Risk assessment of marine oil spills using dynamic Bayesian network analyses

Environ Pollut. 2023 Jan 15:317:120716. doi: 10.1016/j.envpol.2022.120716. Epub 2022 Nov 22.

Abstract

Oil spills are serious threats to the marine ecosystem. Especially when an oil spill is faced with extreme weather, the consequences might be more severe. Until now, no such researches focus on the risk of these extreme scenarios. This paper proposes a novel dynamic assessment method to quantify the risk of oil spills in extreme winds based on dynamic Bayesian networks (DBNs). The physical models of advection, spreading, evaporation, and dispersion are transformed into DBNs, and the vulnerability model is established according to coastline types and socio-economic resources. By integrating all the sub-models, the overall DBN to quantify the dynamic risk of oil spills occurring in extreme winds is obtained. The proposed method is demonstrated by the Laizhou Bay. The developed model is validated by a three-axiom-based approach. Temporal and spatial dynamics of risk caused by oil spills in potential locations could be calculated. Based on the developed DBN, the risk of the Laizhou Bay coast caused by oil spills in annual extreme wind speeds corresponding to different mean recurrence intervals is studied. In addition, the effects of the occurrence time of annual extreme winds are also researched.

Keywords: Annual extreme wind; Dynamic Bayesian network; Oil spill; Quantitative risk assessment.

MeSH terms

  • Bayes Theorem
  • Ecosystem
  • Petroleum Pollution* / analysis
  • Risk Assessment / methods
  • Wind