A Bayesian approach to model dispersal for decision support |
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Affiliation: | 3. Eco-Innov, INRA, Université Paris-Saclay, 78850 Thiverval-Grignon, France;1. UCD School of Biosystems and Food Engineering, University College Dublin, Belfield, Dublin 4, Ireland;2. CIMO Mountain Research Centre, School of Agriculture, Polytechnic Institute of Braganza, Portugal |
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Abstract: | In agricultural and environmental sciences dispersal models are often used for risk assessment to predict the risk associated with a given configuration and also to test scenarios that are likely to minimise those risks. Like any biological process, dispersal is subject to biological, climatic and environmental variability and its prediction relies on models and parameter values which can only approximate the real processes. In this paper, we present a Bayesian method to model dispersal using spatial configuration and climatic data (distances between emitters and receptors; main wind direction) while accounting for uncertainty, with an application to the prediction of adventitious presence rate of genetically modified maize (GM) in a non-GM field. This method includes the design of candidate models, their calibration, selection and evaluation on an independent dataset. A group of models was identified that is sufficiently robust to be used for prediction purpose. The group of models allows to include local information and it reflects reliably enough the observed variability in the data so that probabilistic model predictions can be performed and used to quantify risk under different scenarios or derive optimal sampling schemes. |
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Keywords: | Dispersal Variability Uncertainty Bayesian inference MCMC Decision support Risk assessment Sampling Zero-excess data |
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