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A semi-supervised machine learning model to forecast movements of moored vessels

Abstract: The good performance of the port activities in terminals is mainly conditioned by the dynamic response of the moored ship system at a berth. An adequate definition of the highly multivariate processes involved in the response of a moored ship at a berth is crucial for an appropriate characterization of port operability. The availability of an efficient forecast system of the movements of moored ships is essential for the planning, performance, and safety of the development of port operations. In this paper, an inference model to predict moored ship motions, based on a semisupervised Machine Learning methodology, is presented. A comparison with different supervised and unsupervised Machine Learning techniques, as well as with existing Deep Learning-based models for predicting moored ship motions, has been performed. The highest performance of the semi-supervised Machine Learning-based model has been obtained. Additionally, the influence of infragravity wave parameters introduced as predictor variables in the model has been analyzed and compared with the typical ocean waves, wind, and sea level as predictor variables. The prediction model has been developed and validated with an available dataset of measured data from field campaigns in the Outer Port of Punta Langosteira (A Coruña, Spain)

Otras publicaciones de la misma revista o congreso con autores/as de la Universidad de Cantabria

 Fuente: Journal of Marine Science and Engineering, 2022, 10(8), 1125

Editorial: MDPI

 Fecha de publicación: 16/08/2022

Nº de páginas: 21

Tipo de publicación: Artículo de Revista

 DOI: 10.3390/jmse10081125

ISSN: 2077-1312

Url de la publicación: https://doi.org/10.3390/jmse10081125

Autoría

EVA ROMANO MORENO

MOLINA, RAFAEL

GARCÍA VALDECASAS, JAVIER