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dc.contributor.authorHolm, Håvard Heitlo
dc.contributor.authorSætra, Martin Lilleeng
dc.contributor.authorvan Leeuwen, Peter Jan
dc.date.accessioned2021-01-30T15:47:32Z
dc.date.accessioned2021-03-08T11:07:27Z
dc.date.available2021-01-30T15:47:32Z
dc.date.available2021-03-08T11:07:27Z
dc.date.issued2020-03-04
dc.identifier.citationHolm, Sætra, van Leeuwen. Massively parallel implicit equal-weights particle filter for ocean drift trajectory forecasting. Journal of Computational Physics: X. 2020;6en
dc.identifier.issn2590-0552
dc.identifier.issn0021-9991
dc.identifier.urihttps://hdl.handle.net/10642/9914
dc.description.abstractForecasting of ocean drift trajectories are important for many applications, including search and rescue operations, oil spill cleanup and iceberg risk mitigation. In an operational setting, forecasts of drift trajectories are produced based on computationally demanding forecasts of three-dimensional ocean currents. Herein, we investigate a complementary approach for shorter time scales by using the recently proposed two-stage implicit equal-weights particle filter applied to a simplified ocean model. To achieve this, we present a new algorithmic design for a data-assimilation system in which all components – including the model, model errors, and particle filter – take advantage of massively parallel compute architectures, such as graphical processing units. Faster computations can enable in-situ and ad-hoc model runs for emergency management, and larger ensembles for better uncertainty quantification. Using a challenging test case with near-realistic chaotic instabilities, we run data-assimilation experiments based on synthetic observations from drifting and moored buoys, and analyse the trajectory forecasts for the drifters. Our results show that even sparse drifter observations are sufficient to significantly improve short-term drift forecasts up to twelve hours. With equidistant moored buoys observing only 0.1% of the state space, the ensemble gives an accurate description of the true state after data assimilation followed by a high-quality probabilistic forecast.en
dc.description.sponsorshipHHH and MLS thanks the Research Council of Norway for funding the GPU Ocean project, with grant number 250935. PJvL thanks the European Research Council for funding the CUNDA grant 694509 under the European Union's Horizon 2020 research and innovation programme. Some of the computations were performed on resources provided by UNINETT Sigma2 – the National Infrastructure for High Performance Computing and Data Storage in Norway under project number nn9550k.en
dc.language.isoenen
dc.publisherElsevieren
dc.relation.ispartofseriesJournal of Computational Physics: X;Volume 6, March 2020, 100053
dc.rightsCreative Commons Attribution 4.0 International (CC BY 4.0) licenseen
dc.rights.urihttps://creativecommons.org/licenses/by/4.0/
dc.subjectData assimilationen
dc.subjectParticle filtersen
dc.subjectGraphical processing unit computingen
dc.subjectShallow water simulationsen
dc.subjectFinite volume methodsen
dc.subjectDrift trajectory forecastingen
dc.titleMassively parallel implicit equal-weights particle filter for ocean drift trajectory forecastingen
dc.typeJournal articleen
dc.typePeer revieweden
dc.date.updated2021-01-30T15:47:32Z
dc.description.versionpublishedVersionen
dc.identifier.doihttps://doi.org/10.1016/j.jcpx.2020.100053
dc.identifier.cristin1800202
dc.source.journalJournal of Computational Physics: X
dc.relation.projectIDNotur/NorStore: NN9550K
dc.relation.projectIDNorges forskningsråd: 250935 (GPU Ocean)
dc.relation.projectIDNorges forskningsråd: 250935


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