Machine Learning and Case-Based Reasoning for Real-Time Onboard Prediction of the Survivability of Ships

Author:

Louvros Panagiotis1ORCID,Stefanidis Fotios1ORCID,Boulougouris Evangelos1ORCID,Komianos Alexandros1,Vassalos Dracos1

Affiliation:

1. Maritime Safety Research Centre, University of Strathclyde, Glasgow G4 0LZ, UK

Abstract

The subject of damaged stability has greatly profited from the development of new tools and techniques in recent history. Specifically, the increased computational power and the probabilistic approach have transformed the subject, increasing accuracy and fidelity, hence allowing for a universal application and the inclusion of the most probable scenarios. Currently, all ships are evaluated for their stability and are expected to survive the dangers they will most likely face. However, further advancements in simulations have made it possible to further increase the fidelity and accuracy of simulated casualties. Multiple time domain and, to a lesser extent, Computational Fluid dynamics (CFD) solutions have been suggested as the next “evolutionary” step for damage stability. However, while those techniques are demonstrably more accurate, the computational power to utilize them for the task of probabilistic evaluation is not there yet. In this paper, the authors present a novel approach that aims to serve as a stopgap measure for introducing the time domain simulations in the existing framework. Specifically, the methodology presented serves the purpose of a fast decision support tool which is able to provide information regarding the ongoing casualty utilizing prior knowledge gained from simulations. This work was needed and developed for the purposes of the EU-funded project SafePASS.

Funder

European Union’s Horizon 2020 Research and innovation programme

Publisher

MDPI AG

Subject

Ocean Engineering,Water Science and Technology,Civil and Structural Engineering

Reference39 articles.

1. An Introduction to Case-Based Reasoning;Kolodner;Artif. Intell. Rev.,1992

2. Case-Based Reasoning: Foundational Issues, Methodological Variations, and System Approaches;Agnar;AI Commun.,1994

3. (2022, December 10). Norwegian Safety Investigation Authority Part Two Report on the Collision between the Frigate ‘Helge Ingstad’ and the Oil Tanker Sola Ts Outside the Sture Terminal in the Hjeltefjord in Hordaland County on 8 November 2018, Available online: https://mtip.gov.mt/en/Documents/MSIU-by-other-countries/2021_05.pdf.

4. Papanikolaou, A., Spanos, D., Boulougouris, E., Eliopoulou, E., and Alissafaki, A. (2003, January 15–19). Investigation into the Sinking of the Ro-Ro Passenger Ferry Express Samina. Proceedings of the 8th International Conference on the Stability of Ships and Ocean Vehicles, Madrid, Spain.

5. Decision Support for Ship Flooding Crisis Management;Jasionowski;Ocean Eng.,2011

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