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Bayesian Networks to Compare Pest Control Interventions on Commodities Along Agricultural Production Chains

Author

Listed:
  • J. Holt
  • A. W. Leach
  • S. Johnson
  • D. M. Tu
  • D. T. Nhu
  • N. T. Anh
  • M. M. Quinlan
  • P. J. L. Whittle
  • K. Mengersen
  • J. D. Mumford

Abstract

The production of an agricultural commodity involves a sequence of processes: planting/growing, harvesting, sorting/grading, postharvest treatment, packing, and exporting. A Bayesian network has been developed to represent the level of potential infestation of an agricultural commodity by a specified pest along an agricultural production chain. It reflects the dependency of this infestation on the predicted level of pest challenge, the anticipated susceptibility of the commodity to the pest, the level of impact from pest control measures as designed, and any variation from that due to uncertainty in measure efficacy. The objective of this Bayesian network is to facilitate agreement between national governments of the exporters and importers on a set of phytosanitary measures to meet specific phytosanitary measure requirements to achieve target levels of protection against regulated pests. The model can be used to compare the performance of different combinations of measures under different scenarios of pest challenge, making use of available measure performance data. A case study is presented using a model developed for a fruit fly pest on dragon fruit in Vietnam; the model parameters and results are illustrative and do not imply a particular level of fruit fly infestation of these exports; rather, they provide the most likely, alternative, or worst‐case scenarios of the impact of measures. As a means to facilitate agreement for trade, the model provides a framework to support communication between exporters and importers about any differences in perceptions of the risk reduction achieved by pest control measures deployed during the commodity production chain.

Suggested Citation

  • J. Holt & A. W. Leach & S. Johnson & D. M. Tu & D. T. Nhu & N. T. Anh & M. M. Quinlan & P. J. L. Whittle & K. Mengersen & J. D. Mumford, 2018. "Bayesian Networks to Compare Pest Control Interventions on Commodities Along Agricultural Production Chains," Risk Analysis, John Wiley & Sons, vol. 38(2), pages 297-310, February.
  • Handle: RePEc:wly:riskan:v:38:y:2018:i:2:p:297-310
    DOI: 10.1111/risa.12852
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    Cited by:

    1. Holt, Johnson & Leach, Adrian W., 2019. "Linguistic variables as fuzzy sets to model uncertainty in the combined efficacy of multiple phytosanitary measures in pest risk analysis," Ecological Modelling, Elsevier, vol. 406(C), pages 73-79.

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