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How well do environment- based models predict species abundances at a coarse scale? Volker Bahn and Brian McGill McGill University CSEE, Toronto, May, 2007 www.volkerbahn.com
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Distribution Map Rose-breasted Grosbeak http://www.natureserve.org/
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Distribution Map Rose-breasted Grosbeak http://www.mbr-pwrc.usgs.gov/bbs/bbs.html
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Species Distributions Central to ecology –Krebs, C. J. 1972. Ecology: The experimental analysis of distribution and abundance. –Andrewartha, H. G., and L. C. Birch. 1984. The ecological web: More on the distribution and abundance of animals. Conservation of species
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How does distribution modelling work? –Occurrence or abundance data at some locations –Record environmental conditions –Build statistical model relating sample data to environmental predictors –Predict occurrence for non-surveyed areas Distribution Modelling
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Research Questions How well does niche-based distribution modelling work? How can one assess the predictive ability of distribution models? Which influence does the evaluation scheme have on the assessment of the models?
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Methods Breeding Bird Survey 1996-2000 1293 locations 79 - 190 species Environmental data Regression trees/ Random forests
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Contagion
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Results DependentIndependentR 2 * Bird abundanceEnvironment0.32 Bird abundanceContagion0.43 Sim. RangesEnvironment0.24 *Averaged over 190 species Bahn, V and McGill, B.J. (2007) Can niche-based distribution models outperform spatial interpolation? Global Ecology and Biogeography: online early.
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Resubstitution – no split
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Random split
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Strips
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Halves
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Conclusion When training and test data are interspersed, interpolation does the job just as well as niche-based models Niche-based models predict poorly into new areas Evaluations are dependent on information content and testing scheme
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Outlook If environmental conditions are not a good predictor then what are we missing? We don’t get the right information from remotely sensed data Processes are not stationary Spatial processes: dispersal and population dynamics
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Acknowledgements Thousands of volunteers, CWS & USGS for BBS data Grad students, friends and collaborators in the lab and beyond Family Funding from NSERC
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Discussion?
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Species Peak at Optimum? Typically not Mueller-Dombois, D. & Ellenberg, H. (1974) Aims and methods of vegetation ecology. Wiley, New York. Rehfeldt, G.E., Ying, C.C., Spittlehouse, D.L. & Hamilton, D.A., Jr. (1999) Genetic responses to climate in Pinus contorta: Niche breadth, climate change, and reforestation. Ecological Monographs, 69(3), 375-407.
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Species Peak at Optimum? Wang et al. 2006. Use of response functions in selecting lodgepole pine populations for future climates. J Global Change Biology 12(12):2404-2416 Frazier, M., R.B. Huey, and D. Berrigan. 2005. Thermodynamics constrains the evolution of insect population growth rates: "warmer is better." American Naturalist 168:512-520.
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Mueller-Dombois and Ellenberg (1974)
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Dispersal Bahn, V., W.B. Krohn, and R.J. O'Connor. Under review. Dispersal leads to autocorrelation in animal distributions: a simulation model. Submitted to Journal of Applied Ecology.
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Before/after Dispersal
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Conditional Autoregressive Y = Xβ + ρC(Y – Xβ) + ε
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Temp max ≥ 28.6 Yearly var precip ≥ 0.2 Seasonal var precip ≥ 0.3 Precip ≥ 66.1 Temp min ≥ 3.2 0.7 n = 115 1.2 n = 145 1.0 n = 66 1.7 n = 273 1.6 n = 24 2.8 n = 54
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