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Using species distribution models to identify suitable areas for biofuel feedstock production
Authors:JASON M EVANS  ROBERT J FLETCHER JR  JANAKI ALAVALAPATI
Institution:1. Department of Wildlife Ecology and Conservation, IFAS/University of Florida, Gainesville, FL 32611, USA;2. 1Present address: Carl Vinson Institute of Government, University of Georgia, 201 N. Milledge Ave., Athens, GA 30602, USA.;3. Department of Wildlife Ecology and Conservation, 110 Newin‐Ziegler Hall, PO Box 110430, University of Florida, Gainesville, FL 32611, USA;4. Department of Forest Resources and Environmental Conservation, 313 Cheatham Hall, Virginia Tech University, Blacksburg VA 24061, USA
Abstract:The 2007 Energy Independence and Security Act mandates a five‐fold increase in US biofuel production by 2022. Given this ambitious policy target, there is a need for spatially explicit estimates of landscape suitability for growing biofuel feedstocks. We developed a suitability modeling approach for two major US biofuel crops, corn (Zea mays) and switchgrass (Panicum virgatum), based upon the use of two presence‐only species distribution models (SDMs): maximum entropy (Maxent) and support vector machines (SVM). SDMs are commonly used for modeling animal and plant distributions in natural environments, but have rarely been used to develop landscape models for cultivated crops. AUC, Kappa, and correlation measures derived from test data indicate that SVM slightly outperformed Maxent in modeling US corn production, although both models produced significantly accurate results. When compared with results from a mechanistic switchgrass model recently developed by Oak Ridge National Laboratory (ORNL), SVM results showed higher correlation than Maxent results with models fit using county‐scale point inputs of switchgrass production derived from expert opinion estimates. However, Maxent results for an alternative switchgrass model developed with point inputs from research trial sites showed higher correlation to the ORNL model than the corresponding results obtained from SVM. Further analysis indicates that both modeling approaches were effective in predicting county‐scale increases in corn production from 2006 to 2007, a time period in which US corn production increased by 24%. We conclude that presence‐only methods are a powerful first‐cut tool for estimating relative land suitability across geographic regions in which candidate biofuel feedstocks can be grown, and may also provide important insight into potential land‐use change patterns likely to be associated with increased biofuel demand.
Keywords:biofuels  corn  ethanol  land‐use change  species distribution models  switchgrass
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