Developing correction factors for weather's influence on the energy efficiency indicators of container ships using model-based machine learning

Amandine Godet, Lukas Jonathan Michael Wallner, George Panagakos, Michael Bruhn Barfod*

*Corresponding author for this work

Research output: Contribution to journalJournal articleResearchpeer-review

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Abstract

The International Maritime Organization employs technical and operational indicators to assess ship energy efficiency. Weather conditions significantly impact ship fuel consumption during voyages, necessitating the consideration of this influence in energy efficiency calculations. This study aims to design models for estimating the impact of weather components on fuel consumption and develop correction factors to cope with the weather effect on the fuel consumption of container ships for different sea states. Using model-based machine learning, the study analyzes noon reports and hindcasted weather data from two sister container ships. It quantifies weather-induced fuel consumption across various sea states, ranging from 2% to 20%, with an average of 7%–13% depending on the model used. Correction factors specific to each sea state are derived, and different approaches for their integration into energy efficiency indicators are proposed. This study advocates tailored weather correction factors for energy efficiency metrics tied to specific sea states, emphasizing the need for standardized weather impact assessments. Prior to any formal policy application, future work is needed to address the limitations of the present study and extend this approach to various ship types and sizes and different geographical regions.

Original languageEnglish
Article number107390
JournalOcean and Coastal Management
Volume258
ISSN0964-5691
DOIs
Publication statusPublished - 2024

Keywords

  • EEDI
  • Energy efficiency indicators
  • Fuel consumption
  • Maritime policy
  • Weather effect

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