• Title of article

    Predicting habitat suitability with machine learning models: The potential area of Pinus sylvestris L. in the Iberian Peninsula

  • Author/Authors

    Garzَn، نويسنده , , Marta Benito and Blazek، نويسنده , , Radim and Neteler، نويسنده , , Markus and Dios، نويسنده , , Rut Sلnchez de and Ollero، نويسنده , , Helios Sainz and Furlanello، نويسنده , , Cesare، نويسنده ,

  • Pages
    11
  • From page
    383
  • To page
    393
  • Abstract
    We present a modelling framework for predicting forest areas. The framework is obtained by integrating a machine learning software suite within the GRASS Geographical Information System (GIS) and by providing additional methods for predictive habitat modelling. Three machine learning techniques (Tree-Based Classification, Neural Networks and Random Forest) are available in parallel for modelling from climatic and topographic variables. Model evaluation and parameter selection are measured by sensitivity-specificity ROC analysis, while the final presence and absence maps are obtained through maximisation of the kappa statistic. The modelling framework is applied at a resolution of 1 km with Iberian subpopulations of Pinus sylvestris L. forests. For this data set, the most accurate algorithm is Breimanʹs random forest, an ensemble method which provides automatic combination of tree-classifiers trained on bootstrapped subsamples and randomised variable sets. All models show a potential area of P. sylvestris for the Iberian Peninsula which is larger than the present one, a result corroborated by regional pollen analyses.
  • Keywords
    Iberian Peninsula , habitat suitability , Pinus sylvestris L. , Machine Learning , Random forest , NEURAL NETWORKS , classification and regression trees , AUC , kappa
  • Journal title
    Astroparticle Physics
  • Record number

    2039936