Yahoo Search Búsqueda en la Web

Resultado de búsqueda

  1. Species distribution models (SDMs) are numerical tools that combine observations of species occurrence or abundance with environmental estimates. They are used to gain ecological and evolutionary insights and to predict distributions across landscapes, sometimes requiring extrapolation in space and time.

  2. Here, I provide a short, half-day introduction to species distribution modelling in R. The course gives a brief overview of the concept of species distribution modelling, and introduces the main modelling steps.

  3. Species distribution modelling (SDM), also known as environmental (or ecological) niche modelling (ENM), habitat modelling, predictive habitat distribution modelling, and range mapping uses computer algorithms to predict the distribution of a species across geographic space and time using environmental data. The environmental data are most ...

  4. 17 de ene. de 2018 · Species distribution models (SDMs) are widely used in ecology and conservation. Presence-only SDMs such as MaxEnt frequently use natural history collections (NHCs) as occurrence data, given...

  5. 3 de may. de 2023 · Species distribution models (SDMs) have become the most widely used method for wildlife management and have been applied in the fields of ecology, biogeography, and conservation. Species distribution modelling commonly requires two categories of data: (1) species data and (2) environmental data.

  6. 19 de abr. de 2018 · In this paper, we first review the sources of information and different approaches (frequentist and Bayesian) to model the distribution of a species. We also discuss the Integrated Nested Laplace approximation as a tool with which to obtain marginal posterior distributions of the parameters involved in these models.

  7. Species distribution modelling (SDM), also called environmental or ecological niche modelling, combines species locality data, or other attributes of biological diversity, with environmental predictors using statistical and machine learning models to produce empirical descriptions and spatial predictions of species–environment relationships ...