Efficient deep learning surrogate method for predicting the transport of particle patches in coastal environments

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Abstract

Several coastal regions require operational forecast systems for predicting the transport of pollutants released during marine accidents. In response to this need, surrogate models offer cost-effective solutions. Here, we propose a surrogate modeling method for predicting the residual transport of particle patches in coastal environments. These patches are collections of passive particles equivalent to Eulerian tracers but can be extended to other particulates. By only using relevant forcing, we train a deep learning model (DLM) to predict the displacement (advection) and spread (dispersion) of particle patches after one tidal period. These quantities are then coupled into a simplified Lagrangian model to obtain predictions for larger times. Predictions with our methodology, successfully applied in the Dutch Wadden Sea, are fast. The trained DLM provides predictions in a few seconds, and our simplified Lagrangian model is one to two orders of magnitude faster than a traditional Lagrangian model fed with currents.
Original languageEnglish
Article number117251
Number of pages17
JournalMarine Pollution Bulletin
Volume209
DOIs
Publication statusPublished - Dec 2024

Funding

This study was financially supported by the NWO / ENW project: \u00E2\u20AC\u02DCThe Dutch Wadden Sea as an event-driven system: long-term consequences for exchange (LOCO-EX)\u2019 ( OCENW.KLEIN.138 ). The numerical simulations with GETM were done thanks to the North-German Supercomputing Alliance (HLRN). YL and SG were supported by the Netherlands eScience Center under grant number SSIML-2021-007 . We express our gratitude to Alessandro Corbetta for useful discussion on the implementation of the simplified Lagrangian particle tracking model and to Meiert Willem Grootes for the useful discussions on the implementation on the ConvLSTM. This study was financially supported by the NWO/ENW project: 'The Dutch Wadden Sea as an event-driven system: long-term consequences for exchange (LOCO-EX)\u2019 (OCENW.KLEIN.138). The numerical simulations with GETM were done thanks to the North-German Supercomputing Alliance (HLRN). YL and SG were supported by the Netherlands eScience Center under grant number SSIML-2021-007. We express our gratitude to Alessandro Corbetta for useful discussion on the implementation of the simplified Lagrangian particle tracking model and to Meiert Willem Grootes for the useful discussions on the implementation on the ConvLSTM.

UN SDGs

This output contributes to the following UN Sustainable Development Goals (SDGs)

  1. SDG 14 - Life Below Water
    SDG 14 Life Below Water

Keywords

  • Coastal systems
  • Deep learning surrogate modeling
  • Dutch Wadden Sea
  • Lagrangian advection and dispersion
  • Lagrangian pollution modeling

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