4.7 Article

An analysis of severity of oil spill caused by vessel accidents

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PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.trd.2020.102662

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Vessel accident; Severity of oil spill; Bayesian network; Decision tree

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Oil spill, especially from vessel accidents, is a significant issue for marine and coastal environments. Accurate prediction of oil spill severity is crucial, with accident type and vessel type identified as key contributing factors. This study provides insights to assist authorities in predicting and addressing oil spill severity, enhancing strategies for vessel accidents leading to oil spills.
Marine pollution, especially oil spill-based, affects both marine and coastal environment is one of the most important issues for the maritime industry. The accurate prediction of the severity of oil spill is of great importance in order to determine the accurate response methods. In this perspective, this study aims to predict the severity of oil spill in possible vessel accidents by examining data based on vessel accidents that cause marine pollution. The United States Coast Guard (USCG) database covering 2002--2015 was utilized and a total of 1468 instances of vessel involved accidents leading oil spill were analysed using Decision Tree (DT) and data-driven Bayesian Networks (BN) called Tree Augmented Naive Bayes (TAN). As a result, the most important contributing factors affecting the severity of oil spill were revealed as type of accident and type of vessel. This study would be a guide that will assist authorities and policy makers in predicting the severity of oil spill, and contribute to the development of important strategies and countermeasures for vessel accidents leading oil spills.

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