Aim Species distribution models (SDMs) are used to infer niche responses and predict climate change-induced range shifts. However, their power to distinguish real and chance associations between spatially autocorrelated distribution and environmental data at continental scales has been questioned. Here this is investigated at a regional (10 km) scale by modelling the distributions of 100 plant species native to the UK. Location UK. Methods SDMs fitted using real climate data were compared with those utilizing simulated climate gradients. The simulated gradients preserve the exact values and spatial structure of the real ones, but have no causal relationships with any species and so represent an appropriate null model. SDMs were fitte...
Species distribution models (SDMs) are widely used to forecast changes in the spatial distributions ...
Both climatic and edaphic conditions determine plant distribution, however many species distribution...
International audienceAim: Statistical species distribution models (SDMs) are the most common tool t...
Aim Species distribution models (SDMs) are used to infer niche responses and predict climate change...
International audienceClimate is one of the main factors driving species distributions and global bi...
<div><p>Conservation planners often wish to predict how species distributions will change in respons...
Conservation planners often wish to predict how species distributions will change in response to env...
Recent studies suggest that species distribution models (SDMs) based on fine-scale climate data may ...
Aim: The distributions of many organisms are spatially autocorrelated, but it is unclear whether inc...
Aim The increasing availability of regional and global climate data pre...
Aim Niche‐based models often ignore spatial variation in the climatic niche of a species across its ...
Our understanding of how species will respond to global change is still limited. Species distributio...
<div><p>Both climatic and edaphic conditions determine plant distribution, however many species dist...
modelling framework for studying the combined effects of climate and land-cover changes on the distr...
Aim: Correlative species distribution models (SDMs) combined with spatial layers of climate and spec...
Species distribution models (SDMs) are widely used to forecast changes in the spatial distributions ...
Both climatic and edaphic conditions determine plant distribution, however many species distribution...
International audienceAim: Statistical species distribution models (SDMs) are the most common tool t...
Aim Species distribution models (SDMs) are used to infer niche responses and predict climate change...
International audienceClimate is one of the main factors driving species distributions and global bi...
<div><p>Conservation planners often wish to predict how species distributions will change in respons...
Conservation planners often wish to predict how species distributions will change in response to env...
Recent studies suggest that species distribution models (SDMs) based on fine-scale climate data may ...
Aim: The distributions of many organisms are spatially autocorrelated, but it is unclear whether inc...
Aim The increasing availability of regional and global climate data pre...
Aim Niche‐based models often ignore spatial variation in the climatic niche of a species across its ...
Our understanding of how species will respond to global change is still limited. Species distributio...
<div><p>Both climatic and edaphic conditions determine plant distribution, however many species dist...
modelling framework for studying the combined effects of climate and land-cover changes on the distr...
Aim: Correlative species distribution models (SDMs) combined with spatial layers of climate and spec...
Species distribution models (SDMs) are widely used to forecast changes in the spatial distributions ...
Both climatic and edaphic conditions determine plant distribution, however many species distribution...
International audienceAim: Statistical species distribution models (SDMs) are the most common tool t...