Species Distribution Modelling (SDM) techniques were originally developed in the mid-1980s. In this century they are gaining increasing attention in the literature and in practical use as a powerful tool to support forest management strategies especially under climate change. In this review paper we consider species occurrence datasets, climatic and soil predictor variables, modelling algorithms, evaluation methods and widely used software for SDM studies. We describe several important and freely available sources for species occurrence and interpolated climatic data. We outline the use of both presence-only and presence/absence modelling algorithms including distance-based algorithms, machine learning algorithms and regression-based models. We conclude that SDM techniques provide a valuable asset for forest managers. However, it is essential to consider uncertainties behind the use of future climate change scenarios.

Species distribution modelling to support forest management. A literature review

Marchi, Maurizio
;
Moriondo, Marco;Bindi, Marco;
2019

Abstract

Species Distribution Modelling (SDM) techniques were originally developed in the mid-1980s. In this century they are gaining increasing attention in the literature and in practical use as a powerful tool to support forest management strategies especially under climate change. In this review paper we consider species occurrence datasets, climatic and soil predictor variables, modelling algorithms, evaluation methods and widely used software for SDM studies. We describe several important and freely available sources for species occurrence and interpolated climatic data. We outline the use of both presence-only and presence/absence modelling algorithms including distance-based algorithms, machine learning algorithms and regression-based models. We conclude that SDM techniques provide a valuable asset for forest managers. However, it is essential to consider uncertainties behind the use of future climate change scenarios.
2019
Istituto di Bioscienze e Biorisorse - IBBR - Sede Secondaria Sesto Fiorentino (FI)
Istituto per la BioEconomia - IBE
Forest modeling
Ecological mathematics
Climate change scenarios
Spatial analyses
Ecology
Ecosystem services from forests
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/361781
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