Piou Cyril, Benahi Ahmed Salem, Bonnal Vincent, Jaavar Mohamed el Hacen, Lebourgeois Valentine, Lecoq Michel, Vassal Jean-Michel.
2011. Coupling long-term prospection data and remote-sensing vegetation index to help in the preventative control of Desert Locust.
In : Workshop "Towards a Multi-Scale approach for Improving Pest Management", Montpellier, October 4-5, 2011 : résumés = Atelier "Quels outils pour un changement d'échelle dans la gestion des insectes d'intérêt économique?" Montpellier, 4-5 octobre 2011 : résumés. CIRAD
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Version publiée
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Matériel d'accompagnement : 1 diaporama (21 vues)
Résumé : Prospection data are generally collected in oriented manner and toward the immediate needs of pest management. Despite the evident statistical bias these data present, when coupled with external indicators of environmental status, prospection data can help in characterizing interesting relationships between the focused pest and its environment. Desert Locust management is generally done through a preventative control avoiding population to reach high and uncontrollable densities. The areas of potential start of gregarization process for Desert Locust are large and preventative management teams need to prospect all these areas to be efficient. A challenge of ongoing research is to be able to guide on where prospection surveys should be done depending on meteorological and vegetation conditions. An analysis of relationship between long-term prospection data of Desert Locust observations from 2005 to 2009 and spatio-temporal statistics of a vegetation index gathered by remote-sensing was conducted using logistic regressions. The vegetation index was a composite Normalized Difference Vegetation Index (NDVI) given every 16 days and at 250m spatial resolution (MOD13Q1 from MODIS satellite). The statistics extracted from this index were: 1) spatial means at different scales around the prospection point, 2) relative differences of NDVI variation through time before the prospection and 3) large scale summary of vegetation quality. Identical statistics could potentially be computed for actual NDVI. By extrapolation of the chosen logistic regression model, maps of probability of presence of locust could be constructed. This methodology should help in focusing prospection toward sensible parts of the gregarization areas at specific times. (Texte intégral)
Classification Agris : U30 - Méthodes de recherche
H10 - Ravageurs des plantes
Auteurs et affiliations
- Piou Cyril, CIRAD-BIOS-UPR Bioagresseurs (FRA) ORCID: 0000-0002-9378-9404
- Benahi Ahmed Salem, CNLA (MRT)
- Bonnal Vincent, CIRAD-ES-UMR TETIS (FRA) ORCID: 0000-0001-9458-2459
- Jaavar Mohamed el Hacen, CNLA (MRT)
- Lebourgeois Valentine, CIRAD-ES-UMR TETIS (FRA)
- Lecoq Michel, CIRAD-BIOS-UPR Bioagresseurs (FRA)
- Vassal Jean-Michel, CIRAD-BIOS-UPR Bioagresseurs (FRA)
Autres liens de la publication
Source : Cirad - Agritrop (https://agritrop.cirad.fr/562040/)
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