Publications des scientifiques de l'IRD

Filipe A. F., Markovic D., Pletterbauer F., Tisseuil Clément, De Wever A., Schmutz S., Bonada N., Freyhof O. (2013). Forecasting fish distribution along stream networks : brown trout (Salmo trutta) in Europe. Diversity and Distributions, 19 (8), p. 1059-1071. ISSN 1366-9516.

Titre du document
Forecasting fish distribution along stream networks : brown trout (Salmo trutta) in Europe
Année de publication
2013
Type de document
Article référencé dans le Web of Science WOS:000321444900018
Auteurs
Filipe A. F., Markovic D., Pletterbauer F., Tisseuil Clément, De Wever A., Schmutz S., Bonada N., Freyhof O.
Source
Diversity and Distributions, 2013, 19 (8), p. 1059-1071 ISSN 1366-9516
Aim Species inhabiting fresh waters are severely affected by climate change and other anthropogenic stressors. Effective management and conservation plans require advances in the accuracy and reliability of species distribution forecasts. Here, we forecast distribution shifts of Salmo trutta based on environmental predictors and examine the effect of using different statistical techniques and varying geographical extents on the performance and extrapolation of the models obtained. Location Watercourses of Ebro, Elbe and Danube river basins (c. 1,041,000 km(2); Mediterranean and temperate climates, Europe). Methods The occurrence of S. trutta and variables of climate, land cover and stream topography were assigned to stream reaches. Data obtained were used to build correlative species distribution models (SDMs) and forecasts for future decades (2020s, 2050s and 2080s) under the A1b emissions scenario, using four statistical techniques (generalised linear models, generalised additive models, random forest, and multivariate adaptive regression). Results The SDMs showed an excellent performance. Climate was a better predictor than stream topography, while land cover characteristics were not necessary to improve performance. Forecasts predict the distribution of S. trutta to become increasingly restricted over time. The geographical extent of data had a weak impact on model performance and gain/loss values, but better species response curves were generated using data from all three basins collectively. By 2080, 64% of the stream reaches sampled will be unsuitable habitats for S. trutta, with Elbe basin being the most affected, and virtually no new habitats will be gained in any basin. Main conclusions More reliable predictions are obtained when the geographical data used for modelling approximate the environmental range where the species is present. Future research incorporating both correlative and mechanistic approaches may increase robustness and accuracy of predictions.
Plan de classement
Sciences fondamentales / Techniques d'analyse et de recherche [020] ; Sciences du milieu [021] ; Ecologie, systèmes aquatiques [036]
Description Géographique
EUROPE
Localisation
Fonds IRD [F B010060479]
Identifiant IRD
fdi:010060479
Contact