Species Distribution Modelling (SDM): A Guide

This catalogue respects all FAIR guidelines and best practices and uses the IEEE Standard for Learning Object Metadata (IEEE 2002) that has been customised in order to be compliant with the EOSC Training Resource Profile - Data Model.

Description

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Species Distribution Modelling (SDM) is a technique widely used in many fields of natural and biological sciences to infer the ecological requirements of species and to predict their geographic distributions (Elith & Leathwick, 2009). Species distribution models can be used to support conservation decision making (Guisan et al., 2013). Forecasting endangered species distribution under climatic change scenario is increasingly used in conservation biology (Muñoz et al., 2013), while forecast the spread of invasive species is receiving a growing interest in invasion biology (Verbruggen et al., 2013). The aim of SDMs is to infer the probability of occurrence of a taxon given a set of variables (climate, elevation, soil type, etc.) that are assumed to be related to the distribution and habitat preferences of the taxon under study. 

This resource is a technical guide aimed at providing the basic elements needed to build a Species Distribution Model.

Specific knowledge of the topic is not mandatory. However, in order to have a correct understanding of the information contained in the training, and even more for a proper interpretation of the output, some basics of statistics (e.g., notions of modelling like GLM, GAM, etc.) and a sound knowledge of the statistic environment of R is recommended. 

1 - General
1.1 - Identifier
42
1.2 - URL type
URL
1.3 - URL
https://training.lifewatch.eu/biodiversity-ecampus/resources/?resource=/course/view.php?id=52
1.4 - Title
Species Distribution Modelling (SDM): A Guide
1.5 - Language
en
1.6 - Description
Species Distribution Modelling (SDM) is a technique widely used in many fields of natural and biological sciences to infer the ecological requirements of species and to predict their geographic distributions (Elith & Leathwick, 2009). Species distribution models can be used to support conservation decision making (Guisan et al., 2013). Forecasting endangered species distribution under climatic change scenario is increasingly used in conservation biology (Muñoz et al., 2013), while forecast the spread of invasive species is receiving a growing interest in invasion biology (Verbruggen et al., 2013). The aim of SDMs is to infer the probability of occurrence of a taxon given a set of variables (climate, elevation, soil type, etc.) that are assumed to be related to the distribution and habitat preferences of the taxon under study. This resource is a technical guide aimed at providing the basic elements needed to build a Species Distribution Model. Specific knowledge of the topic is not mandatory. However, in order to have a correct understanding of the information contained in the tutorial, and even more for a proper interpretation of the output, some basics of statistics (e.g., notions of modelling like GLM, GAM, etc.) and a sound knowledge of the statistic environment of R is recommended.
1.7 - Keywords
Species Distribution Modelling
SDM
1.8 - Geographical availability
WW
2 - Life Cycle
2.1 - Version
Not available
2.2 - Status
Final
2.3 - Contribute
2.3.1 - Role
Author
2.3.2 - Entity
LifeWatch ERIC
2.4 - Date
2021
3 - Educational
3.1 - Interactivity type
Mixed
3.2 - Learning resource type
Graph
3.3 - Interactivity level
Medium
3.4 - Semantic density
Medium
3.5 - Target group
Researchers
Students
3.6 - Context
Other
3.7 - Expertise level
Intermediate
3.8 - Typical learning time
Knowledge-dependent
3.9 - Learning outcome(s)
3.10 - Access rights
Restricted access
3.11 - Cost
No
3.12 - Copyright and other restrictions
Yes
3.13 - Conditions of use
LifeWatch ERIC
4 - Technical
4.1 - Size
Not Available
4.2 - Scientific domain and subdomain
Natural Sciences - Earth and related environmental sciences
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Details

Code42
Uploaded byMaria Teresa Manca
Available since13/12/21 14:28

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