Using General linear model, Bayesian networks and Naive Bayes classifier for prediction of Karenia selliformis occurrences and blooms.

The prediction of the dinoflagellate red tide forming Karenia selliformis is a relevant task to aid optimized management decisions in marine coastal water. The objective of the present study is to compare different modeling approaches for prediction of Karenia selliformis occurrences and blooms. A set of physical parameters (salinity, temperature and tide amplitude), meteorological constraints (evaporation, air temperature, insolation, rainfall, atmospheric pressure and humidity), sampling months and sampling sites are used. The model prediction included General Linear Model (GLM), Bayesian Network (BN) and the simplest BN type which is, Naive Bayes classifier (NB). The results showed that three models incriminated high salinity in Karenia selliformis blooms and the sampling sites, mainly Boughrara lagoon, in the occurrences. The BN performed better than linear models (NB and GLM) for both Karenia selliformis occurrences and blooms prediction. This later is related to the facts that BN considered the inter-independency between predictive variables and that the relationships between the variables and the outcome are often non-linear such us; the transition to bloom situations appeared to be triggered by a salinity threshold. This study is useful in the management of this ecosystem so as to use the best disposal options in the early prediction of the toxic blooms.

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Bibliographic Details
Main Authors: Feki-Sahnoun, Wafa, Njah, Hasna, Hamza, Asma, Barraj, Nouha, Mahfoudi, Mabrouka, Rebai, Ahmed, Belhassen, Malika
Format: Journal Contribution biblioteca
Language:English
Published: 2018
Subjects:Karenia selliformis., Naive Bayes classifier., General linear model., Bayesian Network., Hydro-meteorological parameters.,
Online Access:http://hdl.handle.net/1834/12526
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