Using a genetic algorithm to improve oil spill prediction

Mar Pollut Bull. 2018 Oct:135:386-396. doi: 10.1016/j.marpolbul.2018.07.026. Epub 2018 Jul 20.

Abstract

The performance of oil spill models is strongly influenced by multiple parameters. In this study, we explored the ability of a genetic algorithm (GA) to determine optimal parameters without the need for time-consuming manual attempts. An evaluation function integrating the percentage of coincidence between the predicted polluted area and the observed spill area was proposed for measuring the performance of a Lagrangian oil particle model. To maximise the objective function, the oil spill was run numerous times with continuously optimised parameters. After many generations, the GA effectively reduced discrepancies between model results and observations of a real oil spill. Subsequent validation indicated that the oil spill model predicted oil slick patterns with reasonable accuracy when equipped with optimal parameters. Furthermore, multiple objective optimisation for observations at different times contributed to better model performance.

Keywords: Genetic algorithm; Model evaluation; Oil spill; Parameter optimisation.

MeSH terms

  • Accidents
  • Algorithms*
  • China
  • Models, Theoretical
  • Petroleum Pollution*
  • Ships
  • Water Pollution, Chemical*