Probabilistic models for the prediction of a ship performance in dynamic ice

We introduce two probabilistic, data-driven models that predict a ship's speed and the situations where a ship is probable to get stuck in ice based on the joint effect of ice features such as the thickness and concentration of level ice, ice ridges, rafted ice, moreover ice compression is considered. To develop the models to datasets were utilized. First, the data from the Automatic Identification System about the performance of a selected ship was used. Second, a numerical ice model HELMI, developed in the Finnish Meteorological Institute, provided information about the ice field. The relations between the ice conditions and ship movements were established using Bayesian learning algorithms. The case study presented in this paper considers a single and unassisted trip of an ice-strengthened bulk carrier between two Finnish ports in the presence of challenging ice conditions, which varied in time and space. The obtained results show good prediction power of the models. This means, on average 80% for predicting the ship's speed within specified bins, and above 90% for predicting cases where a ship may get stuck in ice. We expect this new approach to facilitate the safe and effective route selection problem for ice-covered waters where the ship performance is reflected in the objective function.

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Montewka, Jakub, Goerlandt, Floris, Kujala, Pentti, Lensu, Mikko (2013). Dataset: Probabilistic models for the prediction of a ship performance in dynamic ice. https://doi.org/10.1594/PANGAEA.823112

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.823112
Author Montewka, Jakub
Given Name Jakub
Family Name Montewka
More Authors
Goerlandt, Floris
Kujala, Pentti
Lensu, Mikko
Source Creation 2013
Publication Year 2013
Subject Areas
Name: HumanDimensions

Name: Lithosphere

Related Identifiers
Title: Towards probabilistic models for the prediction of a ship performance in dynamic ice
Identifier: https://doi.org/10.1016/j.coldregions.2014.12.009
Type: DOI
Relation: IsSupplementTo
Year: 2015
Source: Cold Regions Science and Technology
Authors: Montewka Jakub , Goerlandt Floris , Kujala Pentti , Lensu Mikko .

Title: GeNIe (Graphical Network Interface) software package
Type: DOI
Relation: References
Year: 2013
Source: Outdated link: https: //dslpitt.org/genie/
Authors: Decision Systems Laboratory .