
    AGROVOC Keywords
    agriculture; climate; decision making; models; adaptation
    Subjects
    CLIMATE-SMART TECHNOLOGIES AND PRACTICES; DATA AND TOOLS FOR ANALYSIS AND PLANNING; CLIMATE SERVICES AND SAFETY NETS;
    Collections
    • CCAFS Journal Articles [1251]

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