Predicting rat occurrence in oil-palm plantation using GIS and GeoEye data
Rats (Rattus spp.) can cause substantial economic loss to oil palm (Elaeis quineensis Jacq.) plantations. Spatial occurrence of rat in oil palm plantation has not been adequately dealt. We evaluated the rat occurrence at an oil palm plantation in Sabah, Malaysia using habitat factors from GIS and Ge...
Main Authors: | , , , |
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Format: | Article |
Language: | English |
Published: |
2016
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Subjects: | |
Online Access: | https://eprints.ums.edu.my/id/eprint/20543/1/Predicting%20rat%20occurrence%20in%20oil.pdf |
Summary: | Rats (Rattus spp.) can cause substantial economic loss to oil palm (Elaeis quineensis Jacq.) plantations. Spatial occurrence of rat in oil palm plantation has not been adequately dealt. We evaluated the rat occurrence at an oil palm plantation in Sabah, Malaysia using habitat factors from GIS and GeoEye data. Among the regression models examined, binomial logistic regression model best predicted the rat occurrence. Overall accuracy of the occurrence prediction calculated from an independent dataset was
nearly 80%. The results allow us to identify factors of rat occurrence and recommend necessary control measures to the
plantation management. |
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