My colleagues and I are pleased to announce the publication of our new paper:

Frans VF, Auge AA, Edelhoff H, Erasmi S, Balkenhol N, Engler JO (2017). 
Quantifying apart what belongs together: A multi-state species distribution 
modelling framework for species using distinct habitats. Methods in Ecology and 
Evolution. (DOI: 10.1111/2041-210X.12847).

A read-only version can be freely accessed at the following link: 
http://rdcu.be/uxn0

Abstract:

1. Species distribution models (SDMs) have been used to inform scientists and 
conservationists about the status and change in occurrence patterns in 
threatened species. Many mobile species use multiple functionally distinct 
habitats, and cannot occupy one habitat type without the other being within a 
reachable distance. For such species, classical applications of SDMs might lead 
to erroneous representations of habitat suitability, as the complex 
relationships between predictors are lost when merging occurrence information 
across multiple habitats. To better account for the spatial arrangement of 
complementary—yet mandatory—habitat types, it is important to implement 
modelling strategies that partition occurrence information according to habitat 
use in a spatial context. Here, we address this issue by introducing a 
multi-state SDM framework.
2. The multi-state SDM framework stratifies occurrences according to the 
temporal or behavioural use of distinct habitat types, referred to as “states.” 
Multiple SDMs are then run for each state and statistical thresholds of 
presence are used to combine these separate predictions. To identify suitable 
sites that account for distance between habitats, two optional modules are 
proposed where the thresholded output is aggregated and filtered by minimum 
area size, or through moving windows across maximum reachable distances.
3. We illustrate the full use of this framework by modelling the dynamic 
terrestrial breeding habitat preferences of the New Zealand sea lion (NZSL) 
(Phocarctos hookeri), using Maxent and trialling both modules to identify 
suitable sites for possible recolonization.
4. The Maxent predictions showed excellent performance, and the multi-state SDM 
framework highlighted 36–77 potential suitable breeding sites in the study area.
5. This framework can be applied to inform management when defining habitat 
suitability for species with complex changes in habitat use. It accounts for 
temporal and behavioural changes in distribution, maintains the individuality 
of each partitioned SDM, and considers distance between distinct habitat types. 
It also yields one final, easy-to-understand output for stakeholders and 
managers.


We also provide a tutorial for using this framework in R, available in the 
Supporting Information on the article web page 
(http://onlinelibrary.wiley.com/doi/10.1111/2041-210X.12847/abstract).


Kind regards,


Veronica Frans
Dept. of Wildlife Sciences
Georg-August University Goettingen
https://www.researchgate.net/profile/Veronica_Frans2

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