4.7 Article

A Hybrid Approach to Motion Prediction for Ship Docking-Integration of a Neural Network Model Into the Ship Dynamic Model

Journal

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIM.2020.3018568

Keywords

Onboard support; ship motion prediction; supervised deep learning

Funding

  1. Knowledge-Building Project for Industry Digital Twins for Vessel Life Cycle Service [280703]
  2. Research-Based Innovation SFI Marine Operation in Virtual Environment, Norway [237929]
  3. Norwegian Research Council (NTNU AMOS), Norwegian University of Science and Technology [223254]

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This article proposes a tool for onboard support that offers position predictions based on an integration of a supervised machine learning (ML) model of the ship into the ship dynamic model, significantly improving the prediction accuracy during docking operations.
While automatic controllers are frequently used during transit operations and low-speed maneuvering of ships, ship operators typically perform docking maneuvers. This task is more or less challenging depending on factors, such as local environment disturbances, the number of nearby vessels, and the speed of the ship as it docks. This article proposes a tool for onboard support that offers position predictions based on an integration of a supervised machine learning (ML) model of the ship into the ship dynamic model. The ML model is applied as a compensator of the unmodeled behavior or inaccuracies from the dynamic model. The dynamic model increases the amount of predetermined knowledge about how the vessel is likely to move and, thus, reduces the black-box factor typically experienced in purely data-driven predictors. A prediction horizon of 30 s ahead of real time during docking operations is examined. History data from the 29-m coastal displacement ship Research Vessel (RV) Gunnerus are applied to validate the approach. Results show that the inclusion of the data-based ML model significantly improves the prediction accuracy.

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