A trait-based approach for predicting species responses to environmental change from sparse data: how well might terrestrial mammals track climate change?

Glob Chang Biol. 2016 Jul;22(7):2415-24. doi: 10.1111/gcb.13271. Epub 2016 Apr 13.

Abstract

Estimating population spread rates across multiple species is vital for projecting biodiversity responses to climate change. A major challenge is to parameterise spread models for many species. We introduce an approach that addresses this challenge, coupling a trait-based analysis with spatial population modelling to project spread rates for 15 000 virtual mammals with life histories that reflect those seen in the real world. Covariances among life-history traits are estimated from an extensive terrestrial mammal data set using Bayesian inference. We elucidate the relative roles of different life-history traits in driving modelled spread rates, demonstrating that any one alone will be a poor predictor. We also estimate that around 30% of mammal species have potential spread rates slower than the global mean velocity of climate change. This novel trait-space-demographic modelling approach has broad applicability for tackling many key ecological questions for which we have the models but are hindered by data availability.

Keywords: climate change velocity; demographic models; dispersal; integrodifference equations; life-history traits; population spread rate; range shift; rangeShifter; trait space; virtual species.

MeSH terms

  • Animals
  • Bayes Theorem
  • Biodiversity*
  • Climate Change*
  • Demography
  • Mammals*
  • Models, Theoretical