Abstract

Effective ship motion prediction helps to avoid ship navigation hazards in time. However, there is insufficient attention to potentially valuable information in the multi-factor ship-related data space and the time-varying characteristics of ship motion. In this paper, a time-varying ensemble model based on feature selection and clustering methods is proposed to improve the performance of real-time ship motion prediction. The ensemble model consists of three modules that progressively improve the validity of the model. In Module I, the non-dominated sorting genetic algorithm-II (NSGA-II) algorithm is adopted for feature selection of the original multi-factor data to filter out the feature factors that are useful for ship motion prediction. In Module II, the self-organizing map (SOM) algorithm is applied to cluster the multi-factor data after feature selection to reorganize samples with similar attributes into a limited number of clusters. Then, an ensemble learning model is constructed for each cluster using multiple Elman neural networks and Adaboost techniques. In Module III, a time-varying prediction framework is proposed for real-time prediction of ship motion by combining the ensemble model corresponding to each cluster. An empirical study was conducted using three multifactorial datasets collected from a ship in the South China Sea in December 2020. The results show that the proposed model can be a competitive technique for solving complex multi-factor ship motion predictions and has the potential to be applied to real-time ship motion warning systems.

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