| Literature DB >> 25252835 |
Collin Storlie1, Andres Merino-Viteri2, Ben Phillips3, Jeremy VanDerWal4, Justin Welbergen5, Stephen Williams6.
Abstract
To assess a species' vulnerability to climate change, we commonly use mapped environmental data that are coarsely resolved in time and space. Coarsely resolved temperature data are typically inaccurate at predicting temperatures in microhabitats used by an organism and may also exhibit spatial bias in topographically complex areas. One consequence of these inaccuracies is that coarsely resolved layers may predict thermal regimes at a site that exceed species' known thermal limits. In this study, we use statistical downscaling to account for environmental factors and develop high-resolution estimates of daily maximum temperatures for a 36 000 km(2) study area over a 38-year period. We then demonstrate that this statistical downscaling provides temperature estimates that consistently place focal species within their fundamental thermal niche, whereas coarsely resolved layers do not. Our results highlight the need for incorporation of fine-scale weather data into species' vulnerability analyses and demonstrate that a statistical downscaling approach can yield biologically relevant estimates of thermal regimes.Keywords: climate change; exposure; sensitivity; spatial weather layers; vulnerability
Mesh:
Year: 2014 PMID: 25252835 PMCID: PMC4190965 DOI: 10.1098/rsbl.2014.0576
Source DB: PubMed Journal: Biol Lett ISSN: 1744-9561 Impact factor: 3.703