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Jonas Wallin. Photo.

Jonas Wallin

Senior lecturer, Director of third cycle studies, Department of Statistics

Jonas Wallin. Photo.

Statistical models for the speed prediction of a container ship

Author

  • Wengang Mao
  • Igor Rychlik
  • Jonas Wallin
  • Gaute Sorhaug

Summary, in English

Accurate prediction of ship speed for given engine power and encountering sea environments is one of the key factors for ship route planning to ensure expected time of arrivals (ETA). Traditional methods need first to compute a ship's total resistance based on theoretical calculations, which are often associated with large uncertainties. In this paper, two statistical approaches are investigated to establish models for a ship's speed prediction. The measurement data of a containership during one year's sailing are used for the demonstration and validation of the presented statistical methods. The pros and cons of the methods are compared in terms of capability, robustness, and accuracy of the prediction. By means of the measured engine Revolutions Per Minute (RPM) and extracted sea environments along the ship's sailing routes, the statistical methods are shown to be able to give reliable speed predictions. Further investigation is needed to test the capability of the statistical methods for the speed prediction using engine power instead of RPM.

Publishing year

2016-09-13

Language

English

Pages

152-162

Publication/Series

Ocean Engineering

Volume

126

Document type

Journal article

Publisher

Elsevier

Topic

  • Probability Theory and Statistics
  • Marine Engineering

Keywords

  • Performance measurement systems
  • Ship speed prediction
  • Engine RPM
  • Regression
  • Autoregressive model
  • Mixed effects model

Status

Published

ISBN/ISSN/Other

  • ISSN: 1873-5258