Species distribution model transferability and model grain size – finer may not always be better

Abstract Species distribution models have been used to predict the distribution of invasive species for conservation planning. Understanding spatial transferability of niche predictions is critical to promote species-habitat conservation and forecasting areas vulnerable to invasion. Grain size of pr...

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Main Authors: Syed Amir Manzoor, Geoffrey Griffiths, Martin Lukac
Format: Article
Language:English
Published: Nature Publishing Group 2018-05-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-018-25437-1
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spelling doaj-2f01489ed5fb4cb584537f62e1c9ab3e2020-12-08T04:12:48ZengNature Publishing GroupScientific Reports2045-23222018-05-01811910.1038/s41598-018-25437-1Species distribution model transferability and model grain size – finer may not always be betterSyed Amir Manzoor0Geoffrey Griffiths1Martin Lukac2School of Agriculture, Policy and Development, University of ReadingDepartment of Geography and Environmental Science, University of ReadingSchool of Agriculture, Policy and Development, University of ReadingAbstract Species distribution models have been used to predict the distribution of invasive species for conservation planning. Understanding spatial transferability of niche predictions is critical to promote species-habitat conservation and forecasting areas vulnerable to invasion. Grain size of predictor variables is an important factor affecting the accuracy and transferability of species distribution models. Choice of grain size is often dependent on the type of predictor variables used and the selection of predictors sometimes rely on data availability. This study employed the MAXENT species distribution model to investigate the effect of the grain size on model transferability for an invasive plant species. We modelled the distribution of Rhododendron ponticum in Wales, U.K. and tested model performance and transferability by varying grain size (50 m, 300 m, and 1 km). MAXENT-based models are sensitive to grain size and selection of variables. We found that over-reliance on the commonly used bioclimatic variables may lead to less accurate models as it often compromises the finer grain size of biophysical variables which may be more important determinants of species distribution at small spatial scales. Model accuracy is likely to increase with decreasing grain size. However, successful model transferability may require optimization of model grain size.https://doi.org/10.1038/s41598-018-25437-1
collection DOAJ
language English
format Article
sources DOAJ
author Syed Amir Manzoor
Geoffrey Griffiths
Martin Lukac
spellingShingle Syed Amir Manzoor
Geoffrey Griffiths
Martin Lukac
Species distribution model transferability and model grain size – finer may not always be better
Scientific Reports
author_facet Syed Amir Manzoor
Geoffrey Griffiths
Martin Lukac
author_sort Syed Amir Manzoor
title Species distribution model transferability and model grain size – finer may not always be better
title_short Species distribution model transferability and model grain size – finer may not always be better
title_full Species distribution model transferability and model grain size – finer may not always be better
title_fullStr Species distribution model transferability and model grain size – finer may not always be better
title_full_unstemmed Species distribution model transferability and model grain size – finer may not always be better
title_sort species distribution model transferability and model grain size – finer may not always be better
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2018-05-01
description Abstract Species distribution models have been used to predict the distribution of invasive species for conservation planning. Understanding spatial transferability of niche predictions is critical to promote species-habitat conservation and forecasting areas vulnerable to invasion. Grain size of predictor variables is an important factor affecting the accuracy and transferability of species distribution models. Choice of grain size is often dependent on the type of predictor variables used and the selection of predictors sometimes rely on data availability. This study employed the MAXENT species distribution model to investigate the effect of the grain size on model transferability for an invasive plant species. We modelled the distribution of Rhododendron ponticum in Wales, U.K. and tested model performance and transferability by varying grain size (50 m, 300 m, and 1 km). MAXENT-based models are sensitive to grain size and selection of variables. We found that over-reliance on the commonly used bioclimatic variables may lead to less accurate models as it often compromises the finer grain size of biophysical variables which may be more important determinants of species distribution at small spatial scales. Model accuracy is likely to increase with decreasing grain size. However, successful model transferability may require optimization of model grain size.
url https://doi.org/10.1038/s41598-018-25437-1
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