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metadata.dc.type: Artigo de Periódico
Título : The construction of causal networks to estimate coral bleaching intensity
Otros títulos : Environmental Modelling & Software
Autor : Krug, Lilian Anne
Gherardi, Douglas Francisco Marcolino
Stech, José Luís
Leão, Zelinda Margarida de Andrade Nery
Kikuchi, Ruy Kenji Papa de
Hruschka Junior, Estevam Rafael
Suggett, David John
metadata.dc.creator: Krug, Lilian Anne
Gherardi, Douglas Francisco Marcolino
Stech, José Luís
Leão, Zelinda Margarida de Andrade Nery
Kikuchi, Ruy Kenji Papa de
Hruschka Junior, Estevam Rafael
Suggett, David John
Resumen : Current metrics for predicting bleaching episodes, e.g. NOAA's Coral Reef Watch Program, do not seem to apply well to Brazil's marginal reefs located in Bahia state and alternative predictive approaches must be sought for effective long term management. Bleaching occurrences at Abrolhos have been observed since the 1990s but with a much lower frequency/extent than for other reef systems worldwide. We constructed a Bayesian Belief Network (BN) to back-predict the intensity of bleaching events and learn how local and regional scale forcing factors interact to enhance or alleviate coral bleaching specific to Abrolhos. Bleaching intensity data were collected for several reef sites across Bahia state coast (∼12°–20°S; 37°–40°W) during the austral summer 1994–2005 and compared to environmental data: sea surface temperature (SST), diffuse light attenuation coefficient at 490 nm (K490), rain precipitation, wind velocities, and El Niño Southern Oscillation (ENSO) proxies. Conditional independence tests were calculated to produce four specialized BNs, each with specific factors that likely regulate bleaching intensity. All specialized BNs identified that a five-day accumulated SST proxy (SSTAc5d) was the exclusive parent node for coral bleaching producing a total predictive rate of 88% based on SSTAc5d state. When SSTAc5d was simulated as unknown, the Thermal-Eolic Resultant BN kept the total predictive rate of 88%. Our approach has produced initial means to predict beaching intensity at Abrolhos. However, the robustness of the model required for management purposes must be further (and regularly) operationally tested with new in situ and remote sensing data.
Palabras clave : Bayesian network
Coral reef
Coral bleaching
Remote sensing
Environmental variability
South Atlantic coral reefs
metadata.dc.publisher.country: Brasil
metadata.dc.rights: Acesso Aberto
URI : http://repositorio.ufba.br/ri/handle/ri/18081
Fecha de publicación : 2013
Aparece en las colecciones: Artigo Publicado em Periódico (IGEO)

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