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http://dx.doi.org/10.5394/KINPR.2018.42.6.395

Prediction of Ship Roll Motion using Machine Learning-based Surrogate Model  

Kim, Young-Rong (Graduate School of Korea Maritime and Ocean University)
Park, Jun-Bum (Division of Navigation Science, Korea Maritime and Ocean University)
Moon, Serng-Bae (Division of Navigation Science, Korea Maritime and Ocean University)
Abstract
Seakeeping safety module in Korean e-Navigation system is one of the ship remote monitoring services that is employed to ensure the safety of ships by monitoring the ship's real time performance and providing a warning in advance when the abnormal conditions are encountered in seakeeping performance. In general, seakeeping performance has been evaluated by simulating ship motion analysis under specific conditions for its design. However, due to restriction of computation time, it is not realistic to perform simulations to evaluate seakeeping performance under real-time operation conditions. This study aims to introduce a reasonable and faster method to predict a ship's roll motion which is one of the factors used to evaluate a ship's seakeeping performance by using a machine learning-based surrogate model. Through the application of various learning techniques and sampling conditions on training data, it was observed that the difference of roll motion between a given surrogate model and motion analysis was within 1%. Therefore, it can be concluded that this method can be useful to evaluate the seakeeping performance of a ship in real-time operation.
Keywords
Seakeeping Performance; Roll Motion P rediction; Machine Learning; Surrogate Model; Korean e-Navigation;
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