Title of article :
Evaluation of environmental factors to predict breeding success of Black-tailed Gulls
Author/Authors :
Who-Seung Lee، نويسنده , , Young-Soo Kwon، نويسنده , , Young-Seuk Park، نويسنده , , Tae-Soo Chon ، نويسنده , , Jeong-Chil Yoo، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2006
Abstract :
This study demonstrated prediction of breeding success of Black-tailed Gulls in relation to
the selected environmental factors through evaluation of relative importance in
determining breeding success. The data were obtained from the 258 selected and 120
non-selected sites for breeding of the gulls during the breeding periods in 2002–2003.
Breeding success at the selected sites, and environmental factors such as vegetation cover,
vegetation height, rock cover, nest-wall, nearest distance between neighbors and slope,
were measured at each sampling site. For predicting breeding success of Black-tailed Gulls,
we used two different artificial neural networks in this study: self-organizing map (SOM) and
multilayer perceptron (MLP). SOM was used to classify the sampling sites based on the
environmental factors, whereas MLP was implemented to prediction of breeding success of
the gulls at the non-selected sites based on environmental conditions. In our results, SOM
discriminated clearly the sampling sites and presented differences in environmental factors
between the selected and non-selected sites. Subsequently, the breeding success was
accordingly predicted by MLP. Nest-wall was considered the most important environmental
factor in determining survival status of the gulls. An increase in nest-wall and vegetation
cover was required to support breeding of the specimens for managing the habitats for
Black-tailed Gulls.
Keywords :
Black-tailed GullsBreeding successHabitat managementMultilayer perceptronSelf-organizing mapSensitivity analysis
Journal title :
Ecological Informatics
Journal title :
Ecological Informatics