Data-Driven Short-Term Daily Operational Sea Ice Regional Forecasting (2210.08877v1)
Abstract: Global warming made the Arctic available for marine operations and created demand for reliable operational sea ice forecasts to make them safe. While ocean-ice numerical models are highly computationally intensive, relatively lightweight ML-based methods may be more efficient in this task. Many works have exploited different deep learning models alongside classical approaches for predicting sea ice concentration in the Arctic. However, only a few focus on daily operational forecasts and consider the real-time availability of data they need for operation. In this work, we aim to close this gap and investigate the performance of the U-Net model trained in two regimes for predicting sea ice for up to the next 10 days. We show that this deep learning model can outperform simple baselines by a significant margin and improve its quality by using additional weather data and training on multiple regions, ensuring its generalization abilities. As a practical outcome, we build a fast and flexible tool that produces operational sea ice forecasts in the Barents Sea, the Labrador Sea, and the Laptev Sea regions.
- Timofey Grigoryev (5 papers)
- Polina Verezemskaya (2 papers)
- Mikhail Krinitskiy (2 papers)
- Nikita Anikin (1 paper)
- Alexander Gavrikov (4 papers)
- Ilya Trofimov (16 papers)
- Nikita Balabin (5 papers)
- Aleksei Shpilman (23 papers)
- Andrei Eremchenko (1 paper)
- Sergey Gulev (5 papers)
- Evgeny Burnaev (189 papers)
- Vladimir Vanovskiy (4 papers)