Back to Search Start Over

Cross-scale integration of knowledge for predicting species ranges: a metamodelling framework.

Authors :
Talluto, Matthew V.
Boulangeat, Isabelle
Ameztegui, Aitor
Aubin, Isabelle
Berteaux, Dominique
Butler, Alyssa
Doyon, Frédérik
Drever, C. Ronnie
Fortin, Marie ‐ Josée
Franceschini, Tony
Liénard, Jean
McKenney, Dan
Solarik, Kevin A.
Strigul, Nikolay
Thuiller, Wilfried
Gravel, Dominique
Source :
Global Ecology & Biogeography; Feb2016, Vol. 25 Issue 2, p238-249, 12p
Publication Year :
2016

Abstract

Aim Current interest in forecasting changes to species ranges has resulted in a multitude of approaches to species distribution models ( SDMs). However, most approaches include only a small subset of the available information, and many ignore smaller-scale processes such as growth, fecundity and dispersal. Furthermore, different approaches often produce divergent predictions with no simple method to reconcile them. Here, we present a flexible framework for integrating models at multiple scales using hierarchical Bayesian methods. Location Eastern North America (as an example). Methods Our framework builds a metamodel that is constrained by the results of multiple sub-models and provides probabilistic estimates of species presence. We applied our approach to a simulated dataset to demonstrate the integration of a correlative SDM with a theoretical model. In a second example, we built an integrated model combining the results of a physiological model with presence-absence data for sugar maple ( A cer saccharum), an abundant tree native to eastern North America. Results For both examples, the integrated models successfully included information from all data sources and substantially improved the characterization of uncertainty. For the second example, the integrated model outperformed the source models with respect to uncertainty when modelling the present range of the species. When projecting into the future, the model provided a consensus view of two models that differed substantially in their predictions. Uncertainty was reduced where the models agreed and was greater where they diverged, providing a more realistic view of the state of knowledge than either source model. Main conclusions We conclude by discussing the potential applications of our method and its accessibility to applied ecologists. In ideal cases, our framework can be easily implemented using off-the-shelf software. The framework has wide potential for use in species distribution modelling and can drive better integration of multi-source and multi-scale data into ecological decision-making. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
1466822X
Volume :
25
Issue :
2
Database :
Complementary Index
Journal :
Global Ecology & Biogeography
Publication Type :
Academic Journal
Accession number :
112083411
Full Text :
https://doi.org/10.1111/geb.12395