Model-based forecasting of agricultural crop disease risk at the regional scale, integrating airborne inoculum, environmental, and satellite-based monitoring data

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creativework.keywords - en
scientific modeling
wheat stripe rust
crop disease
forecasting
creativework.keywords - fr
modèles scientifiques
rouille jaune du blé
maladies des cultures
prévision et estimation
dc.contributor.author
Newlands, Nathaniel. K.
dc.date.accessioned
2023-04-20T18:35:55Z
dc.date.available
2023-04-20T18:35:55Z
dc.date.issued
2018-06-27
dc.description.abstract - en
Crop diseases have the potential to cause devastating epidemics that threaten the world's food supply and vary widely in their dispersal pattern, prevalence, and severity. It remains unclear what the impact disease will have on sustainable crop yields in the future. Agricultural stakeholders are increasingly under pressure to adapt their decision-making to make more informed and efficient use of irrigation water, fertilizers, and pesticides. They also face increasing uncertainty in how best to respond to competing health, environment, and (sustainable) development impacts and risks. Disease dynamics involves a complex interaction between a host, a pathogen, and their environment, representing one of the largest risks facing the long-term sustainability of agriculture. New airborne inoculum, weather, and satellite-based technology provide new opportunities for combining disease monitoring data and predictive models—but this requires a robust analytical framework. Integrated model-based forecasting frameworks have the potential to improve the timeliness, effectiveness, and foresight for controlling crop diseases, while minimizing economic costs and environmental impacts, and yield losses. The feasibility of this approach is investigated involving model and data selection. It is tested against available disease data collected for wheat stripe (yellow) rust (Puccinia striiformis f.sp. tritici) (Pst) fungal disease within southern Alberta, Canada. Two candidate, stochastic models are evaluated; a simpler, site-specific model, and a more complex, spatially-explicit transmission model. The ability of these models to reproduce an observed infection pattern is tested using two climate datasets with different spatial resolution—a reanalysis dataset (~55 km) and weather station network township-aggregated data (~10 km). The complex spatially-explicit model using weather station network data had the highest forecast accuracy. A multi-scale airborne surveillance design that provides data would further improve disease risk forecast accuracy under heterogeneous modeling assumptions. In the future, a model-based forecasting approach, if supported with an airborne surveillance monitoring plan, could be made operational to provide agricultural stakeholders with reliable, cost-effective, and near-real-time information for protecting and sustaining crop production against multiple disease threats.
dc.identifier.citation
Newlands, N. K. (2018). Model-based forecasting of agricultural crop disease risk at the regional scale, integrating airborne inoculum, environmental, and satellite-based monitoring data. Frontiers in Environmental Science, 6. https://doi.org/10.3389/fenvs.2018.00063
dc.identifier.doi
https://doi.org/10.3389/fenvs.2018.00063
dc.identifier.issn
2296-665X
dc.identifier.uri
https://open-science.canada.ca/handle/123456789/228
dc.language.iso
en
dc.publisher
Frontiers
dc.rights.openaccesslevel - en
Gold
dc.rights.openaccesslevel - fr
Or
dc.subject - en
Agriculture
dc.subject - fr
Agriculture
dc.subject.en - en
Agriculture
dc.subject.fr - fr
Agriculture
dc.title - en
Model-based forecasting of agricultural crop disease risk at the regional scale, integrating airborne inoculum, environmental, and satellite-based monitoring data
dc.title.fosrctranslation - en
Model-based forecasting of agricultural crop disease risk at the regional scale, integrating airborne inoculum, environmental, and satellite-based monitoring data
dc.type - en
Article
dc.type - fr
Article
local.article.journaltitle
Frontiers in Environmental Science
local.article.journalvolume
6
local.peerreview - en
Yes
local.peerreview - fr
Oui
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