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Provedor de dados:  OceanDocs
País:  Belgium
Título:  A Simple Non-Parametric Gis Model For Predicting Species Distribution: Endemic Birds In Bioko Island
Autores:  Fa, J.E.
Lenton, S.M.
Del Val, J.P.
Data:  2005-09-08
Ano:  2000
Palavras-chave:  GIS
Biodiversity
Fish species
Resumo:  Species mapping is a useful conservation tool for predicting patterns of biological diversity, or identifying geographical areas of conservation significance. Mapping can also improve our understanding of the appropriateness of habitat areas for individual species. We developed a new model, PREDICT, for mapping habitat suitability of plant and animal species from incomplete field survey data. PREDICT is a statistical program written for use within a GIS (geographic information system). It produces images and statistics that assess the potential of unstudied areas for wildlife for which presence/absence data and basic habitat information are available. Suitability for a target species is determined within surveyed and non-surveyed squares by a form of weights of evidence. The program measures the degree of association between habitat factors and presence/absence of target species by means of chi-squared tests. The overall suitability weighting of each square, as the sum of all individual habitat factor weightings, is finally displayed in maps depicting areas of highly suitable, suitable, unsuitable and highly unsuitable habitat. The program is corroborated with endemic bird distributions in the island of Bioko, West Africa. Statistical relations between vegetation, rainfall and landscape features of the island and the predicted location of 9 endemic bird taxa are presented. Final confirmation of the accuracy of predictions of the studied bird taxa will ensue from future field observations. However, in a series of misclassification tests of the program, actual distribution detection rate was in excess of 90%. The use of PREDICT can guide investigations of little known species in remote areas and provide a practical solution to identify areas of high rare species diversity in need of conservation.
Tipo:  Journal Contribution
Idioma:  Inglês
Identificador:  Biodiversity and Conservation , 9(7), p. 869-885

0960-3115

http://hdl.handle.net/1834/705
Editor:  Springer - Kluwer Acad.
Relação:  http://dx.doi.org/10.1023/A:1008980910283
10.1023/A:1008980910283
Formato:  68745 bytes

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