Estimating Invasion Success by Non-Native Trees in a National Park Combining WorldView-2 Very High Resolution Satellite Data and Species Distribution Models

Invasion by non-native tree species is an environmental and societal challenge requiring predictive tools to assess invasion dynamics. The frequent scale mismatch between such tools and on-ground conservation is currently limiting invasion management. This study aimed to reduce these scale mismatche...

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Main Authors: Antonio T. Monteiro, João Gonçalves, Rui F. Fernandes, Susana Alves, Bruno Marcos, Richard Lucas, Ana Claúdia Teodoro, João P. Honrado
Format: Article
Language:English
Published: MDPI AG 2017-01-01
Series:Diversity
Subjects:
Online Access:http://www.mdpi.com/1424-2818/9/1/6
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language English
format Article
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author Antonio T. Monteiro
João Gonçalves
Rui F. Fernandes
Susana Alves
Bruno Marcos
Richard Lucas
Ana Claúdia Teodoro
João P. Honrado
spellingShingle Antonio T. Monteiro
João Gonçalves
Rui F. Fernandes
Susana Alves
Bruno Marcos
Richard Lucas
Ana Claúdia Teodoro
João P. Honrado
Estimating Invasion Success by Non-Native Trees in a National Park Combining WorldView-2 Very High Resolution Satellite Data and Species Distribution Models
Diversity
invasion mapping
random forest
object-based classification
Acacia
SDMs
remote-sensed environmental attributes
success rate of invasion
author_facet Antonio T. Monteiro
João Gonçalves
Rui F. Fernandes
Susana Alves
Bruno Marcos
Richard Lucas
Ana Claúdia Teodoro
João P. Honrado
author_sort Antonio T. Monteiro
title Estimating Invasion Success by Non-Native Trees in a National Park Combining WorldView-2 Very High Resolution Satellite Data and Species Distribution Models
title_short Estimating Invasion Success by Non-Native Trees in a National Park Combining WorldView-2 Very High Resolution Satellite Data and Species Distribution Models
title_full Estimating Invasion Success by Non-Native Trees in a National Park Combining WorldView-2 Very High Resolution Satellite Data and Species Distribution Models
title_fullStr Estimating Invasion Success by Non-Native Trees in a National Park Combining WorldView-2 Very High Resolution Satellite Data and Species Distribution Models
title_full_unstemmed Estimating Invasion Success by Non-Native Trees in a National Park Combining WorldView-2 Very High Resolution Satellite Data and Species Distribution Models
title_sort estimating invasion success by non-native trees in a national park combining worldview-2 very high resolution satellite data and species distribution models
publisher MDPI AG
series Diversity
issn 1424-2818
publishDate 2017-01-01
description Invasion by non-native tree species is an environmental and societal challenge requiring predictive tools to assess invasion dynamics. The frequent scale mismatch between such tools and on-ground conservation is currently limiting invasion management. This study aimed to reduce these scale mismatches, assess the success of non-native tree invasion and determine the environmental factors associated to it. A hierarchical scaling approach combining species distribution models (SDMs) and satellite mapping at very high resolution (VHR) was developed to assess invasion by Acacia dealbata in Peneda-Gerês National Park, the only national park in Portugal. SDMs were first used to predict the climatically suitable areas for A. dealdata and satellite mapping with the random-forests classifier was then applied to WorldView-2 very-high resolution imagery to determine whether A. dealdata had actually colonized the predicted areas (invasion success). Environmental attributes (topographic, disturbance and canopy-related) differing between invaded and non-invaded vegetated areas were then analyzed. The SDM results indicated that most (67%) of the study area was climatically suitable for A. dealbata invasion. The onset of invasion was documented to 1905 and satellite mapping highlighted that 12.6% of study area was colonized. However, this species had only colonized 62.5% of the maximum potential range, although was registered within 55.6% of grid cells that were considerable unsuitable. Across these areas, the specific success rate of invasion was mostly below 40%, indicating that A. dealbata invasion was not dominant and effective management may still be possible. Environmental attributes related to topography (slope), canopy (normalized difference vegetation index (ndvi), land surface albedo) and disturbance (historical burnt area) differed between invaded and non-invaded vegetated area, suggesting that landscape attributes may alter at specific locations with Acacia invasion. Fine-scale spatial-explicit estimation of invasion success combining SDM predictions with VHR invasion mapping allowed the scale mismatch between predictions of invasion dynamics and on-ground conservation decision making for invasion management to be reduced. Locations with greater potential to suppress invasions could also be defined. Uncertainty in the invasion mapping needs to be accounted for in the interpretation of the results.
topic invasion mapping
random forest
object-based classification
Acacia
SDMs
remote-sensed environmental attributes
success rate of invasion
url http://www.mdpi.com/1424-2818/9/1/6
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spelling doaj-487a6ca0135e4fca9acf91e6f97f75262020-11-24T21:28:59ZengMDPI AGDiversity1424-28182017-01-0191610.3390/d9010006d9010006Estimating Invasion Success by Non-Native Trees in a National Park Combining WorldView-2 Very High Resolution Satellite Data and Species Distribution ModelsAntonio T. Monteiro0João Gonçalves1Rui F. Fernandes2Susana Alves3Bruno Marcos4Richard Lucas5Ana Claúdia Teodoro6João P. Honrado7Research Network in Biodiversity and Evolutionary Biology (CIBIO-InBIO), Associate Laboratory, University of Porto, Campus Agrário de Vairão, 4485-661 Vairão, PortugalResearch Network in Biodiversity and Evolutionary Biology (CIBIO-InBIO), Associate Laboratory, University of Porto, Campus Agrário de Vairão, 4485-661 Vairão, PortugalDepartment of Ecology and Evolution, University of Lausanne, Biophore, 1015 Lausanne, SwitzerlandDepartment of Geoscience, Environment and Land Planning, Faculty of Sciences, University of Porto, Rua Campo Alegre, 4169-007 Porto, PortugalResearch Network in Biodiversity and Evolutionary Biology (CIBIO-InBIO), Associate Laboratory, University of Porto, Campus Agrário de Vairão, 4485-661 Vairão, PortugalCentre for Ecosystem Sciences, School of Biological, Earth and Environmental Science, The University of New South Wales, High Street, Kensington, NSW 2052, AustraliaDepartment of Geoscience, Environment and Land Planning, Faculty of Sciences, University of Porto, Rua Campo Alegre, 4169-007 Porto, PortugalResearch Network in Biodiversity and Evolutionary Biology (CIBIO-InBIO), Associate Laboratory, University of Porto, Campus Agrário de Vairão, 4485-661 Vairão, PortugalInvasion by non-native tree species is an environmental and societal challenge requiring predictive tools to assess invasion dynamics. The frequent scale mismatch between such tools and on-ground conservation is currently limiting invasion management. This study aimed to reduce these scale mismatches, assess the success of non-native tree invasion and determine the environmental factors associated to it. A hierarchical scaling approach combining species distribution models (SDMs) and satellite mapping at very high resolution (VHR) was developed to assess invasion by Acacia dealbata in Peneda-Gerês National Park, the only national park in Portugal. SDMs were first used to predict the climatically suitable areas for A. dealdata and satellite mapping with the random-forests classifier was then applied to WorldView-2 very-high resolution imagery to determine whether A. dealdata had actually colonized the predicted areas (invasion success). Environmental attributes (topographic, disturbance and canopy-related) differing between invaded and non-invaded vegetated areas were then analyzed. The SDM results indicated that most (67%) of the study area was climatically suitable for A. dealbata invasion. The onset of invasion was documented to 1905 and satellite mapping highlighted that 12.6% of study area was colonized. However, this species had only colonized 62.5% of the maximum potential range, although was registered within 55.6% of grid cells that were considerable unsuitable. Across these areas, the specific success rate of invasion was mostly below 40%, indicating that A. dealbata invasion was not dominant and effective management may still be possible. Environmental attributes related to topography (slope), canopy (normalized difference vegetation index (ndvi), land surface albedo) and disturbance (historical burnt area) differed between invaded and non-invaded vegetated area, suggesting that landscape attributes may alter at specific locations with Acacia invasion. Fine-scale spatial-explicit estimation of invasion success combining SDM predictions with VHR invasion mapping allowed the scale mismatch between predictions of invasion dynamics and on-ground conservation decision making for invasion management to be reduced. Locations with greater potential to suppress invasions could also be defined. Uncertainty in the invasion mapping needs to be accounted for in the interpretation of the results.http://www.mdpi.com/1424-2818/9/1/6invasion mappingrandom forestobject-based classificationAcaciaSDMsremote-sensed environmental attributessuccess rate of invasion