The Eastern Arc Mountains (EAMs) of Tanzania and Kenya support some of the most ancient tropical rainforest on Earth. The forests are a global priority for biodiversity conservation and provide vital resources to the Tanzanian population. Here, we make a first attempt to predict the spatial distribution of 40 EAM tree species, using generalised additive models, plot data and environmental predictor maps at sub 1 km resolution. The results of three modelling experiments are presented, investigating predictions obtained by (1) two different procedures for the stepwise selection of predictors, (2) down-weighting absence data, and (3) incorporating an autocovariate term to describe fine-scale spatial aggregation. In response to recent concerns ...
Species Distribution Models (SDMs) are a powerful tool to derive habitat suitability predictions rel...
Spatial distribution modelling can be a useful tool for elaborating conservation strategies for tree...
Thesis (M.Sc.)-University of KwaZulu-Natal, Westville, 2011.MaxEnt modelling uses only the known loc...
The Eastern Arc Mountains (EAMs) of Tanzania and Kenya support some of the most ancient tropical rai...
Aim: Data shortages mean that conservation priorities can be highly sensitive to historical patterns...
Aim Data shortages mean that conservation priorities can be highly sensitive to historical patterns ...
Forests in the Eastern Arc Mountains are amongst the oldest and most biodiverse on Earth. They are a...
Aim: Our aim was to evaluate the extent to which we can predict and map tree alpha diversity across ...
Aim Our aim was to evaluate the extent to which we can predict and map tree alpha diversity across b...
Remote sensing can provide useful explanatory variables for tree species distribution modeling, but ...
Aim Species Distribution Models (SDM) can be used to predict the location of unknown populations fro...
Predicting the current and future natural distributions of species is challenging, especially in the...
Background. Predicting the current and future natural distributions of species is challenging, espec...
Data characteristics and species traits are expected to influence the accuracy with which species' d...
Data characteristics and species traits are expected to influence the accuracy with which species' d...
Species Distribution Models (SDMs) are a powerful tool to derive habitat suitability predictions rel...
Spatial distribution modelling can be a useful tool for elaborating conservation strategies for tree...
Thesis (M.Sc.)-University of KwaZulu-Natal, Westville, 2011.MaxEnt modelling uses only the known loc...
The Eastern Arc Mountains (EAMs) of Tanzania and Kenya support some of the most ancient tropical rai...
Aim: Data shortages mean that conservation priorities can be highly sensitive to historical patterns...
Aim Data shortages mean that conservation priorities can be highly sensitive to historical patterns ...
Forests in the Eastern Arc Mountains are amongst the oldest and most biodiverse on Earth. They are a...
Aim: Our aim was to evaluate the extent to which we can predict and map tree alpha diversity across ...
Aim Our aim was to evaluate the extent to which we can predict and map tree alpha diversity across b...
Remote sensing can provide useful explanatory variables for tree species distribution modeling, but ...
Aim Species Distribution Models (SDM) can be used to predict the location of unknown populations fro...
Predicting the current and future natural distributions of species is challenging, especially in the...
Background. Predicting the current and future natural distributions of species is challenging, espec...
Data characteristics and species traits are expected to influence the accuracy with which species' d...
Data characteristics and species traits are expected to influence the accuracy with which species' d...
Species Distribution Models (SDMs) are a powerful tool to derive habitat suitability predictions rel...
Spatial distribution modelling can be a useful tool for elaborating conservation strategies for tree...
Thesis (M.Sc.)-University of KwaZulu-Natal, Westville, 2011.MaxEnt modelling uses only the known loc...