Gaussian Process Regression for extending wave in situ measurements: An experimental campaign

Leonardo Gambarelli, Edoardo Pasta, Giuseppe Giorgi, Francesco Ferri

Research output: Contribution to book/anthology/report/conference proceedingArticle in proceedingResearchpeer-review

Abstract

Wave energy is recognized as one of the most promising sources of clean and abundant energy. Nonetheless, up to today this technology is still not commercially viable, due to a number of reasons, like the harshness of the sea environment, the expenses needed for the deployment and maintenance of devices in openocean and the lack of information regarding wave parameters world wide. Indeed, a proper characterization of the resource in asite is of quintessential importance for assessing the productivity of the site and dimensioning the supporting system of a device. This work wants to address the problem of the lack of data by resorting to spatial prediction techniques, using data gathered through an experimental campaign conducted at the wave basinfacility available at the Ocean and Coastal Engineering Laboratory in Aalborg University. During this campaign two months of real data from a real in situ measuring device were replicated in the basin. In the middle of the basin, underwater, some concrete blocks were deployed in order to replicate a sudden shift in the bathymetry, which should act as a disturbance to the wave propagation and arise nonlinear phenomena. 19 wave gauges were present and recorded the wave elevation for the whole time. Thena scenario where only a part of the measuring devices were workingwas replicated by considering only the data from a subsample of wave gauges and inferring the parameters in the locations ofthe other devices from them, through a Gaussian Process Regression(GPR) algorithm. The proposed algorithm was able to interpolate the parameters at the other locations, at the expense of a relatively low error, indicating that this set up could be used to increase the spatial coverage of the wave measuring buoys deployed world wide or to provide an estimate of the parameters at a buoy that is not working at the time, like for maintenance operations.

Original languageEnglish
Title of host publicationProceedings of the 34th International Ocean and Polar Engineering Conference, 2024
Number of pages7
PublisherInternational Society of Offshore & Polar Engineers
Publication date2024
Pages1073-1079
ISBN (Print)978-1-880653-78-4
Publication statusPublished - 2024
Event34th International Ocean and Polar Engineering Conference, ISOPE 2024 - Rhodes, Greece
Duration: 16 Jun 202421 Jun 2024

Conference

Conference34th International Ocean and Polar Engineering Conference, ISOPE 2024
Country/TerritoryGreece
CityRhodes
Period16/06/202421/06/2024
SeriesProceedings of the International Offshore and Polar Engineering Conference
Volume1
ISSN1098-6189

Bibliographical note

Publisher Copyright:
© 2024 by the International Society of Offshore and Polar Engineers (ISOPE).

Keywords

  • Gaussian Process Regression
  • Insitu measurements
  • Resource assessment
  • Spatial gap-filling
  • Wave energy

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