The prediction capability of recurrent-type neural networks is investigated for realtime short-term prediction (nowcasting) of ship motions in high sea state. Specifically, the performance of recurrent neural networks, long-short term memory, and gated recurrent units models are assessed and compared using a data set coming from computational fluid dynamics simulations of a self-propelled destroyer-type vessel in stern-quartering sea state 7. Time seriesof incident wave, ship motions, rudder angle, as well as immersion probes, are used as variables for a nowcasting problem. The objective is to obtain about 20 s ahead prediction. Overall, the three methods provide promising and comparable results.

RECURRENT-TYPE NEURAL NETWORKS FOR REAL-TIME SHORT-TERM PREDICTION OF SHIP MOTIONS IN HIGH SEA STATE

A Serani;M Diez
2021

Abstract

The prediction capability of recurrent-type neural networks is investigated for realtime short-term prediction (nowcasting) of ship motions in high sea state. Specifically, the performance of recurrent neural networks, long-short term memory, and gated recurrent units models are assessed and compared using a data set coming from computational fluid dynamics simulations of a self-propelled destroyer-type vessel in stern-quartering sea state 7. Time seriesof incident wave, ship motions, rudder angle, as well as immersion probes, are used as variables for a nowcasting problem. The objective is to obtain about 20 s ahead prediction. Overall, the three methods provide promising and comparable results.
2021
Istituto di iNgegneria del Mare - INM (ex INSEAN)
Inglese
IX International Conference on Computational Methods in Marine Engineering
http://journals.ed.ac.uk/MARINE2021/article/view/6851/9048
2-4/6/2021
virtuale
Recurrent Neural Networks
Longshort Term Memory Networks
Gated Recurrent Units
Ship Motion Prediction
Nowcasting
Real-time short term prediction
Sito del convegno: https://congress.cimne.com/marine2021/frontal/default.asp#:~:text=The 9th Conference on Computational,pm and 4 pm GMT Il contributo è liberamente accessibile al seguente indirizzo: http://journals.ed.ac.uk/MARINE2021/article/view/6851
4
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D'Agostino, D; Serani, A; Stern, F; Diez, M
273
info:eu-repo/semantics/conferenceObject
04 Contributo in convegno::04.01 Contributo in Atti di convegno
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/448899
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