LGCEAO-PHGEO-PHAug 22, 2023

Evaluation of Deep Neural Operator Models toward Ocean Forecasting

MIT
arXiv:2308.11814v14 citationsh-index: 51
Originality Synthesis-oriented
AI Analysis

This work addresses ocean forecasting for researchers and practitioners, but it is incremental as it applies existing methods to new data.

The study evaluated deep neural operator models for forecasting ocean dynamics, finding they can predict idealized periodic eddy shedding and show some skill in forecasting realistic ocean surface flows, though results are preliminary.

Data-driven, deep-learning modeling frameworks have been recently developed for forecasting time series data. Such machine learning models may be useful in multiple domains including the atmospheric and oceanic ones, and in general, the larger fluids community. The present work investigates the possible effectiveness of such deep neural operator models for reproducing and predicting classic fluid flows and simulations of realistic ocean dynamics. We first briefly evaluate the capabilities of such deep neural operator models when trained on a simulated two-dimensional fluid flow past a cylinder. We then investigate their application to forecasting ocean surface circulation in the Middle Atlantic Bight and Massachusetts Bay, learning from high-resolution data-assimilative simulations employed for real sea experiments. We confirm that trained deep neural operator models are capable of predicting idealized periodic eddy shedding. For realistic ocean surface flows and our preliminary study, they can predict several of the features and show some skill, providing potential for future research and applications.

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