Day 2 Tue, May 07, 2024 2024
DOI: 10.4043/35104-ms
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A Spatiotemporal Machine Learning Framework for the Prediction of Metocean Conditions in the Gulf of Mexico

Edward Steele,
Jiaxin Chen,
Ian Ashton
et al.

Abstract: Machine learning techniques offer the potential to revolutionize the provision of metocean forecasts critical to the safe and successful operation of offshore infrastructure, leveraging the asset-level accuracy of point-based observations in conjunction with the benefits of the extended coverage (both temporally and spatially) of numerical modelling and satellite remote sensing data. Here, we adapt and apply a promising framework – originally proposed by the present authors for the prediction of wave condition… Show more

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