| Literature DB >> 26245256 |
Rui Seabra1, David S Wethey2, António M Santos3, Fernando P Lima4.
Abstract
Predicting the extent and direction of species' range shifts is a major priority for scientists and resource managers. Seminal studies have fostered the notion that biological systems responding to climate change-impacted variables (e.g., temperature, precipitation) should exhibit poleward range shifts but shifts contrary to that expectation have been frequently reported. Understanding whether those shifts are indeed contrary to climate change predictions involves understanding the most basic mechanisms determining the distribution of species. We assessed the patterns of ecologically relevant temperature metrics (e.g., daily range, min, max) along the European Atlantic coast. Temperature metrics have contrasting geographical patterns and latitude or the grand mean are poor predictors for many of them. Our data suggest that unless the appropriate metrics are analysed, the impact of climate change in even a single metric of a single stressor may lead to range shifts in directions that would otherwise be classified as "contrary to prediction".Entities:
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Year: 2015 PMID: 26245256 PMCID: PMC4526865 DOI: 10.1038/srep12930
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1Patterns of temperature metrics across the European Atlantic intertidal ecosystem.
(a) Locations surveyed. Geographic pattern of metrics: (b) grand mean, (c) 7 day mean, (d) daily range, (e) microhabitat range, (f) minimum, (g) 5th percentile, (h) mean, (i) 95th percentile, (j) maximum. Black line (b) is grand mean, calculated using all data from each shore. Red and blue lines (c–j) calculated using the warmest and coldest 30 days of each year (7 days for (c)), per shore. The shaded area is the pattern expected if each metric was perfectly correlated with latitude. Points in shaded area are “cooler than expected given latitude”, and points outside shaded area are “hotter than expected”. Correlation coefficients between each metric and latitude are depicted in the top right corner of each panel (blue for cold and red for warm periods). Map created in R35 using Global Self-consistent, Hierarchical, High-resolution Geography Database (GSHHG) coastline data.
Figure 2Climate change can generate complex biogeographic responses.
Conceptual framework (a–c) and example built using real temperature data (d–f) illustrating the mechanism through which climate change may induce complex biogeographic responses. Black dots show the abundance of a hypothetical species in each location (A–O, see Fig. 1a), which results from the interplay of ‘winter minimum’ (blue areas) and ‘summer 5th percentile’ (dark orange areas). Light orange results from the overlap between blue and orange areas and shows the outcome of the Liebig’s law of the minimum. (a,d) show the initial conditions, (b,e) result from the monotonic increase of both winter minimum and summer 5th percentile (scenario of increased mean), and (c,f) from increase of one aspect of temperature and decrease of the other (scenario of increased variability but stable mean).