Predicting spanish sclerophyllous forests potentiality using artificial neural networks

Authors

  • J. Bustamante Grupo de Ecología Espacial, Departamento de Biología Aplicada, Estación Biológica de Doñana, CSIC. Avda María Luisa s/n, 41013 – Sevilla

DOI:

https://doi.org/10.3989/graellsia.2003.v59.i2-3.252

Keywords:

actual temperature maps, interpolation, kriging, multiple regression, loess, DEM, splines

Abstract


Holm oak and cork oak forests are between the most important sclerophyllous formations in the Mediterranean Iberia. In order to study their potentiality, an artificial neural network model, with a feedforward BP algorithm, has been applied. The elevation, continentality, insolation, annual rainfall, annual mean temperature, mean temperature of the coldest month and mean temperature of the warmest month are the used bioclimatic variables with a 10 km resolution. The neural networks seem a highly predictive powerful tool. Different patterns in the response of the studied forests have been shown. The holm oak presents a continuous and wide potential simulate range. Meanwhile the cork oak potential area is fragmented and restricted, in accordance with its actual distribution area. The lack of both forests in the eastern and southern warm zones of Iberian Peninsula is the main discrepancy with previous potential vegetation proposals.

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Author Biography

J. Bustamante, Grupo de Ecología Espacial, Departamento de Biología Aplicada, Estación Biológica de Doñana, CSIC. Avda María Luisa s/n, 41013 – Sevilla

Secretaría científica

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Published

2003-12-30

How to Cite

1.
Bustamante J. Predicting spanish sclerophyllous forests potentiality using artificial neural networks. Graellsia [Internet]. 2003Dec.30 [cited 2025May1];59(2-3):359-76. Available from: https://graellsia.revistas.csic.es/index.php/graellsia/article/view/252

Issue

Section

Research Articles