Affiliation:
1. Hatay Mustafa Kemal Üniversitesi
Abstract
Habitat quality is crucial for wildlife management that impacts the conservation of sensitive landscapes such as wetlands. With advancements in GIS, habitat modelling now effectively predicts species occurrences and habitat suitability. This study aims to model and map habitat suitability for case bird species of Kentish plover in Tuzla Lagoon using multiple techniques. Kentish plover nesting data were collected from 293 nests, and reproductive success measures such as lay date, egg volume, and nest fate were analysed. Spatial habitat modelling techniques, including regression, co-kriging, artificial neural networks, and decision trees, were used with IKONOS imagery and ground data. The overall prediction accuracies were poor for lay date across all techniques, with the decision tree being the most accurate, while egg volume was best predicted by co-kriging, egg success by linear regression, and nest fate by both binomial logistic regression and ANN with 75% accuracy.
Publisher
Turkish Journal of Landscape Research
Reference75 articles.
1. Arn, R. P., Lew, D., & Peterson, A. T. (2003). Evaluating predictive models of species’ distributions: Criteria for selecting optimal models. Ecological Modelling, 162(3), 211-232.
2. Argáez, J. A., Christen, J. A., Nakamura, M., & Soberón, J. (2005). Prediction of potential areas of species distributions based on presence-only data. Environmental and Ecological Statistics, 12(1), 27-44.
3. Austin, M. P. (2002). Spatial prediction of species distribution: An interface between ecological theory and statistical modelling. Ecological Modelling, 157(2-3), 101-118.
4. Berberoglu, S. (1994). A research on the impact of afforestation on the coastal dune ecosystem in Eastern Mediterranean region of Turkey (Master's thesis). Institute of Science, University of Cukurova, Adana, Turkey.
5. Berberoğlu, S., Şatır, O., & Atkinson, P. M. (2009). Mapping percentage tree cover from Envisat MERIS data using linear and nonlinear techniques. International Journal of Remote Sensing, 30(18), 4747-4766.