
Document généré le 19/09/2025 depuis l'adresse: https://www.documentation.eauetbiodiversite.fr/fr/notice/modelling-habitat-requirements-of-white-clawed-crayfish
Titre alternatif
Producteur
Contributeur(s)
EDP Sciences
Identifiant documentaire
11-dkey/10.1051/kmae/2011037
Identifiant OAI
oai:edpsciences.org:dkey/10.1051/kmae/2011037
Auteur(s):
L. Favaro,T. Tirelli,D. Pessani
Mots clés
crayfish
machine learning
ecological modelling
conservation
endangered species
écrevisse
apprentissage par la machine
modélisation écologique
conservation
espèces en danger
Date de publication
19/07/2011
Date de création
Date de modification
Date d'acceptation du document
Date de dépôt légal
Langue
en
Thème
Type de ressource
Source
https://doi.org/10.1051/kmae/2011037
Droits de réutilisation
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Département
Commune
Description
The white-clawed crayfish’s habitat has been profoundly modified in Piedmont (NW Italy) due to environmental changes caused by human impact. Consequently, native populations have decreased markedly. In this research project, support vector machines were tested as possible tools for evaluating the ecological factors that determine the presence of white-clawed crayfish. A system of 175 sites was investigated, 98 of which recorded the presence of Austropotamobius pallipes. At each site 27 physical-chemical, environmental and climatic variables were measured according to their importance to A. pallipes. Various feature selection methods were employed. These yielded three subsets of variables that helped build three different types of models: (1) models with no variable selection; (2) models built by applying Goldberg’s genetic algorithm after variable selection; (3) models built by using a combination of four supervised-filter evaluators after variable selection. These different model types helped us realise how important it was to select the right features if we wanted to build support vector machines that perform as well as possible. In addition, support vector machines have a high potential for predicting indigenous crayfish occurrence, according to our findings. Therefore, they are valuable tools for freshwater management, tools that may prove to be much more promising than traditional and other machine-learning techniques.
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