A probabilistic model estimating oil spill clean-up costs - a case study for the Gulf of Finland

Existing models estimating oil spill costs at sea are based on data from the past, and they usually lack a systematic approach. This make them passive, and limits their ability to forecast the effect of the changes in the oil combating fleet or location of a spill on the oil spill costs. In this paper we make an attempt towards the development of a probabilistic and systematic model estimating the costs of clean-up operations for the Gulf of Finland. For this purpose we utilize expert knowledge along with the available data and information from literature. Then, the obtained information is combined into a framework with the use of a Bayesian Belief Networks. Due to lack of data, we validate the model by comparing its results with existing models, with which we found good agreement. We anticipate that the presented model can contribute to the cost-effective oil-combating fleet optimization for the Gulf of Finland. It can also facilitate the accident consequences estimation in the framework of formal safety assessment (FSA).

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Cite this as

Montewka, Jakub, Weckström, Mia, Kujala, Pentti (2013). Dataset: A probabilistic model estimating oil spill clean-up costs - a case study for the Gulf of Finland. https://doi.org/10.1594/PANGAEA.816576

DOI retrieved: 2013

Additional Info

Field Value
Imported on November 29, 2024
Last update November 29, 2024
License CC-BY-NC-ND-3.0
Source https://doi.org/10.1594/PANGAEA.816576
Author Montewka, Jakub
Given Name Jakub
Family Name Montewka
More Authors
Weckström, Mia
Kujala, Pentti
Source Creation 2013
Publication Year 2013
Subject Areas
Name: Biosphere

Name: Ecology

Name: Oceans

Related Identifiers
Title: A probabilistic model estimating oil spill clean-up costs – A case study for the Gulf of Finland
Identifier: https://doi.org/10.1016/j.marpolbul.2013.09.031
Type: DOI
Relation: IsSupplementTo
Year: 2013
Source: Marine Pollution Bulletin
Authors: Montewka Jakub , Weckström Mia , Kujala Pentti .

Title: The attached model is developed using Bayesian Networks modeling environment called Hugin
Identifier: https://www.hugin.com
Type: DOI
Relation: References