2023
DOI: 10.17818/nm/2023/2.5
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Hindcast of Significant Wave Heights in Sheltered Basins Using Machine Learning and the Copernicus Database

Abstract: Long-term time series of wave parameters play a critical role in coastal structure design and maritime activities. At sites with limited buoy measurements, methods are used to extend the available time series data. To date, wave hindcasting research using machine learning methods has mainly focused on filling in missing buoy measurements or finding a mapping function between two nearshore buoy locations. This work aims to implement machine learning methods for hindcasting wave parameters using only publicly av… Show more

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