Back to Search Start Over

Comparing machine learning-based sea state estimates by the wave buoy analogy

Authors :
Nielsen, Ulrik D.
Iwase, Kazuma
Mounet, Raphaël E.G.
Nielsen, Ulrik D.
Iwase, Kazuma
Mounet, Raphaël E.G.
Source :
Nielsen , U D , Iwase , K & Mounet , R E G 2024 , ' Comparing machine learning-based sea state estimates by the wave buoy analogy ' , Applied Ocean Research , vol. 149 , 104042 .
Publication Year :
2024

Abstract

This paper presents a comparison of three different machine learning frameworks applied in the wave buoy analogy used for estimating the sea state from measured ship responses. The three frameworks output and characterise the sea state in different ways: Model 1 outputs integral parameters, Model 2 outputs a point wave spectrum and the wave direction, Model 3 outputs the full directional wave spectrum. The assessment of the models is based on simulated motion measurements, i.e. synthetic data. In the particular investigations made, the performance of Model 2, relying on a novel framework, is generally superior. However, the central take-away from the study, is the importance of considering thorough and well-prepared training data encompassing many, not to say all, possible parameter combinations and shapes in the studied wave spectra forming the training data; any machine learning model is no better than the data upon which it is trained.

Details

Database :
OAIster
Journal :
Nielsen , U D , Iwase , K & Mounet , R E G 2024 , ' Comparing machine learning-based sea state estimates by the wave buoy analogy ' , Applied Ocean Research , vol. 149 , 104042 .
Notes :
application/pdf, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1439390470
Document Type :
Electronic Resource